Division of Vascular Surgery, Department of Surgery, Stanford University School of Medicine, Stanford, CA, USA.
Department of Medicine, Primary Care and Population Health, Stanford, CA, USA.
Sci Rep. 2022 Aug 3;12(1):13364. doi: 10.1038/s41598-022-17180-5.
Peripheral artery disease (PAD) is a common cardiovascular disorder that is frequently underdiagnosed, which can lead to poorer outcomes due to lower rates of medical optimization. We aimed to develop an automated tool to identify undiagnosed PAD and evaluate physician acceptance of a dashboard representation of risk assessment. Data were derived from electronic health records (EHR). We developed and compared traditional risk score models to novel machine learning models. For usability testing, primary and specialty care physicians were recruited and interviewed until thematic saturation. Data from 3168 patients with PAD and 16,863 controls were utilized. Results showed a deep learning model that utilized time engineered features outperformed random forest and traditional logistic regression models (average AUCs 0.96, 0.91 and 0.81, respectively), P < 0.0001. Of interviewed physicians, 75% were receptive to an EHR-based automated PAD model. Feedback emphasized workflow optimization, including integrating risk assessments directly into the EHR, using dashboard designs that minimize clicks, and providing risk assessments for clinically complex patients. In conclusion, we demonstrate that EHR-based machine learning models can accurately detect risk of PAD and that physicians are receptive to automated risk detection for PAD. Future research aims to prospectively validate model performance and impact on patient outcomes.
外周动脉疾病(PAD)是一种常见的心血管疾病,常常被漏诊,这可能会导致治疗效果不佳,因为医疗优化的比例较低。我们旨在开发一种自动工具来识别未确诊的 PAD,并评估医生对风险评估仪表板表示形式的接受程度。数据来自电子健康记录(EHR)。我们开发并比较了传统风险评分模型与新型机器学习模型。为了进行可用性测试,我们招募了初级保健医生和专科医生进行访谈,直到主题饱和。使用了 3168 名 PAD 患者和 16863 名对照者的数据。结果表明,利用时间工程特征的深度学习模型优于随机森林和传统逻辑回归模型(平均 AUC 分别为 0.96、0.91 和 0.81,P<0.0001)。接受访谈的医生中,有 75%的人愿意接受基于 EHR 的自动 PAD 模型。反馈强调了工作流程的优化,包括将风险评估直接整合到 EHR 中,使用最小化点击次数的仪表板设计,并为临床复杂患者提供风险评估。总之,我们证明了基于 EHR 的机器学习模型可以准确检测 PAD 的风险,并且医生愿意接受 PAD 的自动风险检测。未来的研究旨在前瞻性验证模型性能及其对患者结局的影响。