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跑步机运动试验的机器学习以改善冠心病检测的选择。

Machine learning of treadmill exercise test to improve selection for testing for coronary artery disease.

机构信息

Division of Cardiology, Department of Internal Medicine, Taipei Veterans General Hospital, Taipei, Taiwan.

Advanced Tech BU, Acer Incorporated, New Taipei, Taiwan.

出版信息

Atherosclerosis. 2022 Jan;340:23-27. doi: 10.1016/j.atherosclerosis.2021.11.028. Epub 2021 Nov 30.

Abstract

BACKGROUND AND AIMS

The high false-positive rate of the treadmill exercise test (TET) may lead to unnecessary invasive coronary angiography. We aimed to develop a machine learning-based algorithm to improve the diagnostic performance of TET.

METHODS

Study included 2325 patients who underwent TET and subsequent coronary angiography within one-year interval. The mean age was 58.7 (48.1-69.3) years, 1731 (74.5%) were male, 1858 (79.9%) had positive TET result, and 812 (34.9%) had obstructive coronary artery disease (≥70% stenosis in at least one vessel). The study population were randomly divided into training (70%) and testing (30%) groups for algorithm development. A total of 93 features, including exercise performance, hemodynamics and ST-segment changes were extracted from the TET results. Clinical features included comorbidity, smoking, height, weight, and Framingham risk score. Support vector machine, logistic regression, random forest, k-nearest neighbor and extreme gradient boosting machine learning algorithms were used to build the predictive models. The performance of each model was compared with that of conventional TET.

RESULTS

Four of the five models exhibited comparable diagnostic performance and were better than conventional TET. The random forest algorithm had an area under the curve (AUC) of 0.73. When used with clinical features, the AUC improved to 0.74. The major advantage of the algorithm is the reduction of the false-positive rate compared with conventional TET (55% vs. 76.3%, respectively), while maintaining comparable sensitivity (85%).

CONCLUSIONS

Using the information obtained from conventional TET, a more accurate diagnosis can be made by incorporating an artificial intelligence-based model.

摘要

背景与目的

平板运动试验(TET)的高假阳性率可能导致不必要的有创冠状动脉造影。本研究旨在开发一种基于机器学习的算法来提高 TET 的诊断性能。

方法

本研究纳入了 2325 例在一年内接受 TET 检查和随后冠状动脉造影的患者。平均年龄为 58.7(48.1-69.3)岁,1731 例(74.5%)为男性,1858 例(79.9%)TET 阳性结果,812 例(34.9%)存在阻塞性冠状动脉疾病(至少一支血管≥70%狭窄)。研究人群被随机分为训练(70%)和测试(30%)组以开发算法。从 TET 结果中提取了 93 个特征,包括运动表现、血液动力学和 ST 段变化。临床特征包括合并症、吸烟、身高、体重和弗莱明翰风险评分。支持向量机、逻辑回归、随机森林、k-最近邻和极端梯度提升机器学习算法被用于构建预测模型。比较了每个模型的性能与传统 TET 的性能。

结果

五种模型中的四种具有可比的诊断性能,且优于传统 TET。随机森林算法的曲线下面积(AUC)为 0.73。当与临床特征联合使用时,AUC 提高至 0.74。该算法的主要优势是与传统 TET 相比降低了假阳性率(分别为 55%和 76.3%),同时保持了相当的敏感性(85%)。

结论

使用传统 TET 获得的信息,通过纳入基于人工智能的模型,可以做出更准确的诊断。

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