Sleep Medical Center, Beijing Anzhen Hospital, Capital Medical University, Beijing, China.
Department of Cardiology, Beijing Anzhen Hospital, Capital Medical University, Beijing, China.
Sleep Breath. 2023 Dec;27(6):2379-2388. doi: 10.1007/s11325-023-02846-9. Epub 2023 Jun 6.
The diagnosis of obstructive sleep apnea (OSA) relies on time-consuming and complicated procedures which are not always readily available and may delay diagnosis. With the widespread use of artificial intelligence, we presumed that the combination of simple clinical information and imaging recognition based on facial photos may be a useful tool to screen for OSA.
We recruited consecutive subjects suspected of OSA who had received sleep examination and photographing. Sixty-eight points from 2-dimensional facial photos were labelled by automated identification. An optimized model with facial features and basic clinical information was established and tenfold cross-validation was performed. Area under the receiver operating characteristic curve (AUC) indicated the model's performance using sleep monitoring as the reference standard.
A total of 653 subjects (77.2% males, 55.3% OSA) were analyzed. CATBOOST was the most suitable algorithm for OSA classification with a sensitivity, specificity, accuracy, and AUC of 0.75, 0.66, 0.71, and 0.76 respectively (P < 0.05), which was better than STOP-Bang questionnaire, NoSAS scores, and Epworth scale. Witnessed apnea by sleep partner was the most powerful variable, followed by body mass index, neck circumference, facial parameters, and hypertension. The model's performance became more robust with a sensitivity of 0.94, for patients with frequent supine sleep apnea.
The findings suggest that craniofacial features extracted from 2-dimensional frontal photos, especially in the mandibular segment, have the potential to become predictors of OSA in the Chinese population. Machine learning-derived automatic recognition may facilitate the self-help screening for OSA in a quick, radiation-free, and repeatable manner.
阻塞性睡眠呼吸暂停(OSA)的诊断依赖于耗时且复杂的程序,这些程序并不总是易于获得,并且可能会延迟诊断。随着人工智能的广泛应用,我们推测将简单的临床信息与基于面部照片的图像识别相结合可能是一种有用的工具,可以用于 OSA 的筛查。
我们招募了连续接受睡眠检查和拍照的疑似 OSA 患者。2 维面部照片的 68 个点由自动识别标记。建立了基于面部特征和基本临床信息的优化模型,并进行了 10 倍交叉验证。使用睡眠监测作为参考标准,通过接收者操作特征曲线下的面积(AUC)来表示模型的性能。
共分析了 653 名患者(77.2%为男性,55.3%为 OSA)。CATBOOST 是用于 OSA 分类的最合适算法,其敏感性、特异性、准确性和 AUC 分别为 0.75、0.66、0.71 和 0.76(P<0.05),优于 STOP-Bang 问卷、NoSAS 评分和 Epworth 量表。睡眠伴侣见证的呼吸暂停是最有力的变量,其次是体重指数、颈围、面部参数和高血压。对于经常仰卧位睡眠呼吸暂停的患者,该模型的性能更加稳健,敏感性为 0.94。
研究结果表明,从 2 维正面照片中提取的头面部特征,尤其是下颌段,具有成为中国人群中 OSA 预测指标的潜力。基于机器学习的自动识别可能有助于以快速、无辐射和可重复的方式自助筛查 OSA。