首页> 外文期刊>Journal of clinical sleep medicine: JCSM : official publication of the American Academy of Sleep Medicine >A Novel Artificial Neural Network Based Sleep-Disordered Breathing Screening Tool
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A Novel Artificial Neural Network Based Sleep-Disordered Breathing Screening Tool

机译:基于新型人工神经网络的睡眠呼吸筛查工具

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Study Objectives:This study evaluated a novel artificial neural network (ANN) based sleep-disordered breathing (SDB) screening tool incorporating nocturnal pulse oximetry with demographic, anatomic, and clinical data. The tool was compatible with 6 categories of apnea-hypopnea index (AHI) with 4% oxyhemoglobin desaturation threshold, 5, 10, 15, 20, 25, and 30 events/h.Methods:Using a general population dataset, the training set included 2,280 subjects, whereas the test set included 470 subjects. The input of this tool was a set of 22 variables. The tool had six neural network models for each AHI threshold. Several metrics were explored to evaluate the performance of the tool: area under the receiver operating characteristic curve (AUC), sensitivity, specificity, positive predictive value, negative predictive value, and 95% confidence interval (CI).Results:The AUC was 0.904, 0.912, 0.913, 0.926, 0.930, and 0.954, respectively, with models of AHI 5, 10, 15, 20, 25, and 30 events/h thresholds. The sensitivities of all neural network models were higher than 95%. The AHI 30 events/h model had the maximum sensitivity: 98.31% (95% CI: 95.01%100%).Conclusions:The results of this study suggested that the ANN based SDB screening tool can be used to identify the presence or absence of SDB. Future validation should be performed in other populations to determine the practicability of this screening tool in sleep clinics and other at-risk populations.
机译:研究目的:本研究评估了一种基于新型人工神经网络(ANN)的睡眠呼吸障碍(SDB)筛查工具,该工具结合了夜间脉搏血氧饱和度与人口统计学,解剖学和临床数据。该工具可与6种类别的呼吸暂停低通气指数(AHI)兼容,氧合血红蛋白饱和度阈值为4、5、10、15、20、25和30事件/小时。方法:使用一般人群数据集,包括训练集2,280名受试者,而测试集包括470名受试者。该工具的输入是一组22个变量。对于每个AHI阈值,该工具都有六个神经网络模型。探索了几个指标来评估该工具的性能:接收器工作特征曲线(AUC)下的面积,灵敏度,特异性,正预测值,负预测值和95%置信区间(CI)。结果:AUC为0.904 ,AHI 5、10、15、20、25和30个事件/小时阈值的模型分别为0.912、0.913、0.926、0.930和0.954。所有神经网络模型的敏感性均高于95%。 AHI 30事件/小时模型的最高灵敏度为98.31%(95%CI:95.01%100%)。结论:本研究结果表明,基于ANN的SDB筛选工具可用于识别是否存在AHI深圳发展银行。将来应在其他人群中进行验证,以确定该筛查工具在睡眠诊所和其他高危人群中的实用性。

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