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首页> 外文期刊>Current atherosclerosis reports. >A Review on Carotid Ultrasound Atherosclerotic Tissue Characterization and Stroke Risk Stratification in Machine Learning Framework
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A Review on Carotid Ultrasound Atherosclerotic Tissue Characterization and Stroke Risk Stratification in Machine Learning Framework

机译:机器学习框架中颈动脉超声动脉粥样硬化组织表征和中风风险分层研究进展

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摘要

Cardiovascular diseases (including stroke and heart attack) are identified as the leading cause of death in today’s world. However, very little is understood about the arterial mechanics of plaque buildup, arterial fibrous cap rupture, and the role of abnormalities of the vasa vasorum. Recently, ultrasonic echogenicity characteristics and morphological characterization of carotid plaque types have been shown to have clinical utility in classification of stroke risks. Furthermore, this characterization supports aggressive and intensive medical therapy as well as procedures, including endarterectomy and stenting. This is the first state-of-the-art review to provide a comprehensive understanding of the field of ultrasonic vascular morphology tissue characterization. This paper presents fundamental and advanced ultrasonic tissue characterization and feature extraction methods for analyzing plaque. Additionally, the paper shows how the risk stratification is achieved using machine learning paradigms. More advanced methods need to be developed which can segment the carotid artery walls into multiple regions such as the bulb region and areas both proximal and distal to the bulb. Furthermore, multimodality imaging is needed for validation of such advanced methods for stroke and cardiovascular risk stratification.
机译:心血管疾病(包括中风和心脏病发作)被确定为当今世界的主要死亡原因。但是,对于斑块堆积,动脉纤维帽破裂和脉管血管异常的作用的动脉力学了解甚少。近来,已显示出超声回声特性和颈动脉斑块类型的形态学表征在中风风险分类中具有临床实用性。此外,该特征支持积极和深入的药物治疗以及包括动脉内膜切除术和支架置入在内的程序。这是第一个提供对超声血管形态学组织表征领域的全面了解的最新技术综述。本文介绍了用于分析牙菌斑的基础和高级超声组织表征以及特征提取方法。此外,本文还展示了如何使用机器学习范式实现风险分层。需要开发更高级的方法,该方法可以将颈动脉壁分成多个区域,例如球茎区域以及球茎近端和远端的区域。此外,需要多模态成像来验证中风和心血管疾病危险分层的这种先进方法。

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