Deep Learning to Estimate Cardiovascular Risk From Chest Radiographs

医学 狼牙棒 弗雷明翰风险评分 风险评估 危险系数 内科学 心肌梗塞 置信区间 疾病 经皮冠状动脉介入治疗 计算机安全 计算机科学
作者
Jakob Weiß,Vineet K. Raghu,Kaavya Paruchuri,Aniket Zinzuwadia,Pradeep Natarajan,Hugo J.W.L. Aerts,Michael T. Lu
出处
期刊:Annals of Internal Medicine [American College of Physicians]
卷期号:177 (4): 409-417
标识
DOI:10.7326/m23-1898
摘要

Guidelines for primary prevention of atherosclerotic cardiovascular disease (ASCVD) recommend a risk calculator (ASCVD risk score) to estimate 10-year risk for major adverse cardiovascular events (MACE). Because the necessary inputs are often missing, complementary approaches for opportunistic risk assessment are desirable.To develop and test a deep-learning model (CXR CVD-Risk) that estimates 10-year risk for MACE from a routine chest radiograph (CXR) and compare its performance with that of the traditional ASCVD risk score for implications for statin eligibility.Risk prediction study.Outpatients potentially eligible for primary cardiovascular prevention.The CXR CVD-Risk model was developed using data from a cancer screening trial. It was externally validated in 8869 outpatients with unknown ASCVD risk because of missing inputs to calculate the ASCVD risk score and in 2132 outpatients with known risk whose ASCVD risk score could be calculated.10-year MACE predicted by CXR CVD-Risk versus the ASCVD risk score.Among 8869 outpatients with unknown ASCVD risk, those with a risk of 7.5% or higher as predicted by CXR CVD-Risk had higher 10-year risk for MACE after adjustment for risk factors (adjusted hazard ratio [HR], 1.73 [95% CI, 1.47 to 2.03]). In the additional 2132 outpatients with known ASCVD risk, CXR CVD-Risk predicted MACE beyond the traditional ASCVD risk score (adjusted HR, 1.88 [CI, 1.24 to 2.85]).Retrospective study design using electronic medical records.On the basis of a single CXR, CXR CVD-Risk predicts 10-year MACE beyond the clinical standard and may help identify individuals at high risk whose ASCVD risk score cannot be calculated because of missing data.None.
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