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Reinforcement learning-based control for combined infusion of sedatives and analgesics

机译:加固基于学习的镇静剂和镇痛药物输注的控制

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The focus of several clinical trials and research in the area of clinical pharmacology is to fine tune the drug dosing in the phase of additive, antagonistic, and synergistic drug interactive effects. It is important to consider the interactive effects of the drugs to restrict the drug usage to the optimal level required to achieve certain therapeutic effects. Such optimal drug dosing methods will minimize the adverse drug effects and cost associated with the treatment. In this paper, we discuss the use of a reinforcement learning (RL)-based controller to fine tune the drug titration while different drugs with interactive effects are administrated simultaneously. We demonstrate the efficacy of the method by using 25 simulated patients for the simultaneous infusion of a sedative and analgesic drug which has synergistic interactive effect.
机译:几种临床试验和研究在临床药理学领域的重点是微调添加剂,拮抗和协同药物互动效果的阶段。重要的是要考虑药物的互动效果,以限制药物使用,以实现达到某些治疗效果所需的最佳水平。这种最佳药物给药方法将最小化与治疗相关的不良药物影响和成本。在本文中,我们讨论了基于加强学习(RL)的控制器来微调药物滴定,而不同的药物具有相互作用的不同药物。我们通过使用25例模拟患者同时输注具有协同互动效果的镇静和镇痛药的方法来证明该方法的功效。

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