Patient-Specific Sedation Management via Deep Reinforcement Learning

被引:11
|
作者
Eghbali, Niloufar [1 ]
Alhanai, Tuka [2 ]
Ghassemi, Mohammad M. [1 ]
机构
[1] Michigan State Univ, Dept Comp Sci, Human Augmentat & Artificial Intelligence Lab, E Lansing, MI 48824 USA
[2] New York Univ Abu Dhabi, Div Engn, Lab Comp Human Intelligence, Abu Dhabi, U Arab Emirates
来源
关键词
medication dosing; personalized medicine; deep reinforcement learning; propofol; sedation management; CLOSED-LOOP CONTROL; ICU PATIENTS; ANESTHESIA; ANALGESIA;
D O I
10.3389/fdgth.2021.608893
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Introduction: Developing reliable medication dosing guidelines is challenging because individual dose-response relationships are mitigated by both static (e. g., demographic) and dynamic factors (e.g., kidney function). In recent years, several data-driven medication dosing models have been proposed for sedatives, but these approaches have been limited in their ability to assess interindividual differences and compute individualized doses.Objective: The primary objective of this study is to develop an individualized framework for sedative-hypnotics dosing.Method: Using publicly available data (1,757 patients) from the MIMIC IV intensive care unit database, we developed a sedation management agent using deep reinforcement learning. More specifically, we modeled the sedative dosing problem as a Markov Decision Process and developed an RL agent based on a deep deterministic policy gradient approach with a prioritized experience replay buffer to find the optimal policy. We assessed our method's ability to jointly learn an optimal personalized policy for propofol and fentanyl, which are among commonly prescribed sedative-hypnotics for intensive care unit sedation. We compared our model's medication performance against the recorded behavior of clinicians on unseen data.Results: Experimental results demonstrate that our proposed model would assist clinicians in making the right decision based on patients' evolving clinical phenotype. The RL agent was 8% better at managing sedation and 26% better at managing mean arterial compared to the clinicians' policy; a two-sample t-test validated that these performance improvements were statistically significant (p < 0.05).Conclusion: The results validate that our model had better performance in maintaining control variables within their target range, thereby jointly maintaining patients' health conditions and managing their sedation.
引用
收藏
页数:9
相关论文
共 50 条
  • [21] Learning financial asset-specific trading rules via deep reinforcement learning
    Taghian, Mehran
    Asadi, Ahmad
    Safabakhsh, Reza
    EXPERT SYSTEMS WITH APPLICATIONS, 2022, 195
  • [22] Patient-Specific Seizure Prediction via Adder Network and Supervised Contrastive Learning
    Zhao, Yuchang
    Li, Chang
    Liu, Xiang
    Qian, Ruobing
    Song, Rencheng
    Chen, Xun
    IEEE TRANSACTIONS ON NEURAL SYSTEMS AND REHABILITATION ENGINEERING, 2022, 30 : 1536 - 1547
  • [23] Management and Orchestration of Virtual Network Functions via Deep Reinforcement Learning
    Roig, Joan S.
    Gutierrez-Estevez, David M.
    Gunduz, Deniz
    IEEE JOURNAL ON SELECTED AREAS IN COMMUNICATIONS, 2020, 38 (02) : 304 - 317
  • [24] Coexistence Management for URLLC in Campus Networks via Deep Reinforcement Learning
    Khodapanah, Behnam
    Hoessler, Tom
    Yuncu, Baris
    Barreto, Andre Noll
    Simsek, Meryem
    Fettweis, Gerhard
    2020 IEEE WIRELESS COMMUNICATIONS AND NETWORKING CONFERENCE (WCNC), 2020,
  • [25] Learning to Walk via Deep Reinforcement Learning
    Haarnoja, Tuomas
    Ha, Sehoon
    Zhou, Aurick
    Tan, Jie
    Tucker, George
    Levine, Sergey
    ROBOTICS: SCIENCE AND SYSTEMS XV, 2019,
  • [26] Bayesian Deep Reinforcement Learning via Deep Kernel Learning
    Junyu Xuan
    Jie Lu
    Zheng Yan
    Guangquan Zhang
    International Journal of Computational Intelligence Systems, 2018, 12 : 164 - 171
  • [27] Bayesian Deep Reinforcement Learning via Deep Kernel Learning
    Xuan, Junyu
    Lu, Jie
    Yan, Zheng
    Zhang, Guangquan
    INTERNATIONAL JOURNAL OF COMPUTATIONAL INTELLIGENCE SYSTEMS, 2019, 12 (01) : 164 - 171
  • [28] An Automated Method to Generate Patient-Specific Dose Distributions for Radiotherapy Using Deep Learning
    Chen, X.
    Men, K.
    Yi, J.
    Li, Y.
    Dai, J.
    MEDICAL PHYSICS, 2018, 45 (06) : E450 - E450
  • [29] Toward Patient-Specific Prediction of Ablation Strategies for Atrial Fibrillation Using Deep Learning
    Muffoletto, Marica
    Qureshi, Ahmed
    Zeidan, Aya
    Muizniece, Laila
    Fu, Xiao
    Zhao, Jichao
    Roy, Aditi
    Bates, Paul A.
    Aslanidi, Oleg
    FRONTIERS IN PHYSIOLOGY, 2021, 12
  • [30] A Comparison of Two Deep Learning Architectures to Automatically Define Patient-Specific Beam Apertures
    Cardenas, C.
    Anderson, B.
    Zhang, L.
    Jhingran, A.
    Simonds, H.
    Yang, J.
    Brock, K.
    Klopp, A.
    Beadle, B.
    Court, I.
    Kisling, K.
    MEDICAL PHYSICS, 2018, 45 (06) : E132 - E132