首页> 外文期刊>Computer Methods and Programs in Biomedicine: An International Journal Devoted to the Development, Implementation and Exchange of Computing Methodology and Software Systems in Biomedical Research and Medical Practice >PCA-based polling strategy in machine learning framework for coronary artery disease risk assessment in intravascular ultrasound: A link between carotid and coronary grayscale plaque morphology
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PCA-based polling strategy in machine learning framework for coronary artery disease risk assessment in intravascular ultrasound: A link between carotid and coronary grayscale plaque morphology

机译:机器学习框架中基于PCA的轮询策略在血管内超声中评估冠状动脉疾病风险:颈动脉和冠状动脉灰斑形态之间的联系

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摘要

Background and objective: Percutaneous coronary interventional procedures need advance planning prior to stenting or an endarterectomy. Cardiologists use intravascular ultrasound (IVUS) for screening, risk assessment and stratification of coronary artery disease (CAD). We hypothesize that plaque components are vulnerable to rupture due to plaque progression. Currently, there are no standard grayscale IVUS tools for risk assessment of plaque rupture. This paper presents a novel strategy for risk stratification based on plaque morphology embedded with principal component analysis (PCA) for plaque feature dimensionality reduction and dominant feature selection technique. The risk assessment utilizes 56 grayscale coronary features in a machine learning framework while linking information from carotid and coronary plaque burdens due to their common genetic makeup.
机译:背景与目的:经皮冠状动脉介入手术需要在置入支架或进行动脉内膜切除术之前进行预先计划。心脏科医生使用血管内超声(IVUS)进行筛查,风险评估和冠状动脉疾病(CAD)分层。我们假设,由于斑块进展,斑块成分容易破裂。当前,尚无用于评估斑块破裂风险的标准灰度IVUS工具。本文提出了一种新的风险分层策略,该策略基于斑块形态并嵌入主成分分析(PCA)来减少斑块特征维数和优势特征选择技术。风险评估利用机器学习框架中的56个灰度冠状动脉特征,同时将来自颈动脉和冠状动脉斑块负担的信息(由于其常见的基因组成)链接在一起。

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