» Articles » PMID: 38454353

Unlocking Potential Biomarkers Bridging Coronary Atherosclerosis and Pyrimidine Metabolism-associated Genes Through an Integrated Bioinformatics and Machine Learning Approach

Overview
Authors
Affiliations
Soon will be listed here.
Abstract

Background: This study delves into the intricate landscape of atherosclerosis (AS), a chronic inflammatory disorder with significant implications for cardiovascular health. AS poses a considerable burden on global healthcare systems, elevating both mortality and morbidity rates. The pathological underpinnings of AS involve a marked metabolic disequilibrium, particularly within pyrimidine metabolism (PyM), a crucial enzymatic network central to nucleotide synthesis and degradation. While the therapeutic relevance of pyrimidine metabolism in diverse diseases is acknowledged, the explicit role of pyrimidine metabolism genes (PyMGs) in the context of AS remains elusive. Utilizing bioinformatics methodologies, this investigation aims to reveal and substantiate PyMGs intricately linked with AS.

Methods: A set of 41 candidate PyMGs was scrutinized through differential expression analysis. GSEA and GSVA were employed to illuminate potential biological pathways and functions associated with the identified PyMGs. Simultaneously, Lasso regression and SVM-RFE were utilized to distill core genes and assess the diagnostic potential of four quintessential PyMGs (CMPK1, CMPK2, NT5C2, RRM1) in discriminating AS. The relationship between key PyMGs and clinical presentations was also explored. Validation of the expression levels of the four PyMGs was performed using the GSE43292 and GSE9820 datasets.

Results: This investigation identified four PyMGs, with NT5C2 and RRM1 emerging as key players, intricately linked to AS pathogenesis. Functional analysis underscored their critical involvement in metabolic processes, including pyrimidine-containing compound metabolism and nucleotide biosynthesis. Diagnostic evaluation of these PyMGs in distinguishing AS showcased promising results.

Conclusion: In conclusion, this exploration has illuminated a constellation of four PyMGs with a potential nexus to AS pathogenesis. These findings unveil emerging biomarkers, paving the way for novel approaches to disease monitoring and progression, and providing new avenues for therapeutic intervention in the realm of atherosclerosis.

Citing Articles

Molecular modelling and antimicrobial activity of newly synthesized benzothiazolo[3,2-]pyrimidine clubbed thiazole derivatives.

Alharbi A, Alalawy A, Alsharif S, Alqahtani A, Alessa A, Alsahag M Heliyon. 2024; 10(19):e38905.

PMID: 39435077 PMC: 11492252. DOI: 10.1016/j.heliyon.2024.e38905.

References
1.
Mukherjee S, Kar A, Paul P, Dey S, Biswas A, Barik S . Integration of Transcriptome and Interactome Predicts an ETP-ALL-Specific Transcriptional Footprint that Decodes its Developmental Propensity. Front Cell Dev Biol. 2022; 10:899752. PMC: 9138408. DOI: 10.3389/fcell.2022.899752. View

2.
Furio-Tari P, Tarazona S, Gabaldon T, Enright A, Conesa A . spongeScan: A web for detecting microRNA binding elements in lncRNA sequences. Nucleic Acids Res. 2016; 44(W1):W176-80. PMC: 4987953. DOI: 10.1093/nar/gkw443. View

3.
Yang Y, Yi X, Cai Y, Zhang Y, Xu Z . Immune-Associated Gene Signatures and Subtypes to Predict the Progression of Atherosclerotic Plaques Based on Machine Learning. Front Pharmacol. 2022; 13:865624. PMC: 9086243. DOI: 10.3389/fphar.2022.865624. View

4.
Song K, Li L, Sun G, Wei Y . MicroRNA-381 regulates the occurrence and immune responses of coronary atherosclerosis via cyclooxygenase-2. Exp Ther Med. 2018; 15(5):4557-4563. PMC: 5920484. DOI: 10.3892/etm.2018.5947. View

5.
Yoon H, Lee S . Fatty Acid Metabolism in Ovarian Cancer: Therapeutic Implications. Int J Mol Sci. 2022; 23(4). PMC: 8874779. DOI: 10.3390/ijms23042170. View