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Cardiovascular/stroke risk prevention: A new machine learning framework integrating carotid ultrasound image-based phenotypes and its harmonics with conventional risk factors

机译:心血管/行程风险预防:一种新的机器学习框架与常规风险因素相结合的基于颈动脉超声图像的表型及其谐波

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摘要

Machine learning (ML)-based stroke risk stratification systems have typically focused on conventional risk factors (CRF) (AtheroRisk-conventional). Besides CRF, carotid ultrasound image phenotypes (CUSIP) have shown to be powerful phenotypes risk stratification. This is the first ML study of its kind that integrates CUSIP and CRF for risk stratification (AtheroRisk-integrated) and compares against AtheroRisk-conventional.
机译:基于机器学习(ML)的行程风险分层系统通常集中在常规风险因素(CRF)(Atherorisk-vertence)上。除了CRF,颈动脉超声图像表型(CUSIP)已显示出强大的表型风险分层。这是第一毫升研究其类型,其集成了CUSIP和CRF的风险分层(Atherorisk-Integrated)并与动脉率传统进行比较。

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