2857. Optimizing ICU Operations with Digital Twins and Machine Learning: Enhancing Decision-Making and Resource Management
Invited abstract in session TD-34: Advancements of OR-analytics in statistics, machine learning and data science 5, stream Advancements of OR-analytics in statistics, machine learning and data science.
Tuesday, 14:30-16:00Room: Michael Sadler LG10
Authors (first author is the speaker)
| 1. | Margarida Parrado
|
| Department of Mechanical Engineering, NOVA School of Science and Technology | |
| 2. | Luís Lapão
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| Intelligent Decision Support Systems Laboratory, Universidade Nova de Lisboa |
Abstract
Backgroud: Digital Twins (DTs), virtual representations that replicate real-world entities, are emerging as transformative tools in healthcare operations, particularly in Intensive Care Units (ICUs). ICUs are high-stakes environments requiring continuous patient monitoring and advanced medical interventions. However, operational inefficiencies and data overload often delay decision-making, affecting patient outcomes and resource utilization.
Methods: This study developed a DT platform, in collaboration with ICU director from Francisco Xavier Hospital in Lisbon, integrating Machine Learning (ML) to enable decision-making. The model incorporates real-time patient and operational data to predict sepsis.
Results: The DT model demonstrated 78.8% accuracy in predicting Sepsis onset, supporting early detection and timely intervention. Furthermore, the system successfully forecasted systolic arterial blood pressure (ABP) and heart rate (HR) responses to vasopressor administration, achieving a mean absolute error (MAE) of 4.9 mmHg for ABP and 4.1 bpm for HR. These insights enable proactive treatment adjustments, improving patient outcomes and care efficiency.
Conclusion: Merging DTs with ML enables a data-driven approach to optimizing ICU workflows and reducing medical errors. Beyond ICUs, this technology holds promise for operational research, providing intelligent, real-time decision support for optimizing critical care processes, resource management and patient care.
Keywords
- Decision Support Systems
- Analytics and Data Science
- Artificial Intelligence
Status: accepted
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