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Evaluating Convolutional and Recurrent Neural Network Architectures for Respiratory-Effort Related Arousal Detection During Sleep

机译:评估卷积神经网络和递归神经网络体系结构,以进行睡眠期间与呼吸努力相关的唤醒检测

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This work evaluates the performance of convolutional and recurrent neural networks on the task of detecting Respiratory Effort-Related Arousals (RERAs). Feature time-series were extracted from EEG, EOG, CHIN, CHEST, ABDOMINAL, AIRFLOW, SaO2, and ECG and normalized on a per-subject basis. Next, multi-timescale windows from these time-series were associated with the presence or absence of RERA during the window forming the data for model training. More than 1 million RERA-windows and 17 million no-arousal windows were used for model training, and more than 200K RERA-windows and 4 million no-arousal windows were used for testing and validation. Google Cloud ML Engine was used to select model hyperparameters using the validation data. The model with the best hyperparameter combination evaluated on the test set achieved an AUC-ROC score of 0.916 and AUC-PR score 0.573.
机译:这项工作评估了卷积和经常性神经网络对检测呼吸努力相关的震荡(RERAS)的任务的表现。特征时间序列从脑电图,Eog,下巴,胸部,腹部,气流,SAO2和ECG中提取,并按照受试者标准化。接下来,来自这些时间序列的多时间尺度窗口与在形成模型训练数据的窗口期间与RARA的存在或缺席相关联。超过100万RERA-Windows和1700万无唤醒窗口用于模型培训,而且超过200k rera-Windows和400万无唤醒窗口用于测试和验证。 Google Cloud ML引擎用于使用验证数据选择Model Hyper参数。在测试集上评估了最佳的高参数组合的模型实现了0.916和AUC-PR评分0.573的AUC-ROC得分。

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