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利用可穿戴设备数据进行昼夜节律分析:新型惩罚机器学习方法

Circadian Rhythm Analysis Using Wearable Device Data: Novel Penalized Machine Learning Approach.

作者信息

Li Xinyue, Kane Michael, Zhang Yunting, Sun Wanqi, Song Yuanjin, Dong Shumei, Lin Qingmin, Zhu Qi, Jiang Fan, Zhao Hongyu

机构信息

School of Data Science, City University of Hong Kong, Hong Kong, China (Hong Kong).

Child Health Advocacy Institute, Shanghai Children's Medical Center, Shanghai Jiao Tong University School of Medicine, Shanghai, China.

出版信息

J Med Internet Res. 2021 Oct 14;23(10):e18403. doi: 10.2196/18403.

Abstract

BACKGROUND

Wearable devices have been widely used in clinical studies to study daily activity patterns, but the analysis remains a major obstacle for researchers.

OBJECTIVE

This study proposes a novel method to characterize sleep-activity rhythms using actigraphy and further use it to describe early childhood daily rhythm formation and examine its association with physical development.

METHODS

We developed a machine learning-based Penalized Multiband Learning (PML) algorithm to sequentially infer dominant periodicities based on the Fast Fourier Transform (FFT) algorithm and further characterize daily rhythms. We implemented and applied the algorithm to Actiwatch data collected from a cohort of 262 healthy infants at ages 6, 12, 18, and 24 months, with 159, 101, 111, and 141 participants at each time point, respectively. Autocorrelation analysis and Fisher test in harmonic analysis with Bonferroni correction were applied for comparison with the PML. The association between activity rhythm features and early childhood motor development, assessed using the Peabody Developmental Motor Scales-Second Edition (PDMS-2), was studied through linear regression analysis.

RESULTS

The PML results showed that 1-day periodicity was most dominant at 6 and 12 months, whereas one-day, one-third-day, and half-day periodicities were most dominant at 18 and 24 months. These periodicities were all significant in the Fisher test, with one-fourth-day periodicity also significant at 12 months. Autocorrelation effectively detected 1-day periodicity but not the other periodicities. At 6 months, PDMS-2 was associated with the assessment seasons. At 12 months, PDMS-2 was associated with the assessment seasons and FFT signals at one-third-day periodicity (P<.001) and half-day periodicity (P=.04), respectively. In particular, the subcategories of stationary, locomotion, and gross motor were associated with the FFT signals at one-third-day periodicity (P<.001).

CONCLUSIONS

The proposed PML algorithm can effectively conduct circadian rhythm analysis using time-series wearable device data. The application of the method effectively characterized sleep-wake rhythm development and identified the association between daily rhythm formation and motor development during early childhood.

摘要

背景

可穿戴设备已广泛应用于临床研究以研究日常活动模式,但分析仍然是研究人员面临的主要障碍。

目的

本研究提出一种使用活动记录仪来表征睡眠 - 活动节律的新方法,并进一步用它来描述幼儿期的日常节律形成,并检验其与身体发育的关联。

方法

我们开发了一种基于机器学习的惩罚多波段学习(PML)算法,以基于快速傅里叶变换(FFT)算法顺序推断主导周期,并进一步表征日常节律。我们将该算法实现并应用于从262名6、12、18和24个月大的健康婴儿队列收集的活动记录仪数据,每个时间点分别有159、101、111和141名参与者。应用自相关分析以及经Bonferroni校正的谐波分析中的Fisher检验与PML进行比较。通过线性回归分析研究使用皮博迪发育运动量表第二版(PDMS - 2)评估的活动节律特征与幼儿运动发育之间的关联。

结果

PML结果显示,1天周期在6个月和12个月时最为主导,而1天、1/3天和半天周期在18个月和24个月时最为主导。这些周期在Fisher检验中均具有显著性,1/4天周期在12个月时也具有显著性。自相关有效地检测到了1天周期,但未检测到其他周期。在6个月时,PDMS - 2与评估季节相关。在12个月时,PDMS - 2分别与评估季节以及1/3天周期(P <.001)和半天周期(P =.04)的FFT信号相关。特别是,静止、运动和大运动的子类别与1/3天周期的FFT信号相关(P <.001)。

结论

所提出的PML算法能够使用时间序列可穿戴设备数据有效地进行昼夜节律分析。该方法的应用有效地表征了睡眠 - 觉醒节律的发展,并确定了幼儿期日常节律形成与运动发育之间的关联。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/922d/8554674/6866c5d1382d/jmir_v23i10e18403_fig1.jpg

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