Diagnosis of obstructive sleep apnea in children based on the XGBoost algorithm using nocturnal heart rate and blood oxygen feature.

Pengfei Ye,Han Qin,Xiaojun Zhan, Zhan Wang, Chang Liu, Beibei Song,Yaru Kong,Xinbei Jia,Yuwei Qi,Jie Ji,Li Chang,Xin Ni,Jun Tai

American journal of otolaryngology(2023)

引用 3|浏览9
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摘要
Using heart rate and blood oxygen data as the main features, a machine learning diagnostic model based on the XGBoost algorithm can accurately identify children with OSA at different severities. This diagnostic modality reduces the number of signals and the complexity of the diagnostic process compared to PSG, which could benefit children with suspected OSA who do not have the opportunity to receive a diagnostic PSG and provide a diagnostic priority reference for children awaiting a diagnostic PSG.
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关键词
Artificial intelligence,Children,Computer-aided diagnosis,Machine learning,Obstructive sleep apnea
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