Your browser doesn't support javascript.
loading
Imputing missing sleep data from wearables with neural networks in real-world settings.
Lee, Minki P; Hoang, Kien; Park, Sungkyu; Song, Yun Min; Joo, Eun Yeon; Chang, Won; Kim, Jee Hyun; Kim, Jae Kyoung.
Affiliation
  • Lee MP; Department of Mathematics, University of Michigan, Ann Arbor, MI, USA.
  • Hoang K; Institute of Mathematics, EPFL, Lausanne, Switzerland.
  • Park S; Department of Artificial Intelligence Convergence, Kangwon National University, Chuncheon, Republic of Korea.
  • Song YM; Department of Mathematical Sciences, KAIST, Daejeon, Republic of Korea.
  • Joo EY; Biomedical Mathematics Group, Institute for Basic Science, Daejeon, Republic of Korea.
  • Chang W; Department of Neurology, Neuroscience Center, Samsung Biomedical Research Institute, Samsung Medical Center, Sungkyunkwan University School of Medicine, Seoul, Republic of Korea.
  • Kim JH; Department of Mathematical Sciences, University of Cincinnati, Cincinnati, OH, USA.
  • Kim JK; Department of Neurology, Ewha Womans University Seoul Hospital, Ewha Womans University College of Medicine, Seoul, Republic of Korea.
Sleep ; 47(1)2024 01 11.
Article in En | MEDLINE | ID: mdl-37819273
Sleep is a critical component of health and well-being but collecting and analyzing accurate longitudinal sleep data can be challenging, especially outside of laboratory settings. We propose a simple neural network model titled SOMNI (Sleep data restOration using Machine learning and Non-negative matrix factorIzation [NMF]) for imputing missing rest-activity data from actigraphy, which can enable clinicians to better handle missing data and monitor sleep-wake cycles of individuals with highly irregular sleep-wake patterns. The model consists of two hidden layers and uses NMF to capture hidden longitudinal sleep-wake patterns of individuals with disturbed sleep-wake cycles. Based on this, we develop two approaches: the individual approach imputes missing data based on the data from only one participant, while the global approach imputes missing data based on the data across multiple participants. Our models are tested with shift and non-shift workers' data from three independent hospitals. Both approaches can accurately impute missing data up to 24 hours of long dataset (>50 days) even for shift workers with extremely irregular sleep-wake patterns (AUC > 0.86). On the other hand, for short dataset (~15 days), only the global model is accurate (AUC > 0.77). Our approach can be used to help clinicians monitor sleep-wake cycles of patients with sleep disorders outside of laboratory settings without relying on sleep diaries, ultimately improving sleep health outcomes.
Subject(s)
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Sleep Disorders, Circadian Rhythm / Wearable Electronic Devices Type of study: Prognostic_studies Limits: Humans Language: En Journal: Sleep Year: 2024 Document type: Article Affiliation country: United States Country of publication: United States

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Sleep Disorders, Circadian Rhythm / Wearable Electronic Devices Type of study: Prognostic_studies Limits: Humans Language: En Journal: Sleep Year: 2024 Document type: Article Affiliation country: United States Country of publication: United States