Apostolopoulos Ioannis D, Papandrianos Nikolaos I, Apostolopoulos Dimitrios J, Papageorgiou Elpiniki
Department of Energy Systems, University of Thessaly, Gaiopolis Campus, 41500 Larisa, Greece.
Department of Nuclear Medicine, University Hospital of Patras, 26504 Rio, Greece.
Bioengineering (Basel). 2024 Sep 25;11(10):957. doi: 10.3390/bioengineering11100957.
Coronary artery disease (CAD) presents a significant global health burden, with early and accurate diagnostics crucial for effective management and treatment strategies. This study evaluates the efficacy of human evaluators compared to a Random Forest (RF) machine learning model in predicting CAD risk. It investigates the impact of incorporating human clinical judgments into the RF model's predictive capabilities. We recruited 606 patients from the Department of Nuclear Medicine at the University Hospital of Patras, Greece, from 16 February 2018 to 28 February 2022. Clinical data inputs included age, sex, comprehensive cardiovascular history (including prior myocardial infarction and revascularisation), CAD predisposing factors (such as hypertension, dyslipidemia, smoking, diabetes, and peripheral arteriopathy), baseline ECG abnormalities, and symptomatic descriptions ranging from asymptomatic states to angina-like symptoms and dyspnea on exertion. The diagnostic accuracies of human evaluators and the RF model (when trained with datasets inclusive of human judges' assessments) were comparable at 79% and 80.17%, respectively. However, the performance of the RF model notably declined to 73.76% when human clinical judgments were excluded from its training dataset. These results highlight a potential synergistic relationship between human expertise and advanced algorithmic predictions, suggesting a hybrid approach as a promising direction for enhancing CAD diagnostics.
冠状动脉疾病(CAD)是一项重大的全球健康负担,早期准确诊断对于有效的管理和治疗策略至关重要。本研究评估了与随机森林(RF)机器学习模型相比,人工评估者在预测CAD风险方面的效果。研究调查了将人类临床判断纳入RF模型预测能力的影响。我们从希腊帕特雷大学医院核医学科招募了606名患者,时间跨度为2018年2月16日至2022年2月28日。临床数据输入包括年龄、性别、全面的心血管病史(包括既往心肌梗死和血运重建)、CAD易感因素(如高血压、血脂异常、吸烟、糖尿病和外周动脉病)、基线心电图异常,以及从无症状状态到心绞痛样症状和劳力性呼吸困难的症状描述。人工评估者和RF模型(在使用包含人工判断评估的数据集进行训练时)的诊断准确率分别为79%和80.17%,二者相当。然而,当从其训练数据集中排除人类临床判断时,RF模型的性能显著下降至73.76%。这些结果凸显了人类专业知识与先进算法预测之间潜在的协同关系,表明混合方法是增强CAD诊断的一个有前景的方向。