Predicting Sleep-Wake Times from Wearable Sensor Data using Change Point Detection

Abstract Number:

2695 

Submission Type:

Contributed Abstract 

Contributed Abstract Type:

Speed 

Participants:

JIYU MOON (1), Hyonho Chun (1), Myung Hee Lee (2), Jeongyoun Ahn (1)

Institutions:

(1) Korea Advanced Institute of Science and Technology, Daejeon, Republic of Korea, (2) Weill Cornell Medicine, New York City, NY, United States

Co-Author(s):

Hyonho Chun  
Korea Advanced Institute of Science and Technology
Myung Hee Lee  
Weill Cornell Medicine
Jeongyoun Ahn  
Korea Advanced Institute of Science and Technology

First Author:

Jiyu Moon  
Korea Advanced Institute of Science and Technology

Presenting Author:

Jiyu Moon  
N/A

Abstract Text:

In the era of ubiquitous wearable technology, the prediction of sleep and wake times based on activity and biometric data has emerged as an important area of research. Previous studies have predominantly relied on supervised learning algorithms, trained using polysomnography(PSG) data. However, the collection and labeling of PSG data are prohibitively expensive and logistically challenging. Moreover, the alternative use of self-recorded sleep reports as labels for PSG data is fraught with issues of subjectivity and inaccuracy. In response to these challenges, this study introduces an unsupervised algorithm for sleep/wake times prediction using biometric data obtained from wearable devices. This algorithm is grounded in the change point detection methodology, a technique well-suited for identifying pattern changes in time-series data. We estimate common parameters based on general patient data, which enhances the algorithm's adaptability across diverse patient profiles. The algorithm was tested on a cohort of 590 patients. Our results not only validate the effectiveness of the proposed method but also opens new avenues for leveraging wearable device data in sleep research.

Keywords:

Change point detection|Sleep-wake times prediction|Unsupervised learning|Multivariate time-series analysis|Wearable sensor data|

Sponsors:

Section on Medical Devices and Diagnostics

Tracks:

Miscellaneous

Can this be considered for alternate subtype?

Yes

Are you interested in volunteering to serve as a session chair?

No

I have read and understand that JSM participants must abide by the Participant Guidelines.

Yes

I understand that JSM participants must register and pay the appropriate registration fee by June 1, 2024. The registration fee is non-refundable.

I understand