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Ensemble Approach to Combining Episode Prediction Models Using Sequential Circadian Rhythm Sensor Data from Mental Health Patientsopen access

Authors
Lee, TaekLee, Heon-JeongLee, Jung-BeenKim, Jeong-Dong
Issue Date
Oct-2023
Publisher
Multidisciplinary Digital Publishing Institute (MDPI)
Keywords
episode prediction; hidden Markov model; recurrent neural network; random forest; mood disorder; digital healthcare; wearable device; digital phenotype
Citation
Sensors, v.23, no.20
Indexed
SCIE
SCOPUS
Journal Title
Sensors
Volume
23
Number
20
URI
https://scholarworks.korea.ac.kr/kumedicine/handle/2021.sw.kumedicine/64367
DOI
10.3390/s23208544
ISSN
1424-8220
1424-3210
Abstract
Managing mood disorders poses challenges in counseling and drug treatment, owing to limitations. Counseling is the most effective during hospital visits, and the side effects of drugs can be burdensome. Patient empowerment is crucial for understanding and managing these triggers. The daily monitoring of mental health and the utilization of episode prediction tools can enable self-management and provide doctors with insights into worsening lifestyle patterns. In this study, we test and validate whether the prediction of future depressive episodes in individuals with depression can be achieved by using lifelog sequence data collected from digital device sensors. Diverse models such as random forest, hidden Markov model, and recurrent neural network were used to analyze the time-series data and make predictions about the occurrence of depressive episodes in the near future. The models were then combined into a hybrid model. The prediction accuracy of the hybrid model was 0.78; especially in the prediction of rare episode events, the F1-score performance was approximately 1.88 times higher than that of the dummy model. We explored factors such as data sequence size, train-to-test data ratio, and class-labeling time slots that can affect the model performance to determine the combinations of parameters that optimize the model performance. Our findings are especially valuable because they are experimental results derived from large-scale participant data analyzed over a long period of time.
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Lee, Heon Jeong
Anam Hospital (Department of Psychiatry, Anam Hospital)
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