1. Intelligent decision support systems for dementia care: A scoping review.
- Author
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Andargoli, Amirhossein Eslami, Ulapane, Nalika, Nguyen, Tuan Anh, Shuakat, Nadeem, Zelcer, John, and Wickramasinghe, Nilmini
- Abstract
In the context of dementia care, Artificial Intelligence (AI) powered clinical decision support systems have the potential to enhance diagnosis and management. However, the scope and challenges of applying these technologies remain unclear. This scoping review aims to investigate the current state of AI applications in the development of intelligent decision support systems for dementia care. We conducted a comprehensive scoping review of empirical studies that utilised AI-powered clinical decision support systems in dementia care. The results indicate that AI applications in dementia care primarily focus on diagnosis, with limited attention to other aspects outlined in the World Health Organization (WHO) Global Action Plan on the Public Health Response to Dementia 2017–2025 (GAPD). A trifecta of challenges, encompassing data availability, cost considerations, and AI algorithm performance, emerges as noteworthy barriers in adoption of AI applications in dementia care. To address these challenges and enhance AI reliability, we propose a novel approach: a digital twin-based patient journey model. Future research should address identified gaps in GAPD action areas, navigate data-related obstacles, and explore the implementation of digital twins. Additionally, it is imperative to emphasize that addressing trust and combating the stigma associated with AI in healthcare should be a central focus of future research directions. • This paper examines the trajectory of AI-based CDSS application in dementia care. • It focuses on GAPD's seven action areas, highlighting AI's role in improving diagnosis and care. • It identifies limitations in data volume and cost as barriers to their development and usage in practice. • A model utilising digital twin technology is presented as a potential approach to addressing these identified limitations. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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