基于人工智能模型和电子病历的无症状颈动脉狭窄患者临床决策支持

IF 2.4 4区 医学 Q2 CARDIAC & CARDIOVASCULAR SYSTEMS
Mackenzie Madison, Xiao Luo, Jackson Silvey, Robert Brenner, Kartik Gannamaneni, Alan P Sawchuk
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引用次数: 0

摘要

对电子病历(emr)进行人工智能(AI)分析,分析出现症状性疾病的颈动脉狭窄患者与无症状患者之间的差异。用AI分析了2009年至2022年间接受颈动脉内膜切除术的872例患者的emr。这包括408例因症状性颈动脉疾病而进行颈动脉干预的患者和464例无症状、bb0 70%狭窄的患者。通过分析emr,支持向量机在预测这些患者中哪些会继续发展为中风或TIA方面达到了0.626的最高灵敏度。随机森林的特异性最高,为0.906。颈动脉狭窄患者卒中的风险是最佳药物治疗和潜在疾病过程之间的平衡。发生症状性颈动脉疾病的危险因素包括血糖升高、慢性肾病、高脂血症和当前或近期吸烟,而保护因素包括心血管药物、抗高血压药物和受体阻滞剂。emr的人工智能回顾可以帮助确定哪些颈动脉狭窄患者更有可能发生卒中,以协助决策是否继续进行干预或通过危险因素修改来证明和鼓励降低卒中风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clinical Decision Support for Patient Cases with Asymptomatic Carotid Artery Stenosis Using AI Models and Electronic Medical Records.

An artificial intelligence (AI) analysis of electronic medical records (EMRs) was performed to analyze the differences between patients with carotid stenosis who developed symptomatic disease and those who remained asymptomatic. The EMRs of 872 patients who underwent a carotid endarterectomy between 2009 and 2022 were analyzed with AI. This included 408 patients who had carotid intervention for symptomatic carotid disease and 464 patients for asymptomatic, >70% stenosis. By analyzing the EMRs, the Support Vector Machine achieved the highest sensitivity at 0.626 for predicting which of these patients would go on to develop a stroke or TIA. Random Forest had the highest specificity at 0.906. The risk for stroke in patients with carotid stenosis was a balance between optimum medical treatment and the underlying disease processes. Risk factors for developing symptomatic carotid disease included elevated glucose, chronic kidney disease, hyperlipidemia, and current or recent smoking, while protective factors included cardiovascular agents, antihypertensives, and beta blockers. An AI review of EMRs can help determine which patients with carotid stenosis are more likely to develop a stroke to assist with decision making as to whether to proceed with intervention or to demonstrate and encourage reduced stroke risk with risk factor modification.

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来源期刊
Journal of Cardiovascular Development and Disease
Journal of Cardiovascular Development and Disease CARDIAC & CARDIOVASCULAR SYSTEMS-
CiteScore
2.60
自引率
12.50%
发文量
381
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