卷积递归神经网络与LightGBM集成模型在12导联心电图分类中的应用

Charilaos A. Zisou, Andreas Sochopoulos, Konstantinos Kitsios
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引用次数: 6

摘要

心电信号的自动异常检测是一个极具挑战性的课题,具有很高的研究价值和商业价值。它可以为早期和准确诊断提供一种具有成本效益和可获得的工具,从而增加成功治疗的机会。在这项研究中,提出了一个识别24种心脏异常类型的集成分类器,作为2020年物理网络/心脏病学计算挑战的一部分。集成模型由一个能够自动学习深度特征的卷积循环神经网络和LightGBM组成,LightGBM是一个依赖于手工设计的专家特征的梯度增强机器。单个模型使用特定于类的权重和阈值进行组合,这些权重和阈值由遗传算法进行调整。在整个训练集上进行5次交叉验证的结果显示,挑战度量为0.593,优于两个单独的模型。在全隐藏测试集上,“AUTh团队”提出的架构得分为0.281,官方排名为13/41。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Convolutional Recurrent Neural Network and LightGBM Ensemble Model for 12-lead ECG Classification
Automatic abnormality detection of ECG signals is a challenging topic of great research and commercial interest. It can provide a cost-effective and accessible tool for early and accurate diagnosis, which increases the chances of successful treatment. In this study, an ensemble classifier that identifies 24 types of cardiac abnormalities is proposed, as part of the PhysioNet/Computing in Cardiology Challenge 2020. The ensemble model consists of a convolutional recurrent neural network that is able to automatically learn deep features, and LightGBM, a gradient boosting machine that relies on hand-engineered expert features. The individual models are combined using class-specific weights and thresholds, which are tuned by a genetic algorithm. Results from 5-fold cross validation on the full training set, report the Challenge metric of 0.593 that outperforms both individual models. On the full hidden test set, the proposed architecture by “AUTh Team” achieves a score of 0.281 with an official ranking of 13/41.
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