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  <front>
    <journal-meta><journal-id journal-id-type="publisher">MR</journal-id><journal-title-group>
    <journal-title>Magnetic Resonance</journal-title>
    <abbrev-journal-title abbrev-type="publisher">MR</abbrev-journal-title><abbrev-journal-title abbrev-type="nlm-ta">Magn. Reson.</abbrev-journal-title>
  </journal-title-group><issn pub-type="epub">2699-0016</issn><publisher>
    <publisher-name>Copernicus Publications</publisher-name>
    <publisher-loc>Göttingen, Germany</publisher-loc>
  </publisher></journal-meta>
    <article-meta>
      <article-id pub-id-type="doi">10.5194/mr-7-39-2026</article-id><title-group><article-title>An open-access WebApp for inverse Laplace transform analysis of time-domain nuclear magnetic  resonance signals</article-title><alt-title>An open-access WebApp for inverse Laplace transform analysis of TD-NMR signals</alt-title>
      </title-group>
      <contrib-group>
        <contrib contrib-type="author" corresp="yes" rid="aff1">
          <name><surname>Moraes</surname><given-names>Tiago B.</given-names></name>
          <email>tiago.moraes@usp.br</email>
        <ext-link>https://orcid.org/0000-0002-4941-6264</ext-link></contrib>
        <contrib contrib-type="author" corresp="no" rid="aff2">
          <name><surname>Von Atzingen</surname><given-names>Gustavo V.</given-names></name>
          
        <ext-link>https://orcid.org/0000-0002-3249-6173</ext-link></contrib>
        <contrib contrib-type="author" corresp="no" rid="aff1 aff2">
          <name><surname>Mazzero</surname><given-names>Larissa P.</given-names></name>
          
        <ext-link>https://orcid.org/0009-0000-3280-4001</ext-link></contrib>
        <contrib contrib-type="author" corresp="no" rid="aff1 aff2">
          <name><surname>Mendes</surname><given-names>William S.</given-names></name>
          
        </contrib>
        <contrib contrib-type="author" corresp="no" rid="aff1">
          <name><surname>Zacharias</surname><given-names>Marina B.</given-names></name>
          
        <ext-link>https://orcid.org/0000-0002-5201-2981</ext-link></contrib>
        <contrib contrib-type="author" corresp="no" rid="aff1 aff2">
          <name><surname>Cardinali</surname><given-names>Marcelo C. B.</given-names></name>
          
        <ext-link>https://orcid.org/0000-0002-2083-2889</ext-link></contrib>
        <aff id="aff1"><label>1</label><institution>Universidade de São Paulo/ESALQ, Depto. Engenharia de Biossistemas, Av. Páduas Dias, 11, 13418-900, Piracicaba, SP, Brazil</institution>
        </aff>
        <aff id="aff2"><label>2</label><institution>Instituto Federal de Educação, Ciência e Tecnologia de São Paulo, Câmpus Piracicaba, Rua Diácono Jair de Oliveira, 1005, 13414-155, Piracicaba, SP, Brazil</institution>
        </aff>
      </contrib-group>
      <author-notes><corresp id="corr1">Tiago B. Moraes (tiago.moraes@usp.br)</corresp></author-notes><pub-date><day>23</day><month>April</month><year>2026</year></pub-date>
      
      <volume>7</volume>
      <issue>1</issue>
      <fpage>39</fpage><lpage>51</lpage>
      <history>
        <date date-type="received"><day>4</day><month>February</month><year>2026</year></date>
           <date date-type="rev-request"><day>20</day><month>February</month><year>2026</year></date>
           <date date-type="rev-recd"><day>1</day><month>April</month><year>2026</year></date>
           <date date-type="accepted"><day>6</day><month>April</month><year>2026</year></date>
      </history>
      <permissions>
        <copyright-statement>Copyright: © 2026 Tiago B. Moraes et al.</copyright-statement>
        <copyright-year>2026</copyright-year>
      <license license-type="open-access"><license-p>This work is licensed under the Creative Commons Attribution 4.0 International License. To view a copy of this licence, visit <ext-link ext-link-type="uri" xlink:href="https://creativecommons.org/licenses/by/4.0/">https://creativecommons.org/licenses/by/4.0/</ext-link></license-p></license></permissions><self-uri xlink:href="https://mr.copernicus.org/articles/7/39/2026/mr-7-39-2026.html">This article is available from https://mr.copernicus.org/articles/7/39/2026/mr-7-39-2026.html</self-uri><self-uri xlink:href="https://mr.copernicus.org/articles/7/39/2026/mr-7-39-2026.pdf">The full text article is available as a PDF file from https://mr.copernicus.org/articles/7/39/2026/mr-7-39-2026.pdf</self-uri>
      <abstract><title>Abstract</title>

      <p id="d2e136">Over recent years, compact and low-field time-domain nuclear magnetic resonance (TD-NMR) instruments have become increasingly available, expanding their use in the characterization of biomaterials across food, plant, and agro-industrial research. In this context, the inverse Laplace transform (ILT) has emerged as a powerful mathematical approach for extracting relaxation time distributions from TD-NMR signals. However, despite its widespread use, ILT analysis is often restricted to proprietary software or requires advanced expertise in numerical methods, limiting its accessibility to non-specialist users. In this work, we present an open-access WebApp for performing ILT analysis of TD-NMR signals in a transparent and user-friendly manner. The implemented algorithm is based on non-negative least squares combined with Tikhonov regularization and singular value decomposition, allowing robust inversion of ill-posed relaxation data. The platform supports the main TD-NMR experiments used in practice, including Carr–Purcell–Meiboom–Gill (CPMG), inversion recovery, and saturation recovery pulse sequences, and is compatible with data from instruments of any manufacturer. In addition to describing the mathematical formulation and implementation of the algorithm, a concise methodological discussion of ILT in the context of TD-NMR is provided. The performance of the WebApp is evaluated using both simulated datasets and representative experimental signals, demonstrating that the obtained relaxation time distributions are consistent with those produced by established ILT approaches. By lowering the barrier to advanced signal processing, the proposed WebApp represents a useful open scientific tool for research and teaching in magnetic resonance applications.</p>
  </abstract>
    
<funding-group>
<award-group id="gs1">
<funding-source>Conselho Nacional de Desenvolvimento Científico e Tecnológico</funding-source>
<award-id>306611/2022-8</award-id>
</award-group>
<award-group id="gs2">
<funding-source>Fundação de Amparo à Pesquisa do Estado de São Paulo</funding-source>
<award-id>2025/09284-9</award-id>
</award-group>
</funding-group>
</article-meta>
  </front>
<body>
      

<sec id="Ch1.S1" sec-type="intro">
  <label>1</label><title>Introduction</title>
      <p id="d2e148">The two best-known nuclear magnetic resonance (NMR) techniques in academia and industry are magnetic resonance imaging (MRI) and high-resolution NMR (HR-NMR). The former is widely applied in radiology for non-invasive medical diagnostics, whereas the latter is a well-established analytical technique used in chemical analysis laboratories for the precise characterization of molecular structures, playing a fundamental role in the pharmaceutical industry <xref ref-type="bibr" rid="bib1.bibx24 bib1.bibx6" id="paren.1"/>.</p>
      <p id="d2e154">Time-domain NMR (TD-NMR), also referred to as low-field NMR (LF-NMR) or low-resolution NMR (LR-NMR) <xref ref-type="bibr" rid="bib1.bibx29 bib1.bibx47" id="paren.2"/>, is based on the same physical principles as MRI and HR-NMR but employs simpler instrumentation based on permanent magnets, without the need for large superconducting systems or cryogenic liquids. As a result, TD-NMR sensors and spectrometers have reduced size and cost, enabling the development of portable and benchtop instruments. These characteristics make TD-NMR a versatile technique for industrial and applied research, where it has increasingly been employed as a powerful analytical sensor <xref ref-type="bibr" rid="bib1.bibx43 bib1.bibx40 bib1.bibx12 bib1.bibx11 bib1.bibx27 bib1.bibx2" id="paren.3"/>. Recent advances in electronics and permanent magnet technology have further contributed to the reduction of production and maintenance costs, fostering the emergence of several companies dedicated to compact TD-NMR instrumentation, such as Bruker, Magritek, Oxford, Nanalysis, SpinLock, FIT, and Niumag <xref ref-type="bibr" rid="bib1.bibx9 bib1.bibx26 bib1.bibx37 bib1.bibx35 bib1.bibx41 bib1.bibx19 bib1.bibx36" id="paren.4"/>.</p>
      <p id="d2e166">For materials of biological origin, such as plants, foods, oils, seeds, and other agro-industrial products, magnetic resonance offers a non-destructive and nucleus-selective analytical approach, enabling the development of highly specific sensing methods. Among the available nuclei, <inline-formula><mml:math id="M1" display="inline"><mml:mrow class="chem"><mml:msup><mml:mi/><mml:mn mathvariant="normal">1</mml:mn></mml:msup><mml:mi mathvariant="normal">H</mml:mi></mml:mrow></mml:math></inline-formula> detection is the most commonly employed due to its high sensitivity, although the use of other nuclei has steadily increased in low-field NMR applications as instrumentation has continued to improve <xref ref-type="bibr" rid="bib1.bibx5" id="paren.5"/>.</p>
      <p id="d2e184">A wide variety of NMR methods can be implemented by applying different radio-frequency (rf) pulse sequences, resulting in distinct signal responses that encode diverse physicochemical information <xref ref-type="bibr" rid="bib1.bibx46" id="paren.6"/>. The analysis of these signals is typically performed using mathematical approaches available in spectrometer software, including the Fourier transform (FT); exponential fitting; the inverse Laplace transform (ILT); and, more recently, machine learning techniques <xref ref-type="bibr" rid="bib1.bibx18" id="paren.7"/>. Despite these developments, advanced signal-processing algorithms – particularly ILT – are often restricted to proprietary software or require specialized expertise, motivating many users to seek alternative implementations in environments such as C++, Python, MATLAB, or OriginLab <xref ref-type="bibr" rid="bib1.bibx31" id="paren.8"/>.</p>
      <p id="d2e197">The objective of this paper is to present an open-access WebApp (<uri>https://nmr-ilt.esalq.usp.br/</uri>, last access: 15 April 2026) for the application of the inverse Laplace transform (ILT) to time-domain NMR (TD-NMR) signals, together with a concise methodological discussion of the underlying principles. The implemented algorithm is based on a non-negative least squares approach combined with Tikhonov regularization and singular value decomposition (SVD), enabling robust inversion of ill-posed relaxation data. In contrast to our previous ILT implementation reported in the literature <xref ref-type="bibr" rid="bib1.bibx31" id="paren.9"/>, which focused on local computational routines and specific applications, the present work provides a platform-independent, freely accessible web-based framework suitable for TD-NMR data from instruments of any manufacturer. The platform supports the main TD-NMR experiments used in practice, including Carr–Purcell–Meiboom–Gill (CPMG), inversion recovery, and saturation recovery pulse sequences. The main features of the proposed approach are validated using simulated datasets and representative experimental signals, demonstrating its consistency with established ILT methodologies and its potential as an open scientific tool for research and teaching in magnetic resonance applications.</p>
</sec>
<sec id="Ch1.S2">
  <label>2</label><title>Magnetic resonance background and motivation for ILT</title>
      <p id="d2e214">Magnetic resonance techniques can be broadly distinguished by magnetic field strength and homogeneity, which directly determine signal characteristics and the appropriate data analysis strategy. High-field NMR systems employ highly homogeneous magnetic fields, enabling frequency-domain analysis with high spectral resolution through the Fourier transform (FT). In contrast, time-domain and low-field NMR (TD-NMR/LF-NMR) systems are typically based on permanent magnets, resulting in compact, cost-effective, and robust instrumentation but often with limited magnetic field homogeneity.</p>
      <p id="d2e217">In many TD-NMR and benchtop systems, magnetic field inhomogeneities prevent reliable frequency-domain resolution, making relaxometry-based approaches more suitable. Pulse sequences such as Carr–Purcell–Meiboom–Gill (CPMG), inversion recovery (IR), and related methods are therefore widely used to probe longitudinal (<inline-formula><mml:math id="M2" display="inline"><mml:mrow><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">1</mml:mn></mml:msub></mml:mrow></mml:math></inline-formula>) and transverse (<inline-formula><mml:math id="M3" display="inline"><mml:mrow><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub></mml:mrow></mml:math></inline-formula>) relaxation processes. The signals acquired using these sequences consist of superpositions of exponentially decaying components, whose amplitudes and characteristic times reflect molecular dynamics and local interactions within the sample.</p>
      <p id="d2e242">From a signal-processing perspective, relaxometry data represent an inverse problem in which the measured signal is modeled as a weighted sum of exponential decays. Unlike the Fourier transform, which provides a direct and well-posed transformation, the determination of relaxation time distributions from TD-NMR signals constitutes an ill-posed inverse problem. In such cases, small perturbations in the input data – such as noise or experimental uncertainty – can lead to large variations in the recovered solution, necessitating the use of constrained optimization and regularization strategies.</p>
      <p id="d2e245">Within this context, the inverse Laplace transform (ILT) has emerged as a powerful framework for analyzing TD-NMR relaxometry data. Practical implementations of the ILT rely on numerical algorithms that balance stability, resolution, and robustness through appropriate regularization and non-negativity constraints. These methodological aspects are central to the present work and motivate the development of a transparent, accessible, and reproducible platform for ILT-based analysis of TD-NMR signals, as described in the following section.</p>
</sec>
<sec id="Ch1.S3">
  <label>3</label><title>Inverse Laplace transform</title>
      <p id="d2e257">In time-domain and low-field NMR experiments, signal analysis is predominantly performed in the time domain, particularly through relaxometry-based methods. In heterogeneous systems, the measured signal generally reflects a superposition of contributions arising from distinct spin populations characterized by different relaxation times, leading to multi-exponential signal behavior.</p>
      <p id="d2e260">The present work does not aim to review relaxometry techniques in detail, which are extensively discussed elsewhere <xref ref-type="bibr" rid="bib1.bibx29 bib1.bibx47 bib1.bibx28" id="paren.10"/>, but instead focuses on the mathematical processing of multi-exponential signals acquired using pulse sequences such as Carr–Purcell–Meiboom–Gill (CPMG), inversion recovery (IR), saturation recovery (SR), and related methods.</p>
      <p id="d2e266">In simple systems, relaxation data can often be adequately described by mono-exponential models. However, in more complex samples, the measured signal is better represented as a superposition of multiple exponential components, each associated with a distinct relaxation time. In such cases, conventional multi-exponential fitting becomes unstable and strongly dependent on the assumed number of components.</p>
      <p id="d2e269">In these situations, the analysis of relaxation data is commonly formulated as an inverse problem and addressed using inverse Laplace transform (ILT) methodologies, which aim to recover continuous distributions of relaxation times from experimental signals <xref ref-type="bibr" rid="bib1.bibx29 bib1.bibx24 bib1.bibx31" id="paren.11"/>.</p>
      <p id="d2e276">Figure <xref ref-type="fig" rid="F1"/> schematically illustrates the objective of ILT processing, in which a time-domain relaxometry signal is transformed into a relaxation time distribution. The positions and areas of the resulting peaks reflect the relative contributions of different spin populations present in the sample.</p>

      <fig id="F1" specific-use="star"><label>Figure 1</label><caption><p id="d2e283">Comparative schematic illustration of time-domain NMR signal processing using the Fourier transform (FT) and the inverse Laplace transform (ILT). In the FT approach (left panel), which is the most widely known and routinely used method in NMR spectroscopy, the free induction decay (FID) consists of a mixture of oscillatory, exponentially damped sinusoids in the time domain. After Fourier transformation, these components are separated in the frequency domain, producing a spectrum whose peak positions, line widths, and amplitudes provide chemical and structural information about the sample. In contrast, the ILT approach (right panel) is applied to non-oscillatory signals. On the left side of this panel, a Carr–Purcell–Meiboom–Gill (CPMG)-type signal is represented by the echo amplitudes as a function of time, showing purely monotonic exponential decays rather than oscillations. By processing this signal with the ILT, the result is not a frequency spectrum but a distribution of relaxation times (<inline-formula><mml:math id="M4" display="inline"><mml:mrow><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub></mml:mrow></mml:math></inline-formula>), shown on the right, also called a relaxogram. The positions and areas of the <inline-formula><mml:math id="M5" display="inline"><mml:mrow><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub></mml:mrow></mml:math></inline-formula> peaks reflect physical and compositional properties of the analyzed material, such as pore size distribution, water and oil content, and meat-to-fat ratio. Together, the figure highlights the conceptual analogy between both transforms – each mapping time-domain signals into characteristic distributions – while emphasizing the fundamental difference between oscillatory (FT) and non-oscillatory (ILT) data.</p></caption>
        <graphic xlink:href="https://mr.copernicus.org/articles/7/39/2026/mr-7-39-2026-f01.png"/>

      </fig>

      <p id="d2e314">In this way, the ILT process reveals the contribution of different spin groups, where the two wide peaks illustrated in the <inline-formula><mml:math id="M6" display="inline"><mml:mrow><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub></mml:mrow></mml:math></inline-formula> distribution can be a better representation of a real sample once real samples are not straightly homogeneous with singular values of amplitude and relaxation times (narrow peaks), but they are actually inhomogeneous samples, with a dispersion of relaxation times.</p>
      <p id="d2e328">The distribution obtained in the processing with the ILT can arise from a growing or decaying exponential damped curve, as with CPMG (<inline-formula><mml:math id="M7" display="inline"><mml:mrow><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub></mml:mrow></mml:math></inline-formula>) or inversion recovery (<inline-formula><mml:math id="M8" display="inline"><mml:mrow><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">1</mml:mn></mml:msub></mml:mrow></mml:math></inline-formula>), saturation recovery (<inline-formula><mml:math id="M9" display="inline"><mml:mrow><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">1</mml:mn></mml:msub></mml:mrow></mml:math></inline-formula>), diffusion (<inline-formula><mml:math id="M10" display="inline"><mml:mi>D</mml:mi></mml:math></inline-formula>), among other experiments, where what changes in the processing is the kernel equation used in the transformation, as will be discussed in the next section.</p>
      <p id="d2e371">There are several software platforms to perform this processing, some with free access and others only being supplied with licenses by the spectrometer manufacturing companies, each with different processing characteristics. The most famous ILT algorithms are CONTIN (CONTINuous distribution) <xref ref-type="bibr" rid="bib1.bibx38" id="paren.12"/>, UpenWin (Uniform PENalty) <xref ref-type="bibr" rid="bib1.bibx7" id="paren.13"/>, BRD (Butler–Reeds–Dawson) <xref ref-type="bibr" rid="bib1.bibx10" id="paren.14"/>, TSVD (truncated singular value decomposition) <xref ref-type="bibr" rid="bib1.bibx20" id="paren.15"/>, NNLS (non-negative least squares) <xref ref-type="bibr" rid="bib1.bibx25" id="paren.16"/>, PDCO (primal–dual interior method) <xref ref-type="bibr" rid="bib1.bibx3" id="paren.17"/>, among bi-dimensional ILT <xref ref-type="bibr" rid="bib1.bibx45 bib1.bibx8" id="paren.18"/> and other methods.</p>
      <p id="d2e397">In the next section, the basic concepts of the ILT and a simple-to-use WebApp developed for performing the transformation of TD-NMR signals are presented, freely available for research and teaching. A mathematical description of the implemented processing is then provided, followed by results with simulated and experimental data and, finally, the procedures for using the program. A video tutorial demonstrating the code and its usage is available on the WebApp page or can be requested from the authors by email.</p>
<sec id="Ch1.S3.SSx1" specific-use="unnumbered">
  <title>Mathematical description of the ILT</title>
      <p id="d2e405">There are several mathematical approaches to perform the inversion of these TD-NMR signals, and these techniques are generally referred to as inverse Laplace transform by the NMR scientific community. It is worth noting that the method discussed here is different from the procedure of the same name found in mathematical physics books <xref ref-type="bibr" rid="bib1.bibx1" id="paren.19"/>. Despite the confusion with the name, the origin of the uses of this term by the NMR community is related to an analogy with the procedure of the inverse Fourier transform. Further details of this history can be found in the work of Fordham and colleagues <xref ref-type="bibr" rid="bib1.bibx20" id="paren.20"/>.</p>
      <p id="d2e414">In the context of TD-NMR, for most of the pulse sequences used, the acquired signals show exponential and/or Gaussian growth or decay. The inversion problem to be solved here is to determine all of the amplitudes and relaxation times present in the data. Therefore, what we call ILT is a particular case of a more general problem of inverting Fredholm integral equations, which can be written in the following form:

            <disp-formula id="Ch1.E1" content-type="numbered"><label>1</label><mml:math id="M11" display="block"><mml:mrow><mml:mi>f</mml:mi><mml:mo>(</mml:mo><mml:mi>x</mml:mi><mml:mo>)</mml:mo><mml:mo>=</mml:mo><mml:munderover><mml:mo movablelimits="false">∫</mml:mo><mml:mi>a</mml:mi><mml:mi>b</mml:mi></mml:munderover><mml:mi mathvariant="italic">ϕ</mml:mi><mml:mo>(</mml:mo><mml:mi>t</mml:mi><mml:mo>)</mml:mo><mml:mspace linebreak="nobreak" width="0.125em"/><mml:mi>K</mml:mi><mml:mo>(</mml:mo><mml:mi>x</mml:mi><mml:mo>,</mml:mo><mml:mi>t</mml:mi><mml:mo>)</mml:mo><mml:mspace linebreak="nobreak" width="0.125em"/><mml:mi mathvariant="normal">d</mml:mi><mml:mi>t</mml:mi><mml:mo>,</mml:mo></mml:mrow></mml:math></disp-formula>

          where <inline-formula><mml:math id="M12" display="inline"><mml:mrow><mml:mi>K</mml:mi><mml:mo>(</mml:mo><mml:mi>x</mml:mi><mml:mo>,</mml:mo><mml:mi>t</mml:mi><mml:mo>)</mml:mo></mml:mrow></mml:math></inline-formula> is the kernel function of the system, and the function <inline-formula><mml:math id="M13" display="inline"><mml:mrow><mml:mi mathvariant="italic">ϕ</mml:mi><mml:mo>(</mml:mo><mml:mi>t</mml:mi><mml:mo>)</mml:mo></mml:mrow></mml:math></inline-formula> represents the function to be determined from the experimental data curve <inline-formula><mml:math id="M14" display="inline"><mml:mrow><mml:mi>f</mml:mi><mml:mo>(</mml:mo><mml:mi>x</mml:mi><mml:mo>)</mml:mo></mml:mrow></mml:math></inline-formula>.</p>
      <p id="d2e515">In the case of an experimental signal from a CPMG (Carr–Purcell–Meiboom–Gill) pulse sequence, the model function <inline-formula><mml:math id="M15" display="inline"><mml:mrow><mml:mi>F</mml:mi><mml:mo>(</mml:mo><mml:mi>t</mml:mi><mml:mo>)</mml:mo></mml:mrow></mml:math></inline-formula> is given by <inline-formula><mml:math id="M16" display="inline"><mml:mrow><mml:mi>F</mml:mi><mml:mo>(</mml:mo><mml:mi>t</mml:mi><mml:mo>)</mml:mo><mml:mo>=</mml:mo><mml:mi>c</mml:mi><mml:mo>(</mml:mo><mml:mn mathvariant="normal">0</mml:mn><mml:mo>)</mml:mo><mml:mspace width="0.125em" linebreak="nobreak"/><mml:mi>exp⁡</mml:mi><mml:mo>(</mml:mo><mml:mo>-</mml:mo><mml:mi>t</mml:mi><mml:mo>/</mml:mo><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub><mml:mo>)</mml:mo></mml:mrow></mml:math></inline-formula>, where <inline-formula><mml:math id="M17" display="inline"><mml:mrow><mml:mi>c</mml:mi><mml:mo>(</mml:mo><mml:mn mathvariant="normal">0</mml:mn><mml:mo>)</mml:mo></mml:mrow></mml:math></inline-formula> is the initial amplitude of the experimental signal, <inline-formula><mml:math id="M18" display="inline"><mml:mi>t</mml:mi></mml:math></inline-formula> is the time variable of the acquired signal, and <inline-formula><mml:math id="M19" display="inline"><mml:mrow><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub></mml:mrow></mml:math></inline-formula> is the relaxation time. For a sample composed of multiple relaxation times, we have the following:

            <disp-formula id="Ch1.E2" content-type="numbered"><label>2</label><mml:math id="M20" display="block"><mml:mrow><mml:mi>F</mml:mi><mml:mo>(</mml:mo><mml:mi>t</mml:mi><mml:mo>)</mml:mo><mml:mo>=</mml:mo><mml:munderover><mml:mo movablelimits="false">∑</mml:mo><mml:mrow><mml:mi>i</mml:mi><mml:mo>=</mml:mo><mml:mn mathvariant="normal">1</mml:mn></mml:mrow><mml:mi>k</mml:mi></mml:munderover><mml:msub><mml:mi>c</mml:mi><mml:mi>i</mml:mi></mml:msub><mml:mo>(</mml:mo><mml:mn mathvariant="normal">0</mml:mn><mml:mo>)</mml:mo><mml:mspace linebreak="nobreak" width="0.125em"/><mml:mi>exp⁡</mml:mi><mml:mo>(</mml:mo><mml:mo>-</mml:mo><mml:mi>t</mml:mi><mml:mo>/</mml:mo><mml:msub><mml:mi>T</mml:mi><mml:mrow><mml:mn mathvariant="normal">2</mml:mn><mml:mi>i</mml:mi></mml:mrow></mml:msub><mml:mo>)</mml:mo><mml:mo>,</mml:mo></mml:mrow></mml:math></disp-formula>

          where <inline-formula><mml:math id="M21" display="inline"><mml:mi>k</mml:mi></mml:math></inline-formula> denotes the number of components present in the sample.</p>
      <p id="d2e678">In real complex samples, it is physically expected not to have only a singular value of relaxation time but rather to have a continuous distribution of relaxation times. Thus, we can express the NMR signal as given by the following integral:

            <disp-formula id="Ch1.E3" content-type="numbered"><label>3</label><mml:math id="M22" display="block"><mml:mrow><mml:mi>F</mml:mi><mml:mo>(</mml:mo><mml:mi>t</mml:mi><mml:mo>)</mml:mo><mml:mo>=</mml:mo><mml:mo movablelimits="false">∫</mml:mo><mml:mi>g</mml:mi><mml:mo>(</mml:mo><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub><mml:mo>)</mml:mo><mml:mspace width="0.125em" linebreak="nobreak"/><mml:mi>exp⁡</mml:mi><mml:mo>(</mml:mo><mml:mo>-</mml:mo><mml:mi>t</mml:mi><mml:mo>/</mml:mo><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub><mml:mo>)</mml:mo><mml:mspace linebreak="nobreak" width="0.125em"/><mml:mi mathvariant="normal">d</mml:mi><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub><mml:mo>,</mml:mo></mml:mrow></mml:math></disp-formula>

          where <inline-formula><mml:math id="M23" display="inline"><mml:mrow><mml:mi>exp⁡</mml:mi><mml:mo>(</mml:mo><mml:mo>-</mml:mo><mml:mi>t</mml:mi><mml:mo>/</mml:mo><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub><mml:mo>)</mml:mo></mml:mrow></mml:math></inline-formula> is the kernel function, and <inline-formula><mml:math id="M24" display="inline"><mml:mrow><mml:mi>g</mml:mi><mml:mo>(</mml:mo><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub><mml:mo>)</mml:mo></mml:mrow></mml:math></inline-formula> represents the distribution of relaxation times <inline-formula><mml:math id="M25" display="inline"><mml:mrow><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub></mml:mrow></mml:math></inline-formula>, providing the amplitudes of each infinitesimal component <inline-formula><mml:math id="M26" display="inline"><mml:mrow><mml:mi mathvariant="normal">d</mml:mi><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub></mml:mrow></mml:math></inline-formula>.</p>
      <p id="d2e804">The ILT algorithm will determine the distribution of amplitudes <inline-formula><mml:math id="M27" display="inline"><mml:mrow><mml:mi>g</mml:mi><mml:mo>(</mml:mo><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub><mml:mo>)</mml:mo></mml:mrow></mml:math></inline-formula> from the experimental data <inline-formula><mml:math id="M28" display="inline"><mml:mrow><mml:mi>c</mml:mi><mml:mo>(</mml:mo><mml:msub><mml:mi>t</mml:mi><mml:mi>n</mml:mi></mml:msub><mml:mo>)</mml:mo></mml:mrow></mml:math></inline-formula>; however, experimental NMR signals <inline-formula><mml:math id="M29" display="inline"><mml:mrow><mml:mi>c</mml:mi><mml:mo>(</mml:mo><mml:msub><mml:mi>t</mml:mi><mml:mi>n</mml:mi></mml:msub><mml:mo>)</mml:mo></mml:mrow></mml:math></inline-formula> are a set of <inline-formula><mml:math id="M30" display="inline"><mml:mi>n</mml:mi></mml:math></inline-formula> data points acquired over the discrete time points <inline-formula><mml:math id="M31" display="inline"><mml:mrow><mml:msub><mml:mi>t</mml:mi><mml:mi>n</mml:mi></mml:msub></mml:mrow></mml:math></inline-formula>, with the presence of experimental noise <inline-formula><mml:math id="M32" display="inline"><mml:mrow><mml:mi mathvariant="italic">ϵ</mml:mi><mml:mo>(</mml:mo><mml:msub><mml:mi>t</mml:mi><mml:mi>n</mml:mi></mml:msub><mml:mo>)</mml:mo></mml:mrow></mml:math></inline-formula>; thereby

            <disp-formula id="Ch1.E4" content-type="numbered"><label>4</label><mml:math id="M33" display="block"><mml:mrow><mml:mi>c</mml:mi><mml:mo>(</mml:mo><mml:msub><mml:mi>t</mml:mi><mml:mi>n</mml:mi></mml:msub><mml:mo>)</mml:mo><mml:mo>=</mml:mo><mml:munderover><mml:mo movablelimits="false">∑</mml:mo><mml:mrow><mml:mi>i</mml:mi><mml:mo>=</mml:mo><mml:mn mathvariant="normal">1</mml:mn></mml:mrow><mml:mi>N</mml:mi></mml:munderover><mml:mspace linebreak="nobreak" width="0.125em"/><mml:mi>g</mml:mi><mml:mo>(</mml:mo><mml:msub><mml:mi>T</mml:mi><mml:mrow><mml:mn mathvariant="normal">2</mml:mn><mml:mi>i</mml:mi></mml:mrow></mml:msub><mml:mo>)</mml:mo><mml:mspace width="0.125em" linebreak="nobreak"/><mml:mi>K</mml:mi><mml:mo>(</mml:mo><mml:msub><mml:mi>t</mml:mi><mml:mi>n</mml:mi></mml:msub><mml:mo>,</mml:mo><mml:msub><mml:mi>T</mml:mi><mml:mrow><mml:mn mathvariant="normal">2</mml:mn><mml:mi>i</mml:mi></mml:mrow></mml:msub><mml:mo>)</mml:mo><mml:mo>+</mml:mo><mml:mi mathvariant="italic">ϵ</mml:mi><mml:mo>(</mml:mo><mml:msub><mml:mi>t</mml:mi><mml:mi>n</mml:mi></mml:msub><mml:mo>)</mml:mo><mml:mo>,</mml:mo></mml:mrow></mml:math></disp-formula>

          where <inline-formula><mml:math id="M34" display="inline"><mml:mi>K</mml:mi></mml:math></inline-formula> is the kernel equation of this summation. Note that <inline-formula><mml:math id="M35" display="inline"><mml:mi>N</mml:mi></mml:math></inline-formula> denotes the total points of the <inline-formula><mml:math id="M36" display="inline"><mml:mrow><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub></mml:mrow></mml:math></inline-formula> dimension, which need to be defined in a window of expected relaxation times, for example, from 0.001 to 10 s using <inline-formula><mml:math id="M37" display="inline"><mml:mrow><mml:mi>N</mml:mi><mml:mo>=</mml:mo><mml:mn mathvariant="normal">100</mml:mn></mml:mrow></mml:math></inline-formula> or 200 points.  For a CPMG experiment, the kernel should be defined as a composition of decreasing exponential, as shown in Eq. (<xref ref-type="disp-formula" rid="Ch1.E2"/>). The inversion of this problem can be obtained through the minimization of the mean square errors, given by

            <disp-formula id="Ch1.E5" content-type="numbered"><label>5</label><mml:math id="M38" display="block"><mml:mrow><mml:msup><mml:mi>X</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msup><mml:mo>=</mml:mo><mml:mo>‖</mml:mo><mml:mi>c</mml:mi><mml:mo>(</mml:mo><mml:msub><mml:mi>t</mml:mi><mml:mi>n</mml:mi></mml:msub><mml:mo>)</mml:mo><mml:mo>-</mml:mo><mml:mi>F</mml:mi><mml:mo>(</mml:mo><mml:msub><mml:mi>t</mml:mi><mml:mi>n</mml:mi></mml:msub><mml:mo>)</mml:mo><mml:msup><mml:mo>‖</mml:mo><mml:mn mathvariant="normal">2</mml:mn></mml:msup><mml:mo>,</mml:mo></mml:mrow></mml:math></disp-formula>

          where <inline-formula><mml:math id="M39" display="inline"><mml:mrow><mml:mi>F</mml:mi><mml:mo>(</mml:mo><mml:msub><mml:mi>t</mml:mi><mml:mi>n</mml:mi></mml:msub><mml:mo>)</mml:mo></mml:mrow></mml:math></inline-formula> is the model function that best describes the experimental data <inline-formula><mml:math id="M40" display="inline"><mml:mrow><mml:mi>c</mml:mi><mml:mo>(</mml:mo><mml:msub><mml:mi>t</mml:mi><mml:mi>n</mml:mi></mml:msub><mml:mo>)</mml:mo></mml:mrow></mml:math></inline-formula>. This minimization problem is not trivial as it involves a mathematically ill-posed problem <xref ref-type="bibr" rid="bib1.bibx23 bib1.bibx45 bib1.bibx42" id="paren.21"/>.</p>
      <p id="d2e1103">Several regularization methods can be used to obtain solutions for this Fredholm integral problem, each presenting different characteristics of stability and reliability. Physically, in our TD-NMR experiments, it is reasonable to expect that our solution <inline-formula><mml:math id="M41" display="inline"><mml:mrow><mml:mi>g</mml:mi><mml:mo>(</mml:mo><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub><mml:mo>)</mml:mo></mml:mrow></mml:math></inline-formula> is a continuous distribution of relaxation times without the existence of delta peaks, discontinuous points, or negative values of amplitude in the distribution (Fig. <xref ref-type="fig" rid="F1"/>). These constraints can be introduced into the program's algorithm through a term that smooths the distribution and enforces non-negativity, as proposed by the NNLS (non-negative least squares) method. This regularization of the solution enforces more stable and continuous distributions, and the regularization parameter (<inline-formula><mml:math id="M42" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula>) is responsible for the smoothing of this solution.</p>
      <p id="d2e1132">Different values of the regularization parameter <inline-formula><mml:math id="M43" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula> can yield optimal curve fits, resulting in distributions with certain variations. Determining which distribution best represents the physical system is not trivial and, therefore, involves some subjectivity as the fit strongly depends on the signal-to-noise ratio of the data. Various methods have been used and proposed to optimize the choice of the regularization parameter <inline-formula><mml:math id="M44" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula>, such as the L-curve method <xref ref-type="bibr" rid="bib1.bibx21 bib1.bibx16" id="paren.22"/>. In the present implementation, no automatic optimization strategy for the regularization parameter <inline-formula><mml:math id="M45" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula> is employed. Instead, <inline-formula><mml:math id="M46" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula> is selected by the user based on prior knowledge of the system and the signal-to-noise characteristics of the data, an approach commonly adopted in practical ILT analyses. Future versions of the WebApp will incorporate automated strategies for <inline-formula><mml:math id="M47" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula> selection.</p>
      <p id="d2e1174">Therefore, the algorithm of the WebApp uses the Tikhonov regularization method with singular value decomposition while assuming the non-negativity of the response, also known as NNLS (non-negative least squares), widely used by the NMR community.</p>
</sec>
</sec>
<sec id="Ch1.S4">
  <label>4</label><title>ILT-NMR WebApp</title>
      <p id="d2e1186">An open-access WebApp was developed to enable inverse Laplace transform (ILT) analysis of TD-NMR data without the need for local software installation. The application is deployed using Docker and hosted on secure servers of the University of São Paulo (USP) within the InterNuvem infrastructure, ensuring stable and reliable access for the scientific community. The computational core of the WebApp was implemented in Python <xref ref-type="bibr" rid="bib1.bibx44" id="paren.23"/>, making use of established numerical and visualization libraries, including NumPy <xref ref-type="bibr" rid="bib1.bibx22" id="paren.24"/> and Plotly. The implemented algorithm represents a platform-independent adaptation of our previously reported ILT routine developed for OriginLab software <xref ref-type="bibr" rid="bib1.bibx31" id="paren.25"/>.</p>
      <p id="d2e1198">The WebApp supports ILT processing of relaxation data acquired using Carr–Purcell–Meiboom–Gill (CPMG), inversion recovery (IR), and saturation recovery (SR) pulse sequences. For each experiment type, the corresponding kernel function <inline-formula><mml:math id="M48" display="inline"><mml:mrow><mml:mi>K</mml:mi><mml:mo>(</mml:mo><mml:mi>t</mml:mi><mml:mo>,</mml:mo><mml:mi>T</mml:mi><mml:mo>)</mml:mo></mml:mrow></mml:math></inline-formula> is defined as follows:

          <disp-formula id="Ch1.E6" content-type="numbered"><label>6</label><mml:math id="M49" display="block"><mml:mtable rowspacing="0.2ex" class="split" displaystyle="true" columnalign="right left"><mml:mtr><mml:mtd/><mml:mtd><mml:mrow><mml:mtext>CPMG:  </mml:mtext><mml:mi>K</mml:mi><mml:mo>(</mml:mo><mml:mi>t</mml:mi><mml:mo>,</mml:mo><mml:mi>T</mml:mi><mml:mo>)</mml:mo><mml:mo>=</mml:mo><mml:mo>[</mml:mo><mml:mi>exp⁡</mml:mi><mml:mo>(</mml:mo><mml:mo>-</mml:mo><mml:mi>t</mml:mi><mml:mo>/</mml:mo><mml:mi>T</mml:mi><mml:mo>)</mml:mo><mml:mo>]</mml:mo><mml:mo>,</mml:mo></mml:mrow></mml:mtd></mml:mtr><mml:mtr><mml:mtd/><mml:mtd><mml:mrow><mml:mtext>IR:  </mml:mtext><mml:mi>K</mml:mi><mml:mo>(</mml:mo><mml:mi>t</mml:mi><mml:mo>,</mml:mo><mml:mi>T</mml:mi><mml:mo>)</mml:mo><mml:mo>=</mml:mo><mml:mo>[</mml:mo><mml:mn mathvariant="normal">1</mml:mn><mml:mo>-</mml:mo><mml:mn mathvariant="normal">2</mml:mn><mml:mspace width="0.125em" linebreak="nobreak"/><mml:mi>exp⁡</mml:mi><mml:mo>(</mml:mo><mml:mo>-</mml:mo><mml:mi>t</mml:mi><mml:mo>/</mml:mo><mml:mi>T</mml:mi><mml:mo>)</mml:mo><mml:mo>]</mml:mo><mml:mo>,</mml:mo></mml:mrow></mml:mtd></mml:mtr><mml:mtr><mml:mtd/><mml:mtd><mml:mrow><mml:mtext>SR:  </mml:mtext><mml:mi>K</mml:mi><mml:mo>(</mml:mo><mml:mi>t</mml:mi><mml:mo>,</mml:mo><mml:mi>T</mml:mi><mml:mo>)</mml:mo><mml:mo>=</mml:mo><mml:mo>[</mml:mo><mml:mn mathvariant="normal">1</mml:mn><mml:mo>-</mml:mo><mml:mi>exp⁡</mml:mi><mml:mo>(</mml:mo><mml:mo>-</mml:mo><mml:mi>t</mml:mi><mml:mo>/</mml:mo><mml:mi>T</mml:mi><mml:mo>)</mml:mo><mml:mo>]</mml:mo><mml:mo>,</mml:mo></mml:mrow></mml:mtd></mml:mtr></mml:mtable></mml:math></disp-formula>

        where <inline-formula><mml:math id="M50" display="inline"><mml:mi>t</mml:mi></mml:math></inline-formula> denotes the experimental time axis, and <inline-formula><mml:math id="M51" display="inline"><mml:mi>T</mml:mi></mml:math></inline-formula> represents the relaxation time domain of the resulting ILT distribution.</p>
      <p id="d2e1373">Figure <xref ref-type="fig" rid="F2"/> summarizes the data-processing workflow implemented in the WebApp. Input signals are provided as text-based files containing the experimental time axis and one or more corresponding signal amplitudes. After specifying the experiment type and processing parameters, the ILT inversion is performed, and the resulting relaxation time distributions are returned in graphical and numerical formats, allowing direct inspection and further analysis. The uploaded data are temporarily processed on the server and are automatically discarded after the analysis, without being stored or logged.</p>

      <fig id="F2"><label>Figure 2</label><caption><p id="d2e1381">WebApp pipeline.</p></caption>
        <graphic xlink:href="https://mr.copernicus.org/articles/7/39/2026/mr-7-39-2026-f02.png"/>

      </fig>

      <p id="d2e1390">The WebApp interface was designed to provide flexible control over key processing parameters, including the definition of the relaxation time window, discretization of the <inline-formula><mml:math id="M52" display="inline"><mml:mi>T</mml:mi></mml:math></inline-formula> axis, baseline correction, signal normalization, and the choice of the regularization parameter <inline-formula><mml:math id="M53" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula>. While the present implementation requires manual selection of <inline-formula><mml:math id="M54" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula>, this approach allows the user to incorporate prior knowledge of the sample and signal-to-noise characteristics into the analysis. Automated strategies for <inline-formula><mml:math id="M55" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula> optimization will be incorporated into future versions of the platform. To facilitate reproducibility and broader use, the WebApp accepts multiple signals sharing a common time axis, enabling batch processing and comparative analysis of TD-NMR experiments.</p>
      <p id="d2e1421">Figure <xref ref-type="fig" rid="F3"/> shows the Processing page of the user interface, available at: <uri>https://nmr-ilt.esalq.usp.br/</uri> (last access: 15 April 2026). The full navigation bar on the left includes Home (main page with general information about the ILT process), Processing (the core section for data processing), Citation, and Contact (to send a message to the authors).</p>

      <fig id="F3" specific-use="star"><label>Figure 3</label><caption><p id="d2e1431">WebApp simplified processing interface.</p></caption>
        <graphic xlink:href="https://mr.copernicus.org/articles/7/39/2026/mr-7-39-2026-f03.png"/>

      </fig>

      <p id="d2e1440">In the Processing bar, it is required that information be provided regarding the input parameters and information: <list list-type="bullet"><list-item>
      <p id="d2e1445"><italic>Kernel type.</italic> Information regarding what type of data the user is processing must be provided. There are three options, namely CPMG, IR, and SR kernels, as shown in Eq. (<xref ref-type="disp-formula" rid="Ch1.E6"/>).</p></list-item><list-item>
      <p id="d2e1453"><italic>Remove start points.</italic> If desired, some initial points of the data can be removed. It is useful when delaying with spectrometer <italic>dead-time</italic> effects or spurious data points.</p></list-item><list-item>
      <p id="d2e1462"><italic>Alpha.</italic> The regularization parameter <inline-formula><mml:math id="M56" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula> is always necessary to be defined, and it is related to the <italic>resolution</italic> of the spectrum. Usually, the larger the <inline-formula><mml:math id="M57" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula> value, the lower spectral resolution; however, the forcing resolution can provide unreliable spectra in data with a low signal-to-noise ratio. In this WebApp, its value is defined by the user. Typical values used are 0.01, 0.1, 1, and 10.</p></list-item><list-item>
      <p id="d2e1485"><italic>Starting  T value.</italic> Set the minimum value of the relaxation times expected, in the timescale defined.</p></list-item><list-item>
      <p id="d2e1491"><italic>Ending T value.</italic> Set the maximum value of the relaxation times expected, in the timescale defined.</p></list-item><list-item>
      <p id="d2e1497"><italic>Number of points.</italic> Define the total number of points in the resulting distribution spectrum. Typical values are 100 or 200.</p></list-item><list-item>
      <p id="d2e1503"><italic>Timescale.</italic> It must be defined whether the time axis is in seconds, milliseconds, or microseconds. After processing, the relaxation time <inline-formula><mml:math id="M58" display="inline"><mml:mi>T</mml:mi></mml:math></inline-formula> axis in the ILT spectra will be of the same order of magnitude.</p></list-item><list-item>
      <p id="d2e1516"><italic>Force to zero/center.</italic> Spurious peaks can arise from a small displacement of the baseline of the input signals (offset), and this function can be used to perform this pre-processing step.</p></list-item><list-item>
      <p id="d2e1522"><italic>Normalization.</italic> This function will divide the data in each column by the first value of the signal, thus normalizing the signals.</p></list-item><list-item>
      <p id="d2e1528"><italic>Perform ILT.</italic> Once the processing is initiated, in a few seconds (or minutes if many columns are provided), the results are presented in the figures. An option to download all of the images and data points is also available.</p></list-item></list></p>

      <fig id="F4" specific-use="star"><label>Figure 4</label><caption><p id="d2e1536">The signal input needed to have a minimum of two columns: first, the time axis and, second, the amplitude signal <inline-formula><mml:math id="M59" display="inline"><mml:mrow><mml:mi>c</mml:mi><mml:mo>(</mml:mo><mml:mi>t</mml:mi><mml:mo>)</mml:mo></mml:mrow></mml:math></inline-formula>. The results of ILT processing are presented in panels <bold>(b)</bold> to <bold>(e)</bold>, with <bold>(b)</bold> the relaxation time distribution, <bold>(d)</bold> the comparison of the fitting and input signal, and <bold>(e)</bold> its residues. All data results can be downloaded in an xlsx file.</p></caption>
        <graphic xlink:href="https://mr.copernicus.org/articles/7/39/2026/mr-7-39-2026-f04.png"/>

      </fig>

      <p id="d2e1575">Figure <xref ref-type="fig" rid="F4"/> presents an example of the input data format and the corresponding ILT processing results, including the relaxation time distribution, fitting, residuals, and exported data. The input data must be provided in a .txt or .dat file, where the first column represents the time axis, and the second contains the signal intensity. Multiple signals can also be processed simultaneously by placing them in the subsequent columns, provided they share the same time axis (first column). In this case, all signals will be processed with the same input parameters, which is convenient for comparison and analysis of dynamic process experiments. The first row may optionally be used to define the axis labels.</p>
      <p id="d2e1580">After the ILT processing, resulting figures are generated in the WebPage. Figure <xref ref-type="fig" rid="F4"/>b shows the relaxation time distribution obtained, with the <inline-formula><mml:math id="M60" display="inline"><mml:mi>x</mml:mi></mml:math></inline-formula> axis in logarithmic scale, (d) shows the comparison between the <italic>fitting</italic> and the input signal, and (e) its respective residues. All data and figures can be downloaded in a zip file.</p>
      <p id="d2e1595">Three example files with experimental data are available on the Home page. The ILT WebApp can be accessed at <uri>https://nmr-ilt.esalq.usp.br</uri> (last access:  15 April 2026), and a video tutorial demonstrating its use is available at <uri>https://www.youtube.com/watch?v=_n_sN_G3Cnk</uri> (last access: 15 April 2026).</p>
</sec>
<sec id="Ch1.S5">
  <label>5</label><title>Results and discussions</title>
      <p id="d2e1613">To evaluate the performance and robustness of the implemented ILT algorithm, a series of tests were conducted using simulated and experimental TD-NMR signals acquired under different conditions for CPMG, inversion recovery (IR), and saturation recovery (SR) experiments. The results presented below focus on the influence of regularization parameters, the fidelity of the recovered relaxation time distributions, and the consistency of the results with known ground-truth distributions and literature data.</p>
<sec id="Ch1.S5.SS1">
  <label>5.1</label><title>Influence of the regularization parameter <inline-formula><mml:math id="M61" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula></title>
      <p id="d2e1630">Figure <xref ref-type="fig" rid="F5"/> illustrates the effect of the regularization parameter <inline-formula><mml:math id="M62" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula> on the relaxation time distribution obtained from the ILT of a bi-exponential CPMG signal with relaxation times of 100 and 500 ms. As expected, increasing <inline-formula><mml:math id="M63" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula> leads to broader distributions with reduced peak amplitudes while preserving the total spectral area. This behavior reflects the trade-off between resolution and stability that is characteristic of regularized inverse problems.</p>

      <fig id="F5" specific-use="star"><label>Figure 5</label><caption><p id="d2e1651">Effect of the regularization parameter (<inline-formula><mml:math id="M64" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula>) on the resulting relaxation distribution spectrum. The larger the value of <inline-formula><mml:math id="M65" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula>, the broader the peaks become.</p></caption>
          <graphic xlink:href="https://mr.copernicus.org/articles/7/39/2026/mr-7-39-2026-f05.png"/>

        </fig>

      <p id="d2e1674">The choice of <inline-formula><mml:math id="M66" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula> is particularly critical for signals with a limited signal-to-noise ratio, where excessive regularization may oversmooth physically relevant features, whereas insufficient regularization can amplify noise-induced artifacts. In practice, the selection of <inline-formula><mml:math id="M67" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula> is guided by balancing these two effects, aiming to minimize spurious oscillations while preserving meaningful spectral features.</p>
      <p id="d2e1692">A common strategy is to select the smallest <inline-formula><mml:math id="M68" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula> value that yields a stable and physically interpretable distribution, without the appearance of noise-driven peaks. In this context, visual inspection of the resulting distribution, combined with knowledge of the expected number of components and their approximate relaxation times, can provide a practical and effective criterion.</p>
      <p id="d2e1702">Although automated optimization strategies such as the L-curve method have been proposed in the literature <xref ref-type="bibr" rid="bib1.bibx21 bib1.bibx16" id="paren.26"/>, the present implementation allows manual selection of <inline-formula><mml:math id="M69" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula>, enabling the incorporation of prior knowledge about the sample and experimental conditions. This flexibility is particularly useful in heterogeneous systems, where the definition of an optimal <inline-formula><mml:math id="M70" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula> may depend on the specific analysis objective, such as resolution of closely spaced components or suppression of noise artifacts.</p>
</sec>
<sec id="Ch1.S5.SS2">
  <label>5.2</label><title>Validation using simulated and experimental signals</title>
      <p id="d2e1730">The algorithm was first validated using simulated TD-NMR signals generated from predefined relaxation time distributions. Broad log-Gaussian distributions were used to emulate realistic heterogeneous systems, and synthetic CPMG and IR signals were obtained by numerical integration of these distributions, followed by the addition of Gaussian white noise at different rms levels. Figure <xref ref-type="fig" rid="F6"/>a–d present representative simulated signals with increasing noise levels, corresponding to rms values of 0 %, 1 %, 2 %, and 5 %, respectively. For each case, the corresponding ILT distribution obtained from the simulated signal is shown below, alongside the original distribution used to generate the signal, allowing a direct comparison between the recovered and true distributions.</p>

      <fig id="F6" specific-use="star"><label>Figure 6</label><caption><p id="d2e1737">Simulated CPMG signals were generated to evaluate the performance of the ILT WebApp. Panels <bold>(a)</bold>–<bold>(d)</bold> show signals with increasing rms noise levels, obtained by numerical integration of a predefined relaxation time distribution (shown below as dist, red line). The original distribution consists of two peaks centered at relaxation times of 100 and 500 ms. After processing the time-domain data using the ILT algorithm, the recovered distributions (ILT, black line) are presented below each signal. Several similar simulated datasets were analyzed, and the results were found to be consistent with those obtained using established ILT software.</p></caption>
          <graphic xlink:href="https://mr.copernicus.org/articles/7/39/2026/mr-7-39-2026-f06.png"/>

        </fig>

      <p id="d2e1752">From 0 % to 2 % rms, the recovered distributions show good agreement with the ground-truth distributions used in the simulations, accurately reproducing peak positions, widths, and relative amplitudes. The relative deviation of peak centers remained within a few percent for all tested cases, consistently with previously reported results for established ILT implementations. As the noise level increases from 2 % to 5 % rms, the recovered ILT distributions begin to exhibit spurious peaks, reflecting the inherent ill-posed nature of the ILT problem in the presence of noise, as widely documented.</p>

      <fig id="F7" specific-use="star"><label>Figure 7</label><caption><p id="d2e1758">Comparison of CPMG signals (left) and the corresponding relaxation time distributions (right) of maize seeds under different conditions: (a) dry seeds with moisture content below 10 %; (b) seeds after 24 h of water absorption; and (c) seeds after several days, when germination had begun, as illustrated in the inset above. These results are consistent with Song et al. (2022)'s analysis of maize seeds <xref ref-type="bibr" rid="bib1.bibx39" id="paren.27"/>.</p></caption>
          <graphic xlink:href="https://mr.copernicus.org/articles/7/39/2026/mr-7-39-2026-f07.png"/>

        </fig>

      <p id="d2e1770">Beyond simulations, the algorithm was applied to experimental TD-NMR data acquired from maize seed samples at different hydration and germination stages (Fig. <xref ref-type="fig" rid="F7"/>). The <inline-formula><mml:math id="M71" display="inline"><mml:mrow class="chem"><mml:msup><mml:mi/><mml:mn mathvariant="normal">1</mml:mn></mml:msup><mml:mi mathvariant="normal">H</mml:mi></mml:mrow></mml:math></inline-formula> TD-NMR measurements were performed on an 11.3 MHz spectrometer (0.27 T for <inline-formula><mml:math id="M72" display="inline"><mml:mrow class="chem"><mml:msup><mml:mi/><mml:mn mathvariant="normal">1</mml:mn></mml:msup><mml:mi mathvariant="normal">H</mml:mi></mml:mrow></mml:math></inline-formula> resonance frequency), SLK-200 (SpinLock, Argentina), using a 30 mm probe at 30 <inline-formula><mml:math id="M73" display="inline"><mml:mrow class="unit"><mml:mi mathvariant="normal">°</mml:mi><mml:mi mathvariant="normal">C</mml:mi></mml:mrow></mml:math></inline-formula>. The Carr–Purcell–Meiboom–Gill (CPMG) pulse sequence was used, with 90 and 180° pulses of 9.0 and 18.5 <inline-formula><mml:math id="M74" display="inline"><mml:mrow class="unit"><mml:mi mathvariant="normal">µ</mml:mi><mml:mi mathvariant="normal">s</mml:mi></mml:mrow></mml:math></inline-formula>, respectively, and an echo time of 200 <inline-formula><mml:math id="M75" display="inline"><mml:mrow class="unit"><mml:mi mathvariant="normal">µ</mml:mi><mml:mi mathvariant="normal">s</mml:mi></mml:mrow></mml:math></inline-formula>, with a total of 4000 echoes, a recycle delay of 3 s, and 32 scans. For ILT processing, <inline-formula><mml:math id="M76" display="inline"><mml:mrow><mml:mi mathvariant="italic">α</mml:mi><mml:mo>=</mml:mo><mml:mn mathvariant="normal">1</mml:mn></mml:mrow></mml:math></inline-formula> and 100 points were used.</p>
      <p id="d2e1842">The three ILT spectra of Fig. <xref ref-type="fig" rid="F7"/> are from a set of nine maize seeds measured simultaneously: first, in (a), measured when they are dry with less than 10 % moisture; in (b), measured after the set of maize seeds absorbed water by 24 h; and, in (c), after some days, when they started germination, as showed in the insert illustration of a maize seed. It can be noted in (a) that the main peak, at first at <inline-formula><mml:math id="M77" display="inline"><mml:mrow><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub><mml:mo>=</mml:mo><mml:mn mathvariant="normal">1</mml:mn></mml:mrow></mml:math></inline-formula> ms, shifted to 3 ms in (b) and also got wider. Also, the two smaller peaks in (a), around 40 and 150 ms, shift and widen in (b). These changes reflect the process of water absorption and the increase in heterogeneity inside the maize seeds. These processes can be monitored in more detail and studied to interpret what each peak represents inside the maize seed. These peaks of <inline-formula><mml:math id="M78" display="inline"><mml:mrow><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub></mml:mrow></mml:math></inline-formula> relaxation times in seeds typically represent signals from different portions of water and/or oil mobility due the porous structures.</p>
      <p id="d2e1873">In Fig. <xref ref-type="fig" rid="F7"/>c, the ILT spectrum of germinated maize seeds is presented, as shown in the inset illustration of a maize seed. These resulting relaxation time distributions reveal systematic shifts and broadening of the <inline-formula><mml:math id="M79" display="inline"><mml:mrow><mml:msub><mml:mi>T</mml:mi><mml:mn mathvariant="normal">2</mml:mn></mml:msub></mml:mrow></mml:math></inline-formula> peaks as water uptake and metabolic activity increase, reflecting changes in molecular mobility and structural heterogeneity within the seeds. These trends are consistent with previously reported TD-NMR studies of maize seeds and validate the applicability of the proposed approach to real agro-biological systems <xref ref-type="bibr" rid="bib1.bibx39" id="paren.28"/>.</p>
      <p id="d2e1892">Taken together, these results demonstrate that the implemented ILT algorithm reliably recovers relaxation time distributions from both simulated and experimental TD-NMR data, producing results that are consistent with established methods. Moreover, the same core algorithm has been successfully applied by our research group in a wide range of previous studies, including food analysis <xref ref-type="bibr" rid="bib1.bibx33" id="paren.29"/>, meat aging and color evaluation <xref ref-type="bibr" rid="bib1.bibx14 bib1.bibx34" id="paren.30"/>, physiological disorders in poultry and fruits <xref ref-type="bibr" rid="bib1.bibx13 bib1.bibx4" id="paren.31"/>, seed and plant science <xref ref-type="bibr" rid="bib1.bibx30" id="paren.32"/>, enzymatic activity in cassava roots <xref ref-type="bibr" rid="bib1.bibx15" id="paren.33"/>, and the detection of counterfeit spirits <xref ref-type="bibr" rid="bib1.bibx17" id="paren.34"/>, further supporting its robustness and practical applicability.</p>
</sec>
<sec id="Ch1.S5.SS3">
  <label>5.3</label><title>Tips and tricks</title>
      <p id="d2e1922">To ensure accurate analysis of the ILT processing, certain practical aspects need to be emphasized, as illustrated in Fig. <xref ref-type="fig" rid="F8"/>: <list list-type="custom"><list-item><label>i.</label>
      <p id="d2e1929">Signals with exponential decay and/or growth should be fully acquired during the experimental stage, with a sufficiently long baseline. Discontinuities in the initial points or a step in the final baseline, as in illustration (i), can lead to artificial (spurious) peaks in the resulting ILT spectrum.</p></list-item><list-item><label>ii.</label>
      <p id="d2e1933">Artificial peaks may arise in the ILT spectrum from slight displacements of the baseline (amplitude offset). To address this, the WebApp provides the option of a pre-processing function, namely “Force to zero/center”, for this correction.</p></list-item><list-item><label>iii.</label>
      <p id="d2e1937">The ILT spectrum is strongly influenced by the signal-to-noise ratio of the acquired data. Noisy experimental signals can result in unreliable distributions.</p></list-item><list-item><label>iv.</label>
      <p id="d2e1941">Note that the ILT spectrum will have the same time unit as the input signal. We recommend using times in seconds or milliseconds for the input signal as relaxation times of biologic samples typically fall within the range of 0.001 and 10 s.</p></list-item><list-item><label>v.</label>
      <p id="d2e1945">Note that the ILT spectrum window (starting <inline-formula><mml:math id="M80" display="inline"><mml:mi>T</mml:mi></mml:math></inline-formula> value and ending <inline-formula><mml:math id="M81" display="inline"><mml:mi>T</mml:mi></mml:math></inline-formula> value) and the number of points (100) must be selected carefully. If the window is too short or too long, it can generate distributions with artificial and distorted peaks.</p></list-item><list-item><label>vi.</label>
      <p id="d2e1963">For studies comparing several signals, it is advisable to consistently use the same parameter values in both the experimental acquisition stage and the ILT processing. For the ILT processing, these parameters include the number of points, the <inline-formula><mml:math id="M82" display="inline"><mml:mi mathvariant="italic">α</mml:mi></mml:math></inline-formula> parameter, and the values of the starting <inline-formula><mml:math id="M83" display="inline"><mml:mi>T</mml:mi></mml:math></inline-formula> value and ending <inline-formula><mml:math id="M84" display="inline"><mml:mi>T</mml:mi></mml:math></inline-formula> value.</p></list-item></list></p>

      <fig id="F8"><label>Figure 8</label><caption><p id="d2e1989">Illustration with tips and tricks that must be observed when processing signals with the ILT WebApp. Panel <bold>(i)</bold> shows the problem of discontinuity experimental data signal, panel <bold>(ii)</bold> shows offset amplitude, panel <bold>(iii)</bold> shows the signal-to-noise ratio, panel <bold>(iv)</bold> shows the time axis, panel <bold>(v)</bold> shows the selection of an expected window of relaxation times, and panel <bold>(vi)</bold> shows the uses of the same parameters values to compare several signals. Figure adapted from reference <xref ref-type="bibr" rid="bib1.bibx31" id="paren.35"/>.</p></caption>
          <graphic xlink:href="https://mr.copernicus.org/articles/7/39/2026/mr-7-39-2026-f08.png"/>

        </fig>

      <p id="d2e2020">By paying attention to these practical considerations, more accurate and meaningful ILT analyses can be achieved.</p>
</sec>
</sec>
<sec id="Ch1.S6" sec-type="conclusions">
  <label>6</label><title>Conclusion</title>
      <p id="d2e2032">This work presented the fundamental principles of the inverse Laplace transform (ILT) applied to time-domain NMR (TD-NMR) data and introduced an open-access WebApp designed to perform this analysis in a transparent and platform-independent manner. The implemented approach is based on non-negative least squares combined with Tikhonov regularization, providing a robust framework for the inversion of ill-posed relaxometry problems commonly encountered in TD-NMR experiments.</p>
      <p id="d2e2035">Validation using both simulated datasets with known ground-truth distributions and representative experimental signals demonstrated that the proposed implementation reliably recovers relaxation time distributions, yielding results consistent with those obtained using established ILT software. These findings confirm the methodological soundness of the algorithm and support its use as a complementary tool for TD-NMR data analysis in research and educational contexts.</p>
      <p id="d2e2038">The WebApp is freely accessible online at <uri>https://nmr-ilt.esalq.usp.br/</uri> (last access:  15 April 2026), offering an accessible environment for ILT analysis without the need for proprietary software. Future developments will focus on extending the available functionalities and incorporating automated strategies for regularization parameter selection.</p>
</sec>

      
      </body>
    <back><notes notes-type="codedataavailability"><title>Code and data availability</title>

      <p id="d2e2048">Code is not publicly available because it is implemented within a web-based platform that is freely accessible to users. The source code is not distributed in order to ensure appropriate use within the intended platform and to avoid unauthorized commercial reuse. Data are available from the authors upon request.</p>
  </notes><notes notes-type="sampleavailability"><title>Sample availability</title>

      <p id="d2e2054">Samples are available from the authors upon request.</p>
  </notes><notes notes-type="videosupplement"><title>Video supplement</title>

      <p id="d2e2060">A video tutorial demonstrating the use of the WebApp is available at <uri>https://youtu.be/_n_sN_G3Cnk</uri> (Moraes, 2026).</p>
  </notes><notes notes-type="authorcontribution"><title>Author contributions</title>

      <p id="d2e2069">T. B. Moraes: conceptualization, methodology, validation, data curation, writing (review and editing), funding acquisition, supervision, project administration. G. V. Von Atzingen: software, data processing, formal analysis, writing (original draft). L. P. Mazzero: software, web platform development, implementation. W. S. Mendes: software, web platform development, implementation. M. B. Zacharias: investigation, experimental data acquisition, validation, writing (original draft). M. C. B. Cardinali: software, data processing, methodology, writing (review and editing).</p>
  </notes><notes notes-type="competinginterests"><title>Competing interests</title>

      <p id="d2e2075">The contact author has declared that none of the authors has any competing interests.</p>
  </notes><notes notes-type="disclaimer"><title>Disclaimer</title>

      <p id="d2e2081">Publisher's note: Copernicus Publications remains neutral with regard to jurisdictional claims made in the text, published maps, institutional affiliations, or any other geographical representation in this paper. The authors bear the ultimate responsibility for providing appropriate place names. Views expressed in the text are those of the authors and do not necessarily reflect the views of the publisher.</p>
  </notes><ack><title>Acknowledgements</title><p id="d2e2087">The authors would like to thank the Universidade de São Paulo (USP) and Instituto Federal de Educação, Ciência e Tecnologia de São Paulo (IFSP), campus de Piracicaba/SP for supporting the development of this project. This work was financially supported by the following grants from Brazilian agencies: Conselho Nacional de Desenvolvimento Científico e Tecnológico CNPq grant (no. 306611/2022-8) and Fundação de Amparo à Pesquisa do Estado de São Paulo FAPESP (grant no. 2025/09284-9).</p></ack><notes notes-type="financialsupport"><title>Financial support</title>

      <p id="d2e2093">This research has been supported by the Conselho Nacional de Desenvolvimento Científico e Tecnológico (grant no. 306611/2022-8) and the Fundação de Amparo à Pesquisa do Estado de São Paulo (grant no. 2025/09284-9).</p>
  </notes><notes notes-type="reviewstatement"><title>Review statement</title>

      <p id="d2e2099">This paper was edited by Geoffrey Bodenhausen and reviewed by three anonymous referees.</p>
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