MY MENU
시간생물학연구소 고려대학교 시간생물학연구소는 일주기리듬 연구를 통하여 현대인의 질병을 치료하고 예방합니다.

Key publications

제목

[2022] Lee HJ, Cho CH, Lee T, Jeong J, Yeom JW, Kim S, Jeon S, Seo JY, Moon E, Baek JH, Park DY, Kim SJ, Ha TH, Cha B, Kang HJ, Ahn YM, Lee Y, Lee JB, Kim L. Prediction of impending mood episode recurrence using real-time digital phenotypes in major depre

작성자
LHJ
작성일
2022.11.06
첨부파일0
추천수
0
조회수
37
내용
2022 Sep 23;1-9.
 doi: 10.1017/S0033291722002847. Online ahead of print.

Prediction of impending mood episode recurrence using real-time digital phenotypes in major depression and bipolar disorders in South Korea: a prospective nationwide cohort study

Affiliations 

Abstract

Background: Mood disorders require consistent management of symptoms to prevent recurrences of mood episodes. Circadian rhythm (CR) disruption is a key symptom of mood disorders to be proactively managed to prevent mood episode recurrences. This study aims to predict impending mood episodes recurrences using digital phenotypes related to CR obtained from wearable devices and smartphones.

Methods: The study is a multicenter, nationwide, prospective, observational study with major depressive disorder, bipolar disorder I, and bipolar II disorder. A total of 495 patients were recruited from eight hospitals in South Korea. Patients were followed up for an average of 279.7 days (a total sample of 75 506 days) with wearable devices and smartphones and with clinical interviews conducted every 3 months. Algorithms predicting impending mood episodes were developed with machine learning. Algorithm-predicted mood episodes were then compared to those identified through face-to-face clinical interviews incorporating ecological momentary assessments of daily mood and energy.

Results: Two hundred seventy mood episodes recurred in 135 subjects during the follow-up period. The prediction accuracies for impending major depressive episodes, manic episodes, and hypomanic episodes for the next 3 days were 90.1, 92.6, and 93.0%, with the area under the curve values of 0.937, 0.957, and 0.963, respectively.

Conclusions: We predicted the onset of mood episode recurrences exclusively using digital phenotypes. Specifically, phenotypes indicating CR misalignment contributed the most to the prediction of episodes recurrences. Our findings suggest that monitoring of CR using digital devices can be useful in preventing and treating mood disorders.

Keywords: Circadian rhythms; machine learning; mood disorders; prediction; wearable devices.

0
0

게시물수정

게시물 수정을 위해 비밀번호를 입력해주세요.

댓글삭제게시물삭제

게시물 삭제를 위해 비밀번호를 입력해주세요.