A Machine Learning-Based Clinical Decision Support System for Mental Health Risk Profiling
Date
2024-10
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CEUR-WS
Abstract
Clinical Decision Support Systems (CDSS) are increasingly being adopted to enhance healthcare delivery, particularly
in mental health. This paper presents the design and implementation of a CDSS framework tailored
for mental health-related data, focusing on predictive risk profiling and supporting healthcare professionals in
data-driven decision-making. The system integrates machine learning algorithms for both classification and
regression tasks, facilitating personalized risk assessments and treatment recommendations. It features a modular
architecture, consisting of a data processing pipeline, machine learning engine, and an intuitive user interface,
allowing for efficient handling of diverse datasets and seamless integration with existing clinical workflows. The
system was tested on multiple open datasets, each requiring varying levels of preprocessing and data cleaning.
Key results include the performance of models like Random Forest, Gradient Boosting, and K-Nearest Neighbors,
and the significant impact of feature complexity over patient volume on processing times. Despite being deployed
on mid-range hardware, the system achieved fast response times, highlighting its feasibility for real-time clinical
use. The work underscores the importance of usability, performance efficiency, and interoperability in developing
CDSS solutions, paving the way for broader adoption in mental health contexts.
Description
Keywords
Clinical Decision Support System, Mental Health, Machine Learning, Risk profiling, Predictive Analytics
Citation
Paoli, J.F; Chatterjee, P; Pollo-Cattaneo, M.F. (2024). A Machine Learning-Based Clinical Decision Support System for Mental Health Risk Profiling - Workshops at the 7th International Conference on Applied Informatics 2024 - (WAAI 2024) – Viña del Mar, Chile - (Págs. 1-13) - Octubre 24-26, 2024. - Online: ISSN 1613-0073
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Except where otherwised noted, this item's license is described as info:eu-repo/semantics/openAccess