Back to Search Start Over

Tissue-Specific Methylation Biosignatures for Monitoring Diseases: An In Silico Approach

Authors :
Makrina Karaglani
Maria Panagopoulou
Ismini Baltsavia
Paraskevi Apalaki
Theodosis Theodosiou
Ioannis Iliopoulos
Ioannis Tsamardinos
Ekaterini Chatzaki
Source :
International Journal of Molecular Sciences; Volume 23; Issue 6; Pages: 2959
Publication Year :
2022
Publisher :
MDPI AG, 2022.

Abstract

Tissue-specific gene methylation events are key to the pathogenesis of several diseases and can be utilized for diagnosis and monitoring. Here, we established an in silico pipeline to analyze high-throughput methylome datasets to identify specific methylation fingerprints in three pathological entities of major burden, i.e., breast cancer (BrCa), osteoarthritis (OA) and diabetes mellitus (DM). Differential methylation analysis was conducted to compare tissues/cells related to the pathology and different types of healthy tissues, revealing Differentially Methylated Genes (DMGs). Highly performing and low feature number biosignatures were built with automated machine learning, including: (1) a five-gene biosignature discriminating BrCa tissue from healthy tissues (AUC 0.987 and precision 0.987), (2) three equivalent OA cartilage-specific biosignatures containing four genes each (AUC 0.978 and precision 0.986) and (3) a four-gene pancreatic β-cell-specific biosignature (AUC 0.984 and precision 0.995). Next, the BrCa biosignature was validated using an independent ccfDNA dataset showing an AUC and precision of 1.000, verifying the biosignature’s applicability in liquid biopsy. Functional and protein interaction prediction analysis revealed that most DMGs identified are involved in pathways known to be related to the studied diseases or pointed to new ones. Overall, our data-driven approach contributes to the maximum exploitation of high-throughput methylome readings, helping to establish specific disease profiles to be applied in clinical practice and to understand human pathology.

Details

ISSN :
14220067
Volume :
23
Database :
OpenAIRE
Journal :
International Journal of Molecular Sciences
Accession number :
edsair.doi.dedup.....d35af177a22d9bdcf5af5530b3f0615a
Full Text :
https://doi.org/10.3390/ijms23062959