Litcius/Paper detail

Atherosclerotic plaque vulnerability quantification system for clinical and biological interpretability

Ge Zhang, Xiaolin Cui, Zhenpeng Qin, Zeyu Wang, Yongzheng Lu, Yanyan Xu, Shuai Xu, Laiyi Tang, Li Zhang, Gangqiong Liu, Xiaofang Wang, Jinying Zhang, Junnan Tang

2023iScience18 citationsDOIOpen Access PDF

Abstract

Acute myocardial infarction dominates coronary artery disease mortality. Identifying bio-signatures for plaque destabilization and rupture is important for preventing the transition from coronary stability to instability and the occurrence of thrombosis events. This computational systems biology study enrolled 2,235 samples from 22 independent bulks cohorts and 14 samples from two single-cell cohorts. A machine-learning integrative program containing nine learners was developed to generate a warning classifier linked to atherosclerotic plaque vulnerability signature (APVS). The classifier displays the reliable performance and robustness for distinguishing ST-elevation myocardial infarction from chronic coronary syndrome at presentation, and revealed higher accuracy to 33 pathogenic biomarkers. We also developed an APVS-based quantification system (APVSLevel) for comprehensively quantifying atherosclerotic plaque vulnerability, empowering early-warning capabilities, and accurate assessment of atherosclerosis severity. It unraveled the multidimensional dysregulated mechanisms at high resolution. This study provides a potential tool for macro-level differential diagnosis and evaluation of subtle genetic pathological changes in atherosclerosis.

Topics & Concepts

Myocardial infarctionInterpretabilityAcute coronary syndromeVulnerable plaqueCoronary artery diseaseMedicineCardiologyInternal medicinePathologicalComputer scienceArtificial intelligenceAtherosclerosis and Cardiovascular DiseasesLipoproteins and Cardiovascular HealthComputational Drug Discovery Methods