MONDEP: A unified SpatioTemporal MONitoring Framework for National DEPression Forecasting
Issued Date
2024-09-15
Resource Type
eISSN
24058440
Scopus ID
2-s2.0-85202660319
Journal Title
Heliyon
Volume
10
Issue
17
Rights Holder(s)
SCOPUS
Bibliographic Citation
Heliyon Vol.10 No.17 (2024)
Suggested Citation
Thaipisutikul T., Vitoochuleechoti P., Thaipisutikul P., Tuarob S. MONDEP: A unified SpatioTemporal MONitoring Framework for National DEPression Forecasting. Heliyon Vol.10 No.17 (2024). doi:10.1016/j.heliyon.2024.e36877 Retrieved from: https://repository.li.mahidol.ac.th/handle/20.500.14594/100935
Title
MONDEP: A unified SpatioTemporal MONitoring Framework for National DEPression Forecasting
Author's Affiliation
Corresponding Author(s)
Other Contributor(s)
Abstract
Depression has become a prevalent mental disorder that significantly affects a person's emotions, behaviors, physical health, ability to perform daily tasks, and ability to maintain healthy relationships. Untreated depression can escalate the risk of suicide, making the situation even worse. Despite an abundance of models previously proposed for forecasting depression, the issue of foretelling the overall number of patients at each administrative level remains under-investigated. Therefore, in this paper, we propose a simple but effective SpatioTemporal Monitoring Framework for National Depression Forecasting (MONDEP). In particular, we analyze national depression statistics data in Thailand as a case study and create prediction models for a real-time depression forecasting system using machine learning and deep learning approaches. In order to forecast the prevalence of depression at various administrative levels, we use the hierarchical structure of depression aggregation. The proposed framework consists of three modules: Data Pre-processing to extract and pre-process the raw data, Exploratory Data Analysis (EDA) to visualize and analyze the data to get insight, and Model Training and Testing to predict future depression cases. The objective of our research is to construct a comprehensive MONDEP framework that utilizes machine learning and deep learning to predict depression profiles at the district and national levels using multivariate time series across various administrative levels. Our study illustrates the considerable association between a spatial-temporal component and demonstrates how depression profiles may be represented by employing lower administrative-level data to estimate the general level of mental health across the nation. Additionally, the best performance across all criteria is obtained when a deep learning model is used to exploit multivariate time series, showing a 13% improvement in MAE measure compared to the SARIMAX baseline. We believe the proposed framework could be used as a point of reference for decision-making regarding the management of depression and has the potential to be incredibly helpful for policymakers in successfully managing mental health services on time.