Navigating the consequences of mechanical ventilation in clinical intensive care settings through an evolutionary game-theoretic framework

Agentic AI
Published: arXiv: 2510.15127v1
Authors

David J. Albers Tell D. Bennett Jana de Wiljes Bradford J. Smith Peter D. Sottile J. N. Stroh

Abstract

Identifying the effects of mechanical ventilation strategies and protocols in critical care requires analyzing data from heterogeneous patient-ventilator systems within the context of the clinical decision-making environment. This research develops a framework to help understand the consequences of mechanical ventilation (MV) and adjunct care decisions on patient outcome from observations of critical care patients receiving MV. Developing an understanding of and improving critical care respiratory management requires the analysis of existing secondary-use clinical data to generate hypotheses about advantageous variations and adaptations of current care. This work introduces a perspective of the joint patient-ventilator-care systems (so-called J6) to develop a scalable method for analyzing data and trajectories of these complex systems. To that end, breath behaviors are analyzed using evolutionary game theory (EGT), which generates the necessary quantitative precursors for deeper analysis through probabilistic and stochastic machinery such as reinforcement learning. This result is one step along the pathway toward MV optimization and personalization. The EGT-based process is analytically validated on synthetic data to reveal potential caveats before proceeding to real-world ICU data applications that expose complexities of the data-generating process J6. The discussion includes potential developments toward a state transition model for the simulating effects of MV decision using empirical and game-theoretic elements.

Paper Summary

Problem
Mechanical ventilation (MV) is a crucial life-sustaining therapy in critical care, but its management poses a complex problem for healthcare providers. Improving MV patient outcomes is essential, but it's challenging due to the complex interaction between the patient, ventilator, and care system.
Key Innovation
This research introduces a new framework using evolutionary game theory (EGT) to understand the consequences of MV and adjunct care decisions on patient outcomes. The framework, called the joint patient-ventilator-care system (J6), analyzes breath behaviors and patient outcomes using EGT, generating hypotheses about advantageous variations and adaptations of current care.
Practical Impact
This research has the potential to improve critical care respiratory management by analyzing existing secondary-use clinical data. By developing a scalable method for analyzing data and trajectories of complex systems, healthcare providers can make more informed decisions about MV management, ultimately improving patient outcomes.
Analogy / Intuitive Explanation
Think of the J6 framework as a digital twin of the patient-ventilator-care system. Just as a digital twin of a car allows engineers to simulate and optimize its performance, the J6 framework allows researchers to simulate and optimize the performance of the patient-ventilator-care system, leading to better patient outcomes.
Paper Information
Categories:
cs.LG math.OC q-bio.QM
Published Date:

arXiv ID:

2510.15127v1

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