Ye Pengfei, Qin Han, Zhan Xiaojun, Wang Zhan, Liu Chang, Song Beibei, Kong Yaru, Jia Xinbei, Qi Yuwei, Ji Jie, Chang Li, Ni Xin, Tai Jun
Department of Otolaryngology, Head and Neck Surgery, Children's Hospital Capital Institute of Pediatrics, Beijing 100020, China.
Department of Otolaryngology, Head and Neck Surgery, Beijing Children's Hospital, Capital Medical University, National Center for Children's Health, China, 100045.
Am J Otolaryngol. 2023 Mar-Apr;44(2):103714. doi: 10.1016/j.amjoto.2022.103714. Epub 2022 Dec 1.
Obstructive sleep apnea (OSA) is a serious type of obstructive sleep-disordered breathing (SDB) that can cause a series of adverse effects on children's cardiovascular, growth, cognition, etc. The gold standard for diagnosis is polysomnography (PGS), which is used to assess the prevalence of OSA by obtaining the apnea-hypopnea index (AHI), but this diagnosis method is expensive and needs to be performed in a specialized laboratory, making it difficult to be of benefit to children with suspected OSA on a large scale. Our goal was to use a machine learning method to identify children with OSA of varying severity using data on children's nighttime heart rate and blood oxygen data.
This study included 3139 children who received diagnostic PSG with suspected OSA. Age, sex, BMI, 3 % oxygen depletion index (ODI), average nighttime heart rate and fastest heart rate were used as predictive features. Data sets were established with AHI ≥ 1, AHI ≥ 5, and AHI ≥ 10 as the diagnostic criteria for mild, moderate and severe OSA, and the samples of each data set were randomly divided into a training set and a test set at a ratio of 8:2. An OSA diagnostic model was established based on the XGBoost algorithm, and the ability of the machine learning model to diagnose OSA children with different severities was evaluated through different classification ability evaluation indicators. As a comparison, traditional classifier Logistic Regression was used to perform the same diagnostic task. The SHAP algorithm was used to evaluate the role of these features in the classification task.
We established a diagnostic model of OSA in children based on the XGBoost algorithm. On the test set, the AUCs of the model for diagnosing mild, moderate, and severe OSA were 0.95, 0.88, and 0.88, respectively, and the classification accuracy was 90.45 %, 85.67 %, and 89.81 %, respectively, perform better than Logistic Regression classifiers. ODI is the most important feature in all classification tasks, and a higher fastest heart rate and ODI make the model tend to classify samples as positive. A high BMI value caused the model to tend to classify samples as positive in the mild and moderate classification tasks and as negative in the classification task with severe OSA.
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.
阻塞性睡眠呼吸暂停(OSA)是一种严重的阻塞性睡眠呼吸障碍(SDB),可对儿童的心血管、生长发育、认知等造成一系列不良影响。诊断的金标准是多导睡眠图(PGS),通过获取呼吸暂停低通气指数(AHI)来评估OSA的患病率,但这种诊断方法费用高昂,且需要在专门的实验室进行,难以大规模惠及疑似OSA的儿童。我们的目标是使用机器学习方法,利用儿童夜间心率和血氧数据识别不同严重程度的OSA儿童。
本研究纳入3139名接受疑似OSA诊断性PSG检查的儿童。将年龄、性别、体重指数(BMI)、3%氧减指数(ODI)、夜间平均心率和最快心率作为预测特征。以AHI≥1、AHI≥5和AHI≥10作为轻度、中度和重度OSA的诊断标准建立数据集,每个数据集的样本按8:2的比例随机分为训练集和测试集。基于XGBoost算法建立OSA诊断模型,并通过不同的分类能力评估指标评估机器学习模型对不同严重程度OSA儿童的诊断能力。作为对比,使用传统分类器逻辑回归进行相同的诊断任务。使用SHAP算法评估这些特征在分类任务中的作用。
我们基于XGBoost算法建立了儿童OSA诊断模型。在测试集上,该模型诊断轻度、中度和重度OSA的曲线下面积(AUC)分别为0.95、0.88和0.88,分类准确率分别为90.45%、85.67%和89.81%,优于逻辑回归分类器。ODI是所有分类任务中最重要的特征,较高的最快心率和ODI使模型倾向于将样本分类为阳性。高BMI值导致模型在轻度和中度分类任务中倾向于将样本分类为阳性,而在重度OSA分类任务中倾向于将样本分类为阴性。
以心率和血氧数据为主要特征,基于XGBoost算法的机器学习诊断模型能够准确识别不同严重程度的OSA儿童。与PSG相比,这种诊断方式减少了信号数量和诊断过程的复杂性,可为没有机会接受诊断性PSG的疑似OSA儿童带来益处,并为等待诊断性PSG的儿童提供诊断优先级参考。