The Sleep Disorder Medicine Center of the Second Affiliated Hospital of Fujian Medical University, Quanzhou, 362000, Fujian, China.
The School of Public Health, Fujian Medical University, Fuzhou, 350108, Fujian, China.
Sci Rep. 2024 Aug 26;14(1):19756. doi: 10.1038/s41598-024-70647-5.
Age, gender, body mass index (BMI), and mean heart rate during sleep were found to be risk factors for obstructive sleep apnea (OSA), and a variety of methods have been applied to predict the occurrence of OSA. This study aimed to develop and evaluate OSA prediction models using simple and accessible parameters, combined with multiple machine learning algorithms, and integrate them into a cloud-based mobile sleep medicine management platform for clinical use. The study data were obtained from the clinical records of 610 patients who underwent polysomnography (PSG) at the Sleep Medicine Center of the Second Affiliated Hospital of Fujian Medical University between January 2021 and December 2022. The participants were randomly divided into a training-test group (80%) and an independent validation group (20%). The logistic regression, artificial neural network, naïve Bayes, support vector machine, random forest, and decision tree algorithms were used with age, gender, BMI, and mean heart rate during sleep as predictors to build a risk prediction model for moderate-to-severe OSA. To evaluate the performance of the models, we calculated the area under the receiver operating curve (AUROC), accuracy, recall, specificity, precision, and F1-score for the independent validation set. In addition, the calibration curve, decision curve, and clinical impact curve were generated to determine clinical usefulness. Age, gender, BMI, and mean heart rate during sleep were significantly associated with OSA. The artificial neural network model had the best efficacy compared with the other prediction algorithms. The AUROC, accuracy, recall, specificity, precision, F1-score, and Brier score were 80.4% (95% CI 76.7-84.1%), 69.9% (95% CI 69.8-69.9%), 86.5% (95% CI 81.6-91.3%), 61.5% (95% CI 56.6-66.4%), 53.2% (95% CI 47.7-58.7%), 65.9% (95% CI 60.2-71.5%), and 0.165, respectively, for the artificial neural network model. The AUROCs for the LR, NB, SVM, RF, and DT models were 80.2%, 79.7%, 79.2%, 78.4%, and 70.4%, respectively. The six models based on four simple and easily accessible parameters effectively predicted moderate-to-severe OSA in patients with PSG screening, with the artificial neural network model having the best performance. These models can provide a reliable tool for early OSA diagnosis, and their integration into a cloud-based mobile sleep medicine management platform could improve clinical decision making.
年龄、性别、体重指数(BMI)和睡眠期间的平均心率被发现是阻塞性睡眠呼吸暂停(OSA)的危险因素,已经应用了多种方法来预测 OSA 的发生。本研究旨在开发和评估使用简单易用的参数结合多种机器学习算法的 OSA 预测模型,并将其整合到一个基于云的移动睡眠医学管理平台中,用于临床应用。研究数据来自 2021 年 1 月至 2022 年 12 月期间在福建医科大学第二附属医院睡眠医学中心接受多导睡眠图(PSG)检查的 610 名患者的临床记录。参与者被随机分为训练-测试组(80%)和独立验证组(20%)。使用逻辑回归、人工神经网络、朴素贝叶斯、支持向量机、随机森林和决策树算法,以年龄、性别、BMI 和睡眠期间的平均心率作为预测因子,建立中重度 OSA 的风险预测模型。为了评估模型的性能,我们计算了独立验证集的接收者操作特征曲线(AUROC)下面积、准确性、召回率、特异性、精度、F1 分数。此外,还生成了校准曲线、决策曲线和临床影响曲线,以确定临床实用性。年龄、性别、BMI 和睡眠期间的平均心率与 OSA 显著相关。与其他预测算法相比,人工神经网络模型的效果最好。人工神经网络模型的 AUROC、准确性、召回率、特异性、精度、F1 分数和 Brier 分数分别为 80.4%(95%CI 76.7-84.1%)、69.9%(95%CI 69.8-69.9%)、86.5%(95%CI 81.6-91.3%)、61.5%(95%CI 56.6-66.4%)、53.2%(95%CI 47.7-58.7%)、65.9%(95%CI 60.2-71.5%)和 0.165。LR、NB、SVM、RF 和 DT 模型的 AUROCs 分别为 80.2%、79.7%、79.2%、78.4%和 70.4%。基于四个简单易用的参数的六个模型有效地预测了 PSG 筛查患者的中重度 OSA,人工神经网络模型的性能最佳。这些模型可以为早期 OSA 诊断提供可靠的工具,将其整合到基于云的移动睡眠医学管理平台中可以改善临床决策。