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Near real-time single-beat myocardial infarction detection from single-lead electrocardiogram using Long Short-Term Memory Neural Network

机译:使用长短短期记忆神经网络从单引灯心电图近实时单次击败心肌梗死检测

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摘要

This study proposes a novel Long Short-Term Memory Neural Network (LSTM) architecture for the diagnosis of myocardial infarctions from individual heartbeats of single-lead electrocardiograms (ECGs). The proposed model is trained using an unbiased patient split approach and validated using 10-fold cross-validation over 148 myocardial infarction and 52 Healthy Control patients from the Physikalisch-Technische Bundesanstalt diagnostic ECG Database to generate an inter-patient classifier. We further demonstrate why special care must be taken when generating the training and testing datasets by exploring the effects of various data-split techniques that could mask the occurrence of overfitting and produce misleadingly high testing metrics of the model's performance. A thorough assessment of these results is provided using several standard metrics for different data split methods to show their tendency to overfitting, data leakage, and bias introduced from previously seen heart beats during the training phase. The design achieves near real-time diagnosis of 40 ms while providing an accuracy of 89.56% (with a 95% Confidence Interval (CI) of +/- 2.79%), recall/sensitivity of 91.88% (+/- 3.13% 95% CI), and a specificity of 80.81% (+/- 9.62% 95%CI). The fast processing makes the model readily deployable on currently existing mobile devices and testing instruments. The achieved performance makes the proposed method a new research direction for attaining real-time and unbiased diagnosis. While, the modular architectural design of the LSTM network structure, which is amenable for the inclusion of other ECG leads, could serve as a platform for early detection of myocardial infarction and for the planning of early treatment(s).
机译:本研究提出了一种新的长期短期记忆神经网络(LSTM)架构,用于诊断单引出心电图(ECGS)的个体心跳心肌梗塞的诊断。拟议的模型采用无偏见的患者分裂方法培训,并使用10倍的交叉验证验证超过148个心肌梗死和52名健康对照患者,来自Physikalisch-Technische Bundesanstalt诊断ECG数据库产生患者间分类器。我们进一步展示了通过探索各种数据分割技术的效果来生成培训和测试数据集时,必须特别注意可能掩盖过度拟合的发生并产生模型性能的误整性高测试度量。使用几种标准度量来提供对这些结果的全面评估,用于不同的数据分离方法,以显示他们在训练阶段期间从先前看到的心跳引入的过度拟合,数据泄漏和偏差的趋势。该设计在40毫秒的实时诊断附近实现了89.56%的准确度(具有+/- 2.79%的95%置信区间(CI)),召回/敏感性为91.88%(+/- 3.13%95% CI),特异性为80.81%(+/- 9.62%95%CI)。快速处理使模型在当前现有的移动设备和测试仪器上易于部署。实现的性能使得提出的方法是实现实时和无偏诊断的新研究方向。虽然,LSTM网络结构的模块化建筑设计,可用于包含其他ECG引线,可以作为早期检测心肌梗死和早期治疗计划的平台。

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