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首页> 外文期刊>Journal of Reliable Intelligent Environments >Risk management for nuclear medical department using reinforcement learning algorithms
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Risk management for nuclear medical department using reinforcement learning algorithms

机译:使用强化学习算法的核医学部门风险管理

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Modern medical software systems are often classified as medical devices and governed by regulations which require stringent risk safety activities to be implemented to minimize the occurrence of risky events. This paper proposes a reinforcement learning (RL) based approaches for training a software agent for risk management of medical software systems. The goal of RL agent is to avoid that a patient enters in dangerous and undesirable states. At the same time agent must be able to reach on a safe state or an exit in a minimum interval of time. RL based system is also able to guide a patient to a safe path if he/she mistakenly enter into risk or undesirable states.
机译:现代医疗软件系统通常被归类为医疗设备,并受法规的约束,这些法规要求进行严格的风险安全活动,以最大程度地减少风险事件的发生。本文提出了一种基于增强学习(RL)的方法,用于训练软件代理进行医疗软件系统的风险管理。 RL代理的目标是避免患者进入危险和不良状态。同时,代理必须能够在最短的时间间隔内达到安全状态或退出。如果患者错误地进入危险或不良状态,则基于RL的系统还能够将患者引导至安全的道路。

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