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Optimization of sleep apnea detection using SpO2 and ANN

机译:使用SpO2和ANN优化睡眠呼吸暂停检测

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摘要

Repetitive respiratory disturbance during sleep is called Sleep Apnea Hypopnea Syndrome and causes various diseases. Different features and classifiers have been used by different researchers to detect sleep apnea. This study is undertaken to identify the better performing blood oxygen saturation features subset using an Artificial Neural Network classifier for sleep Apnea detection. A database of 8 subjects with one-minute annotation is used to test the proposed system. The optimized system has seven features chosen from a total set of sixty-one features presenting a high accuracy rate using a genetic algorithm. Artificial Neural Network was able to achieve 97.7 percentage of accuracy with only seven features chosen by the Genetic algorithm.
机译:睡眠过程中反复出现的呼吸障碍被称为睡眠呼吸暂停低通气综合症,并引起多种疾病。不同的研究人员已使用不同的功能和分类器来检测睡眠呼吸暂停。使用人工神经网络分类器进行睡眠呼吸暂停检测来确定性能更好的血氧饱和度特征子集。具有一分钟注释的8个主题的数据库用于测试所提出的系统。经过优化的系统具有21种特征,其中有7种特征可以通过遗传算法从中获得较高的准确率。人工神经网络通过遗传算法仅选择了7个功能,就能达到97.7%的准确率。

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