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Learning neural impulsive MPC for tailoring therapies in viral infections

机译:学习神经冲动的MPC,用于剪裁病毒感染疗法

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摘要

Viruses are among the most common causes of human infections causing a high mortality rate. Thus, tailoring therapies against viral infections are central. In view of that, this article presents the scheduling of antiviral treatments for influenza A virus (IAV) infections based on neural networks and model predictive control (MPC). This hybrid intelligent approach calculates the current drug administration after using the differential evolution (DE) algorithm to establish a set of drug-intake times which maximizes the viral clearance while minimizing the drug consumption during a prediction horizon. Monte Carlo simulations reveal that the viral elimination achieved by the proposed strategy is similar to that obtained by the clinical recommendations. However, the amount of drug administrated by the algorithm is less than the current clinical recommendations. Thus, the potential of the proposed algorithm to schedule treatments in influenza and other infections is discussed. (C) 2019 Elsevier B.V. All rights reserved.
机译:病毒是人类感染的最常见原因之一,导致高死亡率。因此,针对病毒感染的裁缝疗法是中央。鉴于此,本文提出了基于神经网络和模型预测控制(MPC)的流感病毒(IAV)感染的抗病毒治疗的调度。这种混合智能方法在使用差分演进(DE)算法后计算当前的药物给药,以建立一组药物进气量,这在预测地平线期间最大化了病毒清除的同时最大化了病毒清除。蒙特卡罗模拟表明,拟议策略所实现的病毒消除类似于临床建议所获得的灭绝。然而,由算法管理的药物量小于当前的临床推荐。因此,讨论了所提出的算法来安排流感和其他感染治疗的算法。 (c)2019年Elsevier B.V.保留所有权利。

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