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OPTIMIZING PATIENT TREATMENT RECOMMENDATIONS USING REINFORCEMENT LEARNING COMBINED WITH RECURRENT NEURAL NETWORK PATIENT STATE SIMULATION

机译:结合强化学习和递归神经网络患者状态模拟,优化患者治疗建议

摘要

Patient treatment may be optimized using Recurrent Neural Network (RNN) based state simulation and Reinforcement learning (RL) techniques to simulate future states and actions. A RNN state simulator and a RL action generator may be trained using patient data such as historical states and actions. The RL action generator may be optimized by applying the RNN state simulator to simulating future states and applying the RL action generator to generate recommended actions based on the simulated future states. This process may be iteratively performed until a computational convergence is reached by the RL action generator which may indicate that the RL action generator has been optimized. A patient state may be fed into the optimized RL action generator to generate an optimal recommended treatment action.
机译:可以使用基于递归神经网络(RNN)的状态模拟和强化学习(RL)技术来模拟未来的状态和动作,从而优化患者治疗。可以使用诸如历史状态和动作的患者数据来训练RNN状态模拟器和RL动作生成器。可以通过将RNN状态模拟器应用于模拟未来状态并应用RL动作生成器基于模拟的未来状态生成推荐动作来优化RL动作生成器。可以迭代地执行该过程,直到RL动作生成器达到计算收敛为止,这可以表明RL动作生成器已经被优化。可以将患者状态输入到优化的RL动作生成器中,以生成最佳的推荐治疗动作。

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