Chen Kun-Yi, Qureshi Adnan I, Baskett William I, Shyu Chi-Ren
Institute for Data Science and Informatics University of Missouri, Columbia, MO, USA.
Department of Neurology University of Missouri, Columbia, MO, USA.
AMIA Annu Symp Proc. 2025 May 22;2024:271-280. eCollection 2024.
Blood pressure variability (BPV) plays a critical role in vascular diseases, particularly in acute ischemic stroke patients in intensive care units (ICUs), where higher BPV correlates with increased mortality rates. Current interventions lack effective methods for controlling BPV across consecutive time windows. To addressing this gap, we propose an offline deep reinforcement learning approach with supervised guidance to regulate systolic BPV in the following consecutive time windows by optimizing intravenous nicardipine infusion rates for intracerebral hemorrhage patients. Using clinically inspired reward functions, our method aims to tailor antihypertensive medication management within the critical 24-hour recovery window. Compared to human performance, our best method showed 57.52% and 126.01% improvements over the human baseline for maintaining BP within the desired range for the next time window and across two consecutive time windows. This research promises streamlined antihypertensive medication dosing, offering potential just-in-time adaptive interventions through automated pumps during stroke patients' ICU stays.
血压变异性(BPV)在血管疾病中起着关键作用,尤其是在重症监护病房(ICU)的急性缺血性中风患者中,较高的BPV与死亡率增加相关。目前的干预措施缺乏在连续时间窗口内控制BPV的有效方法。为了填补这一空白,我们提出了一种具有监督指导的离线深度强化学习方法,通过优化脑出血患者的静脉尼卡地平输注速率,在接下来的连续时间窗口内调节收缩压BPV。使用受临床启发的奖励函数,我们的方法旨在在关键的24小时恢复窗口内调整抗高血压药物管理。与人类表现相比,我们的最佳方法在将血压维持在下一个时间窗口以及两个连续时间窗口的期望范围内方面,比人类基线分别提高了57.52%和126.01%。这项研究有望简化抗高血压药物给药,在中风患者的ICU住院期间通过自动泵提供潜在的即时自适应干预。