Bergquist Jake A, Zenger Brian, Brundage James, MacLeod Rob S, Bunch T Jared, Shah Rashmee, Ye Xiangyang, Lyons Ann, Ranjan Ravi, Tasdizen Tolga, Steinberg Benjamin A
medRxiv. 2023 Jun 12:2023.06.10.23291237. doi: 10.1101/2023.06.10.23291237.
Artificial intelligence - machine learning (AI-ML) is a computational technique that has been demonstrated to be able to extract meaningful clinical information from diagnostic data that are not available using either human interpretation or more simple analysis methods. Recent developments have shown that AI-ML approaches applied to ECGs can accurately predict different patient characteristics and pathologies not detectable by expert physician readers. There is an extensive body of literature surrounding the use of AI-ML in other fields, which has given rise to an array of predefined open-source AI-ML architectures which can be translated to new problems in an "off-the-shelf" manner. Applying "off-the-shelf" AI-ML architectures to ECG-based datasets opens the door for rapid development and identification of previously unknown disease biomarkers. Despite the excellent opportunity, the ideal open-source AI-ML architecture for ECG related problems is not known. Furthermore, there has been limited investigation on how and when these AI-ML approaches fail and possible bias or disparities associated with particular network architectures. In this study, we aimed to: (1) determine if open-source, "off-the-shelf" AI-ML architectures could be trained to classify low LVEF from ECGs, (2) assess the accuracy of different AI-ML architectures compared to each other, and (3) to identify which, if any, patient characteristics are associated with poor AI-ML performance.
人工智能-机器学习(AI-ML)是一种计算技术,已被证明能够从诊断数据中提取有意义的临床信息,而这些信息无法通过人工解读或更简单的分析方法获得。最近的进展表明,应用于心电图的AI-ML方法可以准确预测专家医生读者无法检测到的不同患者特征和病理情况。围绕AI-ML在其他领域的应用有大量文献,这催生了一系列预定义的开源AI-ML架构,这些架构可以“现成”地应用于新问题。将“现成”的AI-ML架构应用于基于心电图的数据集为快速开发和识别以前未知的疾病生物标志物打开了大门。尽管有绝佳的机会,但尚不清楚用于心电图相关问题的理想开源AI-ML架构。此外,关于这些AI-ML方法如何以及何时失败以及与特定网络架构相关的可能偏差或差异的研究有限。在本研究中,我们旨在:(1)确定是否可以训练开源的“现成”AI-ML架构从心电图中分类低左心室射血分数,(2)评估不同AI-ML架构相互比较的准确性,以及(3)确定哪些患者特征(如果有的话)与AI-ML性能不佳相关。