Sleep Research Unit, The Royal's Institute of Mental Health Research, 1145 Carling Avenue, Ottawa, ON, K1Z 7K4, Canada.
Department of Cellular and Molecular Medicine, University of Ottawa, 451 Smyth Road, Ottawa, ON, K1H 8M5, Canada.
BMC Psychiatry. 2019 Jun 7;19(1):168. doi: 10.1186/s12888-019-2152-1.
Abnormalities in heart rate during sleep linked to impaired neuro-cardiac modulation may provide new information about physiological sleep signatures of depression. This study assessed the validity of an algorithm using patterns of heart rate changes during sleep to discriminate between individuals with depression and healthy controls.
A heart rate profiling algorithm was modeled using machine-learning based on 1203 polysomnograms from individuals with depression referred to a sleep clinic for the assessment of sleep abnormalities, including insomnia, excessive daytime fatigue, and sleep-related breathing disturbances (n = 664) and mentally healthy controls (n = 529). The final algorithm was tested on a distinct sample (n = 174) to categorize each individual as depressed or not depressed. The resulting categorizations were compared to medical record diagnoses.
The algorithm had an overall classification accuracy of 79.9% [sensitivity: 82.8, 95% CI (0.73-0.89), specificity: 77.0, 95% CI (0.67-0.85)]. The algorithm remained highly sensitive across subgroups stratified by age, sex, depression severity, comorbid psychiatric illness, cardiovascular disease, and smoking status.
Sleep-derived heart rate patterns could act as an objective biomarker of depression, at least when it co-occurs with sleep disturbances, and may serve as a complimentary objective diagnostic tool. These findings highlight the extent to which some autonomic functions are impaired in individuals with depression, which warrants further investigation about potential underlying mechanisms.
睡眠期间心率异常与神经心脏调节受损有关,可能为抑郁症的生理睡眠特征提供新信息。本研究评估了一种使用睡眠期间心率变化模式来区分抑郁症患者和健康对照者的算法的有效性。
使用基于机器学习的方法对心率分析算法进行建模,该方法基于 1203 名被转诊至睡眠诊所评估睡眠异常(包括失眠、白天过度疲劳和与睡眠相关的呼吸障碍)的抑郁症患者(n=664)和心理健康对照者(n=529)的多导睡眠图。最终的算法在一个独立的样本(n=174)上进行了测试,以将每个个体归类为抑郁或非抑郁。将得出的分类结果与医疗记录诊断进行比较。
该算法的总体分类准确率为 79.9%[灵敏度:82.8%,95%CI(0.73-0.89),特异性:77.0%,95%CI(0.67-0.85)]。该算法在按年龄、性别、抑郁严重程度、合并精神疾病、心血管疾病和吸烟状况分层的亚组中保持高度敏感。
睡眠衍生的心率模式可以作为抑郁症的客观生物标志物,至少当它与睡眠障碍同时存在时,并且可以作为一种补充的客观诊断工具。这些发现强调了一些自主功能在抑郁症患者中受损的程度,这需要进一步研究潜在的机制。