强化学习
机械通风
计算机科学
通风(建筑)
经济短缺
临床实习
重症监护医学
人工智能
医学
麻醉
工程类
护理部
语言学
机械工程
哲学
政府(语言学)
作者
Liming Hao,Xiaohan Wang,Shuai Ren,Yan Shi,Maolin Cai,Tao Wang,Zujin Luo
标识
DOI:10.1109/jbhi.2025.3551670
摘要
Mechanical ventilation is an effective treatment for critically ill patients and those with pulmonary diseases. However, patient-ventilator asynchrony (PVA) remains a significant challenge, potentially leading to high mortality. Improving patient-ventilator synchrony poses a complex decision-making problem in clinical practice. Traditional methods rely heavily on clinicians' experience, often resulting in inefficiencies, delayed ventilator adjustments, and resource shortages. This paper proposes a novel approach using a deep reinforcement learning (RL) algorithm based on deep Q-learning (DQN) to enhance patient-ventilator synchrony during pressure support ventilation. The action space and reward function are established from clinical experience, and a pneumatic model of the mechanical ventilation system is constructed to simulate various patient conditions and types of PVAs. Clinical data are used to evaluate the RL algorithm qualitatively and quantitatively. The RL-optimized ventilation strategy reduces the proportion of breaths containing PVAs from 37.52% to 7.08%, demonstrating its effectiveness in assisting clinical decision-making, improving synchrony, and enabling intelligent ventilator control, bedside monitoring, and automatic weaning.
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