Schwartz Alan R, Cohen-Zion Mairav, Pham Luu V, Gal Amit, Sowho Mudiaga, Sgambati Francis P, Klopfer Tracy, Guzman Michelle A, Hawks Erin M, Etzioni Tamar, Glasner Laura, Druckman Eran, Pillar Giora
Johns Hopkins Sleep Disorders Center, Baltimore, MD, USA; Johns Hopkins Center for Interdisciplinary Sleep Research and Education, Baltimore, MD, USA(1); University of Pennsylvania Perelman School of Medicine, USA.
The Academic College of Tel Aviv-Jaffa, Tel Aviv, Israel; DayZz Live Well Ltd, Herzeliya, Israel.
Sleep Med. 2020 Jul;71:66-76. doi: 10.1016/j.sleep.2020.03.005. Epub 2020 Mar 23.
We developed and validated an abbreviated Digital Sleep Questionnaire (DSQ) to identify common societal sleep disturbances including insomnia, delayed sleep phase syndrome (DSPS), insufficient sleep syndrome (ISS), and risk for obstructive sleep apnea (OSA).
The DSQ was administered to 3799 community volunteers, of which 2113 were eligible and consented to the study. Of those, 247 were interviewed by expert sleep physicians, who diagnosed ≤2 sleep disorders. Machine Learning (ML) trained and validated separate models for each diagnosis. Regularized linear models generated 15-200 features to optimize diagnostic prediction. Models were trained with five-fold cross-validation (repeated five times), followed by robust validation testing. ElasticNet models were used to classify true positives and negatives; bootstrapping optimized probability thresholds to generate sensitivities, specificities, accuracies, and area under the receiver operating curve (AUC).
Compared to reference subgroups, physician-diagnosed sleep disorders were marked by DSQ evidence of sleeplessness (insomnia, DSPS, OSA), sleep debt (DSPS, ISS), airway obstruction during sleep (OSA), blunted circadian variability in alertness (DSPS), sleepiness (DSPS and ISS), increased alertness (insomnia) and global impairment in sleep-related quality of life (all sleep disorders). ElasticNet models validated each diagnosis with high sensitivity (80-83%), acceptable specificity (63-69%), high AUC (0.80-0.85) and good accuracy (agreement with physician diagnoses, 68-73%).
A brief DSQ readily engaged and efficiently screened a large population for common sleep disorders. Powered by ML, the DSQ can accurately classify sleep disturbances, demonstrating the potential for improving the sleep, health, productivity and safety of populations.
我们开发并验证了一种简化的数字睡眠问卷(DSQ),以识别常见的社会睡眠障碍,包括失眠、睡眠相位延迟综合征(DSPS)、睡眠不足综合征(ISS)和阻塞性睡眠呼吸暂停(OSA)风险。
对3799名社区志愿者进行了DSQ问卷调查,其中2113名符合条件并同意参与研究。在这些人中,247人接受了睡眠专家医生的访谈,医生诊断出≤2种睡眠障碍。机器学习(ML)针对每种诊断训练并验证了单独的模型。正则化线性模型生成了15 - 200个特征,以优化诊断预测。模型采用五折交叉验证(重复五次)进行训练,随后进行稳健的验证测试。使用弹性网络模型对真阳性和真阴性进行分类;通过自助法优化概率阈值,以生成敏感性、特异性、准确性和受试者工作特征曲线下面积(AUC)。
与参考亚组相比,医生诊断出的睡眠障碍的特征在于DSQ显示出失眠(失眠、DSPS、OSA)、睡眠债(DSPS、ISS)、睡眠期间气道阻塞(OSA)、警觉性昼夜节律变钝(DSPS)、嗜睡(DSPS和ISS)、警觉性增加(失眠)以及睡眠相关生活质量的整体受损(所有睡眠障碍)的证据。弹性网络模型以高敏感性(80 - 83%)、可接受的特异性(63 - 69%)、高AUC(0.80 - 0.85)和良好的准确性(与医生诊断的一致性为68 - 73%)验证了每种诊断。
简短的DSQ能够轻松地对大量人群进行常见睡眠障碍的有效筛查。借助机器学习的支持,DSQ可以准确地对睡眠障碍进行分类,显示出改善人群睡眠、健康、生产力和安全性的潜力。