Characterization of signature trends across the spectrum of non-alcoholic fatty liver disease using deep learning method

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dc.contributor.authorIlkyu Park-
dc.contributor.authorNakyoung Kim-
dc.contributor.authorSugi Lee-
dc.contributor.authorKunhyang Park-
dc.contributor.authorMi-Young Son-
dc.contributor.authorHyun-Soo Cho-
dc.contributor.authorDae Soo Kim-
dc.date.accessioned2023-01-02T16:32:39Z-
dc.date.available2023-01-02T16:32:39Z-
dc.date.issued2023-
dc.identifier.issn0024-3205-
dc.identifier.urihttps://oak.kribb.re.kr/handle/201005/30840-
dc.description.abstractAims: The timely diagnosis of different stages in NAFLD is crucial for disease treatment and reversal. We used hepatocellular ballooning to determine different NAFLD stages. Main methods: We analyzed differentially expressed genes (DEGs) in 78 patients with NAFLD and in healthy controls from previously published RNA-seq data. We identified two expression types in NAFLD progression, calculated the predictive power of candidate genes, and validated them in an independent cohort. We also performed cancer studies with these candidates retrieved from the Cancer Genome Atlas. Key findings: We identified 103 DEGs in NAFLD patients compared to healthy controls: 75 genes gradually increased or decreased in the NAFLD stage, whereas 28 genes showed differences only in NASH. The former were enriched in negative regulation and binding-related genes; the latter were involved in positive regulation and cell proliferation. Feature selection showed the gradual up- or down-regulation of 21 genes in NASH compared to controls; 18 were highly expressed only in NASH. Using deep-learning method with subset of features from lasso regression, we obtained reliable determination performance in NAFL and NASH (accuracy: 0.857) and validated these genes using an independent cohort (accuracy: 0.805). From cancer studies, we identified significant differential expression of several candidate genes in LIHC; 5 genes were gradually up-regulated and 6 showing high expression only in NASH were influential to patient survival. Significance: The identified biomolecular signatures may determine the spectrum of NAFLD and its relationship with HCC, improving clinical diagnosis and prognosis and enabling a therapeutic intervention for NAFLD.-
dc.publisherElsevier-
dc.titleCharacterization of signature trends across the spectrum of non-alcoholic fatty liver disease using deep learning method-
dc.title.alternativeCharacterization of signature trends across the spectrum of non-alcoholic fatty liver disease using deep learning method-
dc.typeArticle-
dc.citation.titleLife Sciences-
dc.citation.number0-
dc.citation.endPage121195-
dc.citation.startPage121195-
dc.citation.volume314-
dc.contributor.affiliatedAuthorIlkyu Park-
dc.contributor.affiliatedAuthorNakyoung Kim-
dc.contributor.affiliatedAuthorSugi Lee-
dc.contributor.affiliatedAuthorKunhyang Park-
dc.contributor.affiliatedAuthorMi-Young Son-
dc.contributor.affiliatedAuthorHyun-Soo Cho-
dc.contributor.affiliatedAuthorDae Soo Kim-
dc.contributor.alternativeName박일규-
dc.contributor.alternativeName김나경-
dc.contributor.alternativeName이수기-
dc.contributor.alternativeName박근향-
dc.contributor.alternativeName손미영-
dc.contributor.alternativeName조현수-
dc.contributor.alternativeName김대수-
dc.identifier.bibliographicCitationLife Sciences, vol. 314, pp. 121195-121195-
dc.identifier.doi10.1016/j.lfs.2022.121195-
dc.subject.keywordNon-alcoholic fatty liver-
dc.subject.keywordNon-alcoholic steatohepatitis-
dc.subject.keywordDeep-learning models-
dc.subject.keywordLiver hepatocellular carcinoma-
dc.subject.keywordTumorigenesis-
dc.subject.localNon-alcoholic fatty liver-
dc.subject.localNon-alcoholic steatohepatitis-
dc.subject.localNonalcoholic steatohepatitis-
dc.subject.localNon-alcoholic steatohepatitis (NASH)-
dc.subject.localnon-alcoholic steatohepatitis-
dc.subject.localnonalcoholic steatohepatitis-
dc.subject.localDeep-learning models-
dc.subject.localLiver hepatocellular carcinoma-
dc.subject.localTumorigenesis-
dc.subject.localtumorigenesis-
dc.description.journalClassY-
Appears in Collections:
Division of A.I. & Biomedical Research > Digital Biotech Innovation Center > 1. Journal Articles
Division of Bio Technology Innovation > Core Research Facility & Analysis Center > 1. Journal Articles
Division of Research on National Challenges > 1. Journal Articles
Division of Research on National Challenges > Stem Cell Convergenece Research Center > 1. Journal Articles
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