Application of deep learning to improve sleep scoring of wrist actigraphy

التفاصيل البيبلوغرافية
العنوان: Application of deep learning to improve sleep scoring of wrist actigraphy
المؤلفون: Kenneth R. Diller, Shahab Haghayegh, Michael H. Smolensky, Sepideh Khoshnevis
المصدر: Sleep Medicine. 74:235-241
بيانات النشر: Elsevier BV, 2020.
سنة النشر: 2020
مصطلحات موضوعية: Adult, medicine.medical_specialty, Polysomnography, Audiology, Electroencephalography, 03 medical and health sciences, Deep Learning, 0302 clinical medicine, medicine, Humans, Mathematics, medicine.diagnostic_test, business.industry, Deep learning, Actigraphy, General Medicine, Wrist, Sleep scoring, 030228 respiratory system, Female, Sleep (system call), Sleep onset latency, Artificial intelligence, Sleep onset, Sleep, business, 030217 neurology & neurosurgery, Kappa
الوصف: Background Estimation of sleep parameters by wrist actigraphy is highly dependent on performance of the interpretative algorithm (IA) that converts movement data into sleep/wake scores. Research questions (1) Does the actigraphy mode of operation -Proportional Integrating Measure (PIM) or Zero Crossing Mode (ZCM), responsive respectively to intensity and frequency of movements- impact sleep scoring; and (2) Can a better performing sleep scoring IA be developed by a deep learning approach combining PIM/ZCM data. Study design and Methods ZCM and PIM plus electroencephalographic (EEG) data of 40 healthy adults (17 female, mean age: 26.7 years) were obtained from a single in-home nighttime sleep study. Effect of mode of operation was first evaluated by applying several classic deep learning models to PIM only, ZCM only, and combined ZCM/PIM data. After, a novel deep learning model was developed incorporating combined ZCM/PIM data, and its performance was compared with existing Cole-Kripke, rescored Cole-Kripke, Sadeh, and UCSD IAs. Results Relative to the EEG reference, ZCM/PIM combined mode produced higher agreement of scoring sleep/wake epochs than only ZCM or PIM modes. The proposed novel deep learning model showed 87.7% accuracy (0.2–1% higher than the other IAs), 94.1% sensitivity (0.7–4.3% lower than the other IAs), 64.0% specificity (9.9–21.5% higher than the other IAs), and 59.9% Kappa agreement (∼6.9–11.6% higher than other IAs) in detecting sleep epochs. The proposed deep learning model did not differ significantly from the reference EEG in estimating sleep onset latency (SOL), wake after sleep onset (WASO), total sleep time (TST), and sleep efficiency (SE). Amount of bias and minimum detectable change in estimating SOL, WASO, TST and SE by the deep learning model was smaller than other four IAs. Interpretation The proposed novel deep learning algorithm simultaneously incorporating ZCM/PIM mode data performs significantly better in assessing sleep than existing conventional IAs.
تدمد: 1389-9457
URL الوصول: https://explore.openaire.eu/search/publication?articleId=doi_dedup___::6fcec64ebdeacbeaa0fc6b48d93b0b76
https://doi.org/10.1016/j.sleep.2020.05.008
حقوق: CLOSED
رقم الأكسشن: edsair.doi.dedup.....6fcec64ebdeacbeaa0fc6b48d93b0b76
قاعدة البيانات: OpenAIRE