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Lee, Semin
Computational Biology Lab.
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Identification of 17 novel epigenetic biomarkers associated with anxiety disorders using differential methylation analysis followed by machine learning-based validation

Author(s)
Kwon, YoonsungBlazyte, AstaJeon, YeonsuKim, Yeo JinAn, KyungwhanJeon, SungwonRyu, HyojungShin, Dong-HyunAhn, JihyeUm, HyojinKang, YounghuiBak, HyebinKim, Byoung-ChulLee, SeminJung, Hyung-TaeShin, Eun-SeokBhak, Jong
Issued Date
2025-02
DOI
10.1186/s13148-025-01819-x
URI
https://scholarworks.unist.ac.kr/handle/201301/86749
Citation
CLINICAL EPIGENETICS, v.17, no.1, pp.24
Abstract
BackgroundThe changes in DNA methylation patterns may reflect both physical and mental well-being, the latter being a relatively unexplored avenue in terms of clinical utility for psychiatric disorders. In this study, our objective was to identify the methylation-based biomarkers for anxiety disorders and subsequently validate their reliability.MethodsA comparative differential methylation analysis was performed on whole blood samples from 94 anxiety disorder patients and 296 control samples using targeted bisulfite sequencing. Subsequent validation of identified biomarkers employed an artificial intelligence-based risk prediction models: a linear calculation-based methylation risk score model and two tree-based machine learning models: Random Forest and XGBoost.ResultsSeventeen novel epigenetic methylation biomarkers were identified to be associated with anxiety disorders. These biomarkers were predominantly localized near CpG islands, and they were associated with two distinct biological processes: 1) cell apoptosis and mitochondrial dysfunction and 2) the regulation of neurosignaling. We further developed a robust diagnostic risk prediction system to classify anxiety disorders from healthy controls using the 17 biomarkers. Machine learning validation confirmed the robustness of our biomarker set, with XGBoost as the best-performing algorithm, an area under the curve of 0.876.ConclusionOur findings support the potential of blood liquid biopsy in enhancing the clinical utility of anxiety disorder diagnostics. This unique set of epigenetic biomarkers holds the potential for early diagnosis, prediction of treatment efficacy, continuous monitoring, health screening, and the delivery of personalized therapeutic interventions for individuals affected by anxiety disorders.
Publisher
BMC
ISSN
1868-7075
Keyword (Author)
Liquid biopsyAnxiety disorderMethylation risk scoreMachine learningEpigenetic biomarker
Keyword
PSYCHOLOGICAL STRESSSEROTONINDEPRESSIONAPOPTOSISCELLSGABAISLANDSDAMAGEDNA METHYLATIONGENE ONTOLOGY

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