Application of Recurrent Neural Network for the Prediction of Target Non-Apneic Arousal Regions in Physiological Signals

Naimahmed Nesaragi, Shubha Majumder, Ashish Sharma, K. Tavakolian, Shivnarayan Patidar
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引用次数: 3

Abstract

This work presents a new method for detection of target non-apneic arousals by applying a recurrent neural network architecture on the various specified polysomno-graphic (PSG) signals. The proposed two stage architecture uses sequences of instantaneous frequencies and spectral entropies of the chosen PSG signals as feature vectors. At the first stage, these feature vectors are used to train several long-short term memory (LSTM) models. The LSTM networks can learn long-term relationships between time steps of time-frequency based sequences obtained out of physiological signals. As a second stage, some quadratic discriminant (QD) layers are modelled and appended to the trained LSTMs in groups. Subsequently, the outputs of all the QD layers are averaged for making final prediction. The models are trained using features obtained from one minute windows of the signals. However, the decision making on test signals involves inputs of one minute windows with half minute overlapping. When evaluated with 2018 PhysioNet/CinC Challenge dataset, the experimental outcomes demonstrate overall AUROC and AUPRC scores of 0.85±0.10 and 0.50±0.15 respectively for the training data. The generated test results indicate the AUROC and AUPRC scores of 0.624 and 0.10 respectively on a random subset of the test data.
递归神经网络在生理信号中非窒息性唤醒目标区的预测中的应用
这项工作提出了一种新的方法来检测目标非呼吸暂停唤醒应用递归神经网络架构对各种指定的多导睡眠图(PSG)信号。所提出的两级结构使用所选PSG信号的瞬时频率序列和谱熵作为特征向量。在第一阶段,使用这些特征向量来训练几个长短期记忆(LSTM)模型。LSTM网络可以学习生理信号时频序列时间步长之间的长期关系。作为第二阶段,一些二次判别(QD)层被建模并分组附加到训练好的lstm中。随后,对所有QD层的输出进行平均,以进行最终预测。这些模型使用从信号的一分钟窗口中获得的特征进行训练。然而,对测试信号的决策涉及一分钟窗口输入和半分钟重叠。当使用2018年PhysioNet/CinC Challenge数据集进行评估时,实验结果表明,训练数据的总体AUROC和AUPRC得分分别为0.85±0.10和0.50±0.15。生成的测试结果表明,在测试数据的随机子集上,AUROC和AUPRC得分分别为0.624和0.10。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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