Literature DB >> 32342702

A novel machine learning unsupervised algorithm for sleep/wake identification using actigraphy.

Xinyue Li1,2, Yunting Zhang2,3, Fan Jiang3,4, Hongyu Zhao5,6.   

Abstract

Actigraphy is widely used in sleep studies but lacks a universal unsupervised algorithm for sleep/wake identification. An unsupervised algorithm is useful in large-scale population studies and in cases where polysomnography (PSG) is unavailable, as it does not require sleep outcome labels to train the model but utilizes information solely contained in actigraphy to learn sleep and wake characteristics and separate the two states. In this study, we proposed a machine learning unsupervised algorithm based on the Hidden Markov Model (HMM) for sleep/wake identification. The proposed algorithm is also an individualized approach that takes into account individual variabilities and analyzes each individual actigraphy profile separately to infer sleep and wake states. We used Actiwatch and PSG data from 43 individuals in the Multi-Ethnic Study of Atherosclerosis study to evaluate the method performance. Epoch-by-epoch comparisons and sleep variable comparisons were made between our algorithm, the unsupervised algorithm embedded in the Actiwatch software (AS), and the pre-trained supervised UCSD algorithm. Using PSG as the reference, the accuracy was 85.7% for HMM, 84.7% for AS, and 85.0% for UCSD. The sensitivity was 99.3%, 99.7%, and 98.9% for HMM, AS, and UCSD, respectively, and the specificity was 36.4%, 30.0%, and 31.7%, respectively. The Kappa statistic was 0.446 for HMM, 0.399 for AS, and 0.311 for UCSD, suggesting fair to moderate agreement between PSG and actigraphy. The Bland-Altman plots further show that the total sleep time, sleep latency, and sleep efficiency estimates by HMM were closer to PSG with narrower 95% limits of agreement than AS and UCSD. All three methods tend to overestimate sleep and underestimate wake compared to PSG. Our HMM approach is also able to differentiate relatively active and sedentary individuals by quantifying variabilities in activity counts: individuals with higher estimated activity variabilities tend to show more frequent sedentary behaviors. Our unsupervised data-driven HMM algorithm achieved better performance than the commonly used Actiwatch software algorithm and the pre-trained UCSD algorithm. HMM can help expand the application of actigraphy in cases where PSG is hard to acquire and supervised methods cannot be trained. In addition, the estimated HMM parameters can characterize individual activity patterns and sedentary tendencies that can be further utilized in downstream analysis.

Entities:  

Keywords:  Actigraphy; Hidden Markov Model; accelerometer; pattern recognition; rest-activity circadian rhythm; sleep detection; unsupervised algorithm

Mesh:

Year:  2020        PMID: 32342702     DOI: 10.1080/07420528.2020.1754848

Source DB:  PubMed          Journal:  Chronobiol Int        ISSN: 0742-0528            Impact factor:   2.877


  5 in total

1.  Epidemiology of accelerometer-based sleep parameters in US school-aged children and adults: NHANES 2011-2014.

Authors:  Shaoyong Su; Xinyue Li; Yanyan Xu; William V McCall; Xiaoling Wang
Journal:  Sci Rep       Date:  2022-05-10       Impact factor: 4.996

2.  Automated feature extraction from population wearable device data identified novel loci associated with sleep and circadian rhythms.

Authors:  Xinyue Li; Hongyu Zhao
Journal:  PLoS Genet       Date:  2020-10-19       Impact factor: 5.917

Review 3.  Quality Evaluation of Free-living Validation Studies for the Assessment of 24-Hour Physical Behavior in Adults via Wearables: Systematic Review.

Authors:  Marco Giurgiu; Irina Timm; Marlissa Becker; Steffen Schmidt; Kathrin Wunsch; Rebecca Nissen; Denis Davidovski; Johannes B J Bussmann; Claudio R Nigg; Markus Reichert; Ulrich W Ebner-Priemer; Alexander Woll; Birte von Haaren-Mack
Journal:  JMIR Mhealth Uhealth       Date:  2022-06-09       Impact factor: 4.947

4.  Wearable Device Heart Rate and Activity Data in an Unsupervised Approach to Personalized Sleep Monitoring: Algorithm Validation.

Authors:  Jiaxing Liu; Yang Zhao; Boya Lai; Hailiang Wang; Kwok Leung Tsui
Journal:  JMIR Mhealth Uhealth       Date:  2020-08-05       Impact factor: 4.773

Review 5.  The Dilemma of Analyzing Physical Activity and Sedentary Behavior with Wrist Accelerometer Data: Challenges and Opportunities.

Authors:  Zan Gao; Wenxi Liu; Daniel J McDonough; Nan Zeng; Jung Eun Lee
Journal:  J Clin Med       Date:  2021-12-18       Impact factor: 4.241

  5 in total

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