随机森林
睡眠(系统调用)
多导睡眠图
计算机科学
决策树
睡眠阶段
人工智能
精确性和召回率
召回
机器学习
树(集合论)
F1得分
统计
脑电图
医学
心理学
数学
认知心理学
数学分析
精神科
操作系统
作者
Recep Sinan Arslan,Hasan Ulutaş,Ahmet Sertol Köksal,Mehmet Bakır,Bülent Çiftçi
标识
DOI:10.1016/j.compbiomed.2022.105653
摘要
Sleep staging is one of the most important parts of sleep assessment and it has an important role in early diagnosis and intervention of sleep disorders. Manual sleep staging requires a specialist and time which can be affected by subjective factors. So that, automatic sleep-scoring method with high accuracy is beneficial. In this work 50 patients sleep data taken from 19 sensors of Philips Alice clinic polysomnography (PSG) device. There is an average of 4772801 data for each individual in a single channel, and approximately 87 million data is processed in 19 channels. Due to the large amount of data, after under sampling technique, dataset is created and Random Forest, Extra Trees and Decision Tree classifiers are applied on it. Although accuracy values vary from one person to another, average of 95.258% for Extra Trees, 95.17% for Random Forest and 91.318% for Decision Tree obtained. Furthermore, precision, recall and F1-score values were also 0.95362, 0.95258 and 0.94568 on average. Beyond the previous works in the area of sleep stage scoring, proposed work differentiated from them by having own database, providing higher accuracy and employing 19 channels. The results showed that the proposed work may alleviate the burden of sleep doctors and speed up sleep scoring.
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