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Fully Convolutional Deep Neural Networks with Optimized Hyperparameters for Detection of Shockable and Non-Shockable Rhythms

机译:具有优化超参数的全卷积深度神经网络用于检测可电击和不可电击的节律

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摘要

Deep neural networks (DNN) are state-of-the-art machine learning algorithms that can be learned to self-extract significant features of the electrocardiogram (ECG) and can generally provide high-output diagnostic accuracy if subjected to robust training and optimization on large datasets at high computational cost. So far, limited research and optimization of DNNs in shock advisory systems is found on large ECG arrhythmia databases from out-of-hospital cardiac arrests (OHCA). The objective of this study is to optimize the hyperparameters (HPs) of deep convolutional neural networks (CNN) for detection of shockable (Sh) and nonshockable (NSh) rhythms, and to validate the best HP settings for short and long analysis durations (2–10 s). Large numbers of (Sh + NSh) ECG samples were used for training (720 + 3170) and validation (739 + 5921) from Holters and defibrillators in OHCA. An end-to-end deep CNN architecture was implemented with one-lead raw ECG input layer (5 s, 125 Hz, 2.5 uV/LSB), configurable number of 5 to 23 hidden layers and output layer with diagnostic probability ∈ [0: Sh,1: NSh]. The hidden layers contain N convolutional blocks × 3 layers (Conv1D (filters = Fi, kernel size = Ki), max-pooling (pool size = 2), dropout (rate = 0.3)), one global max-pooling and one dense layer. Random search optimization of HPs = {N, Fi, Ki}, i = 1, … N in a large grid of N = [1, 2, … 7], Fi = [5;50], Ki = [5;100] was performed. During training, the model with maximal balanced accuracy BAC = (Sensitivity + Specificity)/2 over 400 epochs was stored. The optimization principle is based on finding the common HPs space of a few top-ranked models and prediction of a robust HP setting by their median value. The optimal models for 1–7 CNN layers were trained with different learning rates LR = [10 ; 10 ] and the best model was finally validated on 2–10 s analysis durations. A number of 4216 random search models were trained. The optimal models with more than three convolutional layers did not exhibit substantial differences in performance BAC = (99.31–99.5%). Among them, the best model was found with {N = 5, Fi = {20, 15, 15, 10, 5}, Ki = {10, 10, 10, 10, 10}, 7521 trainable parameters} with maximal validation performance for 5-s analysis (BAC = 99.5%, Se = 99.6%, Sp = 99.4%) and tolerable drop in performance (<2% points) for very short 2-s analysis (BAC = 98.2%, Se = 97.6%, Sp = 98.7%). DNN application in future-generation shock advisory systems can improve the detection performance of Sh and NSh rhythms and can considerably shorten the analysis duration complying with resuscitation guidelines for minimal hands-off pauses.
机译:深度神经网络(DNN)是最先进的机器学习算法,可以学习以自解压心电图(ECG)的重要特征,并且如果经过健壮的训练和优化,通常可以提供高输出诊断准确性大型数据集,计算成本很高。迄今为止,在大型ECG心律失常数据库中,院外心脏骤停(OHCA)发现了休克咨询系统中DNN的有限研究和优化。这项研究的目的是优化深度卷积神经网络(CNN)的超参数(HP),以检测可电击(Sh)和不可电击(NSh)节律,并验证短时间和长分析时间的最佳HP设置(2) –10 s)。在OHCA中,大量(Sh + NSh)ECG样本用于Holters和除颤器的训练(720 + 3170)和验证(739 + 5921)。端到端深度CNN架构采用单引线原始ECG输入层(5 s,125 Hz,2.5 uV / LSB),可配置的5到23个隐藏层以及具有诊断概率∈[0: Sh,1:NSh]。隐藏层包含N个卷积块×3层(Conv1D(过滤器= Fi,内核大小= Ki),最大池化(池大小= 2),滤除(速率= 0.3)),一个全局最大池化和一个密集层。在N = [1,2,…7],Fi = [5; 50],Ki = [5; 100]的大网格中,HPs = {N,Fi,Ki},i = 1,…N的随机搜索优化进行了。在训练期间,存储了在400个历元内具有最大平衡精度BAC =(灵敏度+特异性)/ 2的模型。优化原理基于找到一些排名靠前的模型的公共HP空间,并根据其中值预测稳健的HP设置。针对1–7个CNN层的最佳模型以不同的学习率LR = [10; 10],并在2-10 s的分析持续时间内最终验证了最佳模型。培训了4216个随机搜索模型。具有三个以上卷积层的最优模型在性能上没有表现出实质性差异BAC =(99.31–99.5%)。其中,发现最佳模型的{N = 5,Fi = {20,15,15,10,5},Ki = {10,10,10,10,10},7521可训练参数},具有最佳的验证性能对于5秒分析(BAC = 99.5%,Se = 99.6%,Sp = 99.4%)和非常短的2-s分析(BAC = 98.2%,Se = 97.6%, Sp = 98.7%)。 DNN在下一代电击咨询系统中的应用可以提高Sh和NSh节奏的检测性能,并可以大大缩短分析时间,并符合复苏指南,以最大程度地减少间歇时间。

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