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Identification of Novel Biomarkers in Huntington's Disease Based on Differential Gene Expression Meta-Analysis and Machine Learning Approach
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Title
Identification of Novel Biomarkers in Huntington's Disease Based on Differential Gene Expression Meta-Analysis and Machine Learning Approach
Issued Date
2025-07
Citation
Applied Sciences, v.15, no.15
Type
Article
Author Keywords
Huntington&aposs diseasedifferentially expressed genemachine learningmeta-analysis
Keywords
BLOODBRAINCOMPARABILITYPACKAGENEURONS
ISSN
2076-3417
Abstract
Huntington's disease (HD) is a severe and progressive neurodegenerative disease for which therapeutic options have so far been confined to symptomatic treatment. Currently, the diagnosis relies on the signs and symptoms shown by patients; however, by that stage, the psychomotor issues have progressed to a point where reversal of the condition is unattainable. Although numerous clinical trials have been actively investigating therapeutic agents aimed at preventing the onset of disease or slowing down the disease progression, there has been a constant need for reliable biomarkers to assess neurodegeneration, monitor disease progression, and assess the efficacy of treatments accurately. Therefore, to discover the key biomarkers associated with the progression of HD, we employed bioinformatics and machine learning (ML) to create a robust pipeline that integrated differentially expressed gene (DEG) analysis with ML to select potential biomarkers. We performed a meta-analysis to identify DEGs using three Gene Expression Omnibus (GEO) microarray datasets from different platforms related to HD-affected brain tissue, applying both relaxed and strict criteria to identify differentially expressed genes. Subsequently, focusing only on genes identified through the inclusive threshold, we employed 19 diverse ML techniques to explore the common genes that contributed to the top three selected ML algorithms and the shared genes that had an impact on the ML algorithms and were observed in the meta-analysis using the stringent condition were selected. Additionally, a receiver operating characteristic (ROC) analysis was conducted on external datasets to validate the discriminatory power of the identified genes. Based on the results of an inverse variance weighted meta-analysis of the AUCs across both human and mouse cohorts, GABRD and PHACTR1 were identified as the most robust candidates and were selected as key biomarkers for HD. Our comprehensive methodology, which integrates DEG meta-analysis with ML techniques, enabled a systematic prioritization of these biomarkers, providing valuable insights into their biological significance and potential for further validation in clinical research.
URI
https://scholar.dgist.ac.kr/handle/20.500.11750/59040
DOI
10.3390/app15158286
Publisher
MDPI
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