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Predict and Prepare: AI-Driven Insights for Clinical Resource Planning
0
Zitationen
6
Autoren
2025
Jahr
Abstract
Background: The Emergency Department (ED) plays a vital role in the healthcare system, frequently operating under high demand and limited resources. Increasing patient volumes, constrained community support, and EMTALA obligations lead to operational challenges such as long wait times, resource strain, and staff fatigue. While existing tools aim to predict patient arrivals, they often lack the sophistication needed to forecast ED waiting room census accurately. To address this, the team developed a machine learning model (see Figure 1) to more precisely anticipate surge conditions and improve operational responsiveness.
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