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Classification of 12-lead ECGs Using Digital Biomarkers and Representation Learning

机译:使用数字生物标志物和代表学习的12个引导国心电图分类

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Background: The 12-lead electrocardiogram (ECG) is a standard tool used in medical practice for identifying cardiac abnormalities. The 2020 PhysioNet/Computing in Cardiology Challenge addresses the topic of automated classification of 12-lead ECG. Methods: Two machine learning strategies were implemented: a feature engineering approach based on the engineering of physiological features (or “digital biomarkers”) and a deep learning approach. Two sets of features were engineered: (1) capturing the interval variation between consecutive heartbeats, commonly called heart rate variability (HRV) measures and (2) using morphological biomarkers (e.g. QT interval, QRS width). A total of 16 HRV and 97 morphological biomarkers were implemented in python for each lead. A random forest (RF) model was trained using 5-fold cross validation to optimize the model hyperparameters. For the deep learning approach, a residual neural network (ResNet) architecture was used. The RF and ResNet were also combined in an ensemble learning (EL). The dataset was divided into 80%-20% stratified training-test sets. Results: on the local test set we achieved a Challenge score of 0.65 using the FE approach, 0.52 using the DL approach and 0.66 using the EL approach. For technical reasons we did not manage to score our models on the Challenge hidden test set.
机译:背景:12引线心电图(ECG)是用于识别心脏异常的医学实践中使用的标准工具。在心脏病学挑战中的2020个物理仪/计算解决了12引导ECG的自动分类主题。方法:实施了两种机器学习策略:基于生理特征(或“数字生物标志物”的工程的特征工程方法和深度学习方法。设计了两组特征:(1)使用形态生物标志物(例如QT间隔,QRS宽度)捕获连续心跳之间的间隔变化,通常称为心率变异性(HRV)测量和(2)。在Python中,共有16个HRV和97个形态生物标志物针对每个铅进行。使用5倍交叉验证培训一个随机森林(RF)模型,以优化模型超参数。对于深度学习方法,使用了残余神经网络(Reset)架构。 RF和RESET还在集合学习(EL)中组合。数据集分为80%-20%分层培训测试集。结果:在本地测试集上,我们使用Fe方法实现了0.65的挑战得分,使用DL方法和0.66使用EL方法。出于技术原因,我们没有设法在挑战隐藏测试集上进行模型。

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