CRISP: a deep learning architecture for GC × GC-TOFMS contour ROI identification, simulation and analysis in imaging metabolomics

dc.contributor.authorMathema V.B.
dc.contributor.authorDuangkumpha K.
dc.contributor.authorWanichthanarak K.
dc.contributor.authorJariyasopit N.
dc.contributor.authorDhakal E.
dc.contributor.authorSathirapongsasuti N.
dc.contributor.authorKitiyakara C.
dc.contributor.authorSirivatanauksorn Y.
dc.contributor.authorKhoomrung S.
dc.contributor.correspondenceMathema V.B.
dc.contributor.otherMahidol University
dc.date.accessioned2025-03-24T18:29:37Z
dc.date.available2025-03-24T18:29:37Z
dc.date.issued2022-03-10
dc.description.abstractTwo-dimensional gas chromatography-time-of-flight mass spectrometry (GC × GC-TOFMS) provides a large amount of molecular information from biological samples. However, the lack of a comprehensive compound library or customizable bioinformatics tool is currently a challenge in GC × GC-TOFMS data analysis. We present an open-source deep learning (DL) software called contour regions of interest (ROI) identification, simulation and untargeted metabolomics profiler (CRISP). CRISP integrates multiple customizable deep neural network architectures for assisting the semi-automated identification of ROIs, contour synthesis, resolution enhancement and classification of GC × GC-TOFMS-based contour images. The approach includes the novel aggregate feature representative contour (AFRC) construction and stacked ROIs. This generates an unbiased contour image dataset that enhances the contrasting characteristics between different test groups and can be suitable for small sample sizes. The utility of the generative models and the accuracy and efficacy of the platform were demonstrated using a dataset of GC × GC-TOFMS contour images from patients with late-stage diabetic nephropathy and healthy control groups. CRISP successfully constructed AFRC images and identified over five ROIs to create a deepstacked dataset. The high fidelity, 512 × 512-pixels generative model was trained as a generator with a Fréchet inception distance of <47.00. The trained classifier achieved an AUROC of >0.96 and a classification accuracy of >95.00% for datasets with and without column bleed. Overall, CRISP demonstrates good potential as a DL-based approach for the rapid analysis of 4-D GC × GC-TOFMS untargeted metabolite profiles by directly implementing contour images. CRISP is available at https://github.com/vivekmathema/GCxGC-CRISP.
dc.identifier.citationBriefings in bioinformatics Vol.23 No.2 (2022)
dc.identifier.doi10.1093/bib/bbab550
dc.identifier.eissn14774054
dc.identifier.pmid35022651
dc.identifier.scopus2-s2.0-85127523691
dc.identifier.urihttps://repository.li.mahidol.ac.th/handle/20.500.14594/106806
dc.rights.holderSCOPUS
dc.subjectBiochemistry, Genetics and Molecular Biology
dc.subjectComputer Science
dc.titleCRISP: a deep learning architecture for GC × GC-TOFMS contour ROI identification, simulation and analysis in imaging metabolomics
dc.typeArticle
mu.datasource.scopushttps://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85127523691&origin=inward
oaire.citation.issue2
oaire.citation.titleBriefings in bioinformatics
oaire.citation.volume23
oairecerif.author.affiliationFaculty of Science, Mahidol University
oairecerif.author.affiliationRamathibodi Hospital
oairecerif.author.affiliationSiriraj Hospital
oairecerif.author.affiliationFaculty of Medicine Ramathibodi Hospital, Mahidol University
oairecerif.author.affiliationResearch Network of NANOTEC - MU Ramathibodi on Nanomedicine

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