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首页> 外文期刊>Journal of medical systems >New automated detection method of OSA based on artificial neural networks using P-wave shape and time changes.
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New automated detection method of OSA based on artificial neural networks using P-wave shape and time changes.

机译:基于P波形状和时间变化的基于人工神经网络的OSA自动检测新方法。

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This paper describes a new method for automatic detection of obstructive sleep apnea (OSA) based on artificial neural networks (ANN) using regular electrocardiogram (ECG) recordings. ECG signals were pre-processed and segmented to extract the P-waves; then three P-wave features were extracted: the P-wave duration (T ( p )), the P-wave dispersion (P ( d )), and the time interval from the peak of the P-wave to the R-wave (T ( pr )). Combinations of the three features were used as features for classification using ANN. For each feature combination studied, 70% of the input data was used for training the ANN, 15% for validating, and 15% for testing the results. Perfect agreement between expert's scores and the ANN scores was achieved when the ANN was applied on T ( p ), P ( d ), and T ( pr ) taken together, while substantial agreements were achieved when applying the ANN on the feature combinations T ( p ) and P ( d ), and T ( p ) and T ( pr ).
机译:本文介绍了一种使用常规心电图(ECG)记录的基于人工神经网络(ANN)的自动检测阻塞性睡眠呼吸暂停(OSA)的新方法。对ECG信号进行预处理和分段以提取P波;然后提取三个P波特征:P波持续时间(T(p)),P波色散(P(d))以及从P波峰值到R波的时间间隔(T(pr))。将这三个特征的组合用作使用ANN进行分类的特征。对于每个研究的特征组合,输入数据的70%用于训练ANN,15%用于验证,而15%用于测试结果。当将ANN一起应用于T(p),P(d)和T(pr)时,专家评分与ANN评分之间达成了完美的一致性,而将ANN应用于特征组合T( p)和P(d),以及T(p)和T(pr)。

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