What goes on when the lights go off? Using machine learning techniques to characterize a child's settling down period.

Frontiers in network physiology Pub Date : 2025-05-30 eCollection Date: 2025-01-01 DOI:10.3389/fnetp.2025.1519407
Deniz Kocanaogullari, Murat Akcakaya, Roxanna Bendixen, Adriane M Soehner, Amy G Hartman
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Abstract

Objectives: Current approaches to objective measurement of sleep disturbances in children overlook the period prior to sleep, or the settling down time. Using machine learning techniques, we identified key features that characterize differences in activity during the settling down period that differentiate children with sensory sensitivities to tactile input (SS) and children without sensitivities (NSS).

Methods: Actigraphy data were collected from children with SS (n = 17) and children with NSS (n = 18) over 2 weeks (a total of 430 evenings). The settling down period, indicated using caregiver report and actigraphy indices, was isolated each evening and seven features (mean magnitude, maximum magnitude, kurtosis, skewness, Shannon entropy, standard deviation, and interquartile range) were extracted. 10-fold cross-validation with random forests were used to determine accuracy, sensitivity, and specificity of differentiating groups.

Results: We could accurately differentiate groups (accuracy = 83%, specificity = 83%, sensitivity = 84%). Feature importance maps identify that children with SS have higher maximum bouts of activity (U = -2.23, p = 0.026) during the settling down time and a higher variance in activity for the children with SS (e.g., interquartile range, Shannon entropy) that sets them apart from their peers.

Conclusion: We present a novel use of machine learning techniques that successfully uncovered differentiating features within the settling down period for our groups. These differences have been difficult to capture using standard sleep and rest-activity metrics. Our data suggests that activity during the settling down period may be a unique target for future research for children with SS.

灯灭了之后会发生什么?使用机器学习技术来描述孩子的安定期。
目的:目前对儿童睡眠障碍的客观测量方法忽略了睡眠前的时间或稳定时间。使用机器学习技术,我们确定了在稳定期间表征活动差异的关键特征,这些特征区分了对触觉输入有感觉敏感性(SS)的儿童和没有敏感性(NSS)的儿童。方法:收集SS患儿(n = 17)和NSS患儿(n = 18) 2周(共430晚)的活动记录仪数据。根据护理者报告和活动指数,每天晚上分离平静期,提取7个特征(平均幅度、最大幅度、峰度、偏度、香农熵、标准差和四分位数范围)。采用随机森林的10倍交叉验证来确定区分组的准确性、敏感性和特异性。结果:该方法能准确地鉴别各组,准确率为83%,特异性为83%,灵敏度为84%。特征重要性图表明,患有孤独症的儿童在安定时间内具有更高的最大活动次数(U = -2.23, p = 0.026),患有孤独症的儿童在活动方面具有更高的方差(例如,四分位数范围,香农熵),这使他们与同龄人区别开来。结论:我们提出了一种新的机器学习技术,成功地揭示了我们群体在定居期间的差异特征。这些差异很难用标准的睡眠和休息活动指标来捕捉。我们的数据表明,安定期的活动可能是未来研究SS儿童的一个独特目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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