Position: Evaluation of ECG Representations Must Be Fixed
AI 摘要
该论文指出心电图表征学习的基准测试需要改进,并提出了新的评估方法。
主要贡献
- 批评现有心电图表征学习的基准测试方法
- 提出更全面的评估指标,包括结构性心脏病和患者预测
- 发现随机初始化编码器在线性评估中表现优异
方法论
对现有基准测试数据集进行评估,并引入新的数据集和评估指标进行实验分析。
原文摘要
This position paper argues that current benchmarking practice in 12-lead ECG representation learning must be fixed to ensure progress is reliable and aligned with clinically meaningful objectives. The field has largely converged on three public multi-label benchmarks (PTB-XL, CPSC2018, CSN) dominated by arrhythmia and waveform-morphology labels, even though the ECG is known to encode substantially broader clinical information. We argue that downstream evaluation should expand to include an assessment of structural heart disease and patient-level forecasting, in addition to other evolving ECG-related endpoints, as relevant clinical targets. Next, we outline evaluation best practices for multi-label, imbalanced settings, and show that when they are applied, the literature's current conclusion about which representations perform best is altered. Furthermore, we demonstrate the surprising result that a randomly initialized encoder with linear evaluation matches state-of-the-art pre-training on many tasks. This motivates the use of a random encoder as a reasonable baseline model. We substantiate our observations with an empirical evaluation of three representative ECG pre-training approaches across six evaluation settings: the three standard benchmarks, a structural disease dataset, hemodynamic inference, and patient forecasting.