Li Xue, Ono Chiaki, Warita Noriko, Shoji Tomoka, Nakagawa Takashi, Usukura Hitomi, Yu Zhiqian, Takahashi Yuta, Ichiji Kei, Sugita Norihiro, Kobayashi Natsuko, Kikuchi Saya, Kimura Ryoko, Hamaie Yumiko, Hino Mizuki, Kunii Yasuto, Murakami Keiko, Ishikuro Mami, Obara Taku, Nakamura Tomohiro, Nagami Fuji, Takai Takako, Ogishima Soichi, Sugawara Junichi, Hoshiai Tetsuro, Saito Masatoshi, Tamiya Gen, Fuse Nobuo, Fujii Susumu, Nakayama Masaharu, Kuriyama Shinichi, Yamamoto Masayuki, Yaegashi Nobuo, Homma Noriyasu, Tomita Hiroaki
Department of Psychiatry, Tohoku University Graduate School of Medicine, Sendai, Japan.
Department of Psychiatry, Tohoku University Hospital, Sendai, Japan.
Front Psychiatry. 2023 Jun 6;14:1104222. doi: 10.3389/fpsyt.2023.1104222. eCollection 2023.
Perinatal women tend to have difficulties with sleep along with autonomic characteristics. This study aimed to identify a machine learning algorithm capable of achieving high accuracy in predicting sleep-wake conditions and differentiating between the wake conditions before and after sleep during pregnancy based on heart rate variability (HRV).
Nine HRV indicators (features) and sleep-wake conditions of 154 pregnant women were measured for 1 week, from the 23rd to the 32nd weeks of pregnancy. Ten machine learning and three deep learning methods were applied to predict three types of sleep-wake conditions (wake, shallow sleep, and deep sleep). In addition, the prediction of four conditions, in which the wake conditions before and after sleep were differentiated-shallow sleep, deep sleep, and the two types of wake conditions-was also tested.
In the test for predicting three types of sleep-wake conditions, most of the algorithms, except for Naïve Bayes, showed higher areas under the curve (AUCs; 0.82-0.88) and accuracy (0.78-0.81). The test using four types of sleep-wake conditions with differentiation between the wake conditions before and after sleep also resulted in successful prediction by the gated recurrent unit with the highest AUC (0.86) and accuracy (0.79). Among the nine features, seven made major contributions to predicting sleep-wake conditions. Among the seven features, "the number of interval differences of successive RR intervals greater than 50 ms (NN50)" and "the proportion dividing NN50 by the total number of RR intervals (pNN50)" were useful to predict sleep-wake conditions unique to pregnancy. These findings suggest alterations in the vagal tone system specific to pregnancy.
围产期女性往往存在睡眠问题,并伴有自主神经特征。本研究旨在确定一种机器学习算法,该算法能够基于心率变异性(HRV)在预测睡眠-觉醒状态以及区分孕期睡眠前后的觉醒状态方面实现高精度。
在怀孕第23至32周期间,对154名孕妇的9项HRV指标(特征)和睡眠-觉醒状态进行了为期1周的测量。应用了10种机器学习方法和3种深度学习方法来预测三种睡眠-觉醒状态(觉醒、浅睡眠和深睡眠)。此外,还测试了对四种状态的预测,即区分睡眠前后觉醒状态的浅睡眠、深睡眠以及两种觉醒状态。
在预测三种睡眠-觉醒状态的测试中,除朴素贝叶斯外,大多数算法的曲线下面积(AUCs;0.82 - 0.88)和准确率(0.78 - 0.81)更高。使用区分睡眠前后觉醒状态的四种睡眠-觉醒状态进行的测试也通过门控循环单元成功实现了预测,其AUC最高(0.86),准确率为(0.79)。在这9项特征中,有7项对预测睡眠-觉醒状态起主要作用。在这7项特征中,“连续RR间期差值大于50毫秒的间期数量(NN50)”和“NN50除以RR间期总数的比例(pNN50)”对于预测孕期特有的睡眠-觉醒状态很有用。这些发现表明孕期迷走神经张力系统存在改变。