@Article{info:doi/10.2196/63609, author="Silva, S Sandun Malpriya and Wabe, Nasir and Nguyen, Amy D and Seaman, Karla and Huang, Guogui and Dodds, Laura and Meulenbroeks, Isabelle and Mercado, Crisostomo Ibarra and Westbrook, Johanna I", title="Development of a Predictive Dashboard With Prescriptive Decision Support for Falls Prevention in Residential Aged Care: User-Centered Design Approach", journal="JMIR Aging", year="2025", month="Apr", day="7", volume="8", pages="e63609", keywords="falls prevention; dashboard architecture; predictive; sustainability; challenges; decision support; falls; aged care; geriatric; older adults; economic burden; prevention; electronic health record; EHR; intervention; decision-making; patient safety; risks; older people; monitoring", abstract="Background: Falls are a prevalent and serious health condition among older people in residential aged care facilities, causing significant health and economic burdens. However, the likelihood of future falls can be predicted, and thus, falls can be prevented if appropriate prevention programs are implemented. Current fall prevention programs in residential aged care facilities rely on risk screening tools with suboptimal predictive performance, leading to significant concerns regarding resident safety. Objective: This study aimed to develop a predictive, dynamic dashboard to identify residents at risk of falls with associated decision support. This paper provides an overview of the technical process, including the challenges faced and the strategies used to overcome them during the development of the dashboard. Methods: A predictive dashboard was co-designed with a major residential aged care partner in New South Wales, Australia. Data from resident profiles, daily medications, fall incidents, and fall risk assessments were used. A dynamic fall risk prediction model and personalized rule-based fall prevention recommendations were embedded in the dashboard. The data ingestion process into the dashboard was designed to mitigate the impact of underlying data system changes. This approach aims to ensure resilience against alterations in the data systems. Results: The dashboard was developed using Microsoft Power BI and advanced R programming by linking data silos. It includes dashboard views for those managing facilities and for those caring for residents. Data drill-through functionality was used to navigate through different dashboard views. Resident-level change in daily risk of falling and risk factors and timely evidence-based recommendations were output to prevent falls and enhance prescriptive decision support. Conclusions: This study emphasizes the significance of a sustainable dashboard architecture and how to overcome the challenges faced when developing a dashboard amid underlying data system changes. The development process used an iterative dashboard co-design process, ensuring the successful implementation of knowledge into practice. Future research will focus on the implementation and evaluation of the dashboard's impact on health processes and economic outcomes. International Registered Report Identifier (IRRID): RR2-https://doi.org/10.1136/bmjopen-2021-048657 ", issn="2561-7605", doi="10.2196/63609", url="https://aging.jmir.org/2025/1/e63609", url="https://doi.org/10.2196/63609" }