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Enhancing Healthcare Quality with Reinforcement Learning Modeling

机译:加强钢筋学习建模加强医疗质量

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Optimizing healthcare efficiency is a major concern today. Currently, medical diagnostics can be inaccurate, and when translated to medical treatment strategies, like choosing if to operate or not, and which drag type and optimal dose, it might affect the medical treatment effectivity. Predictive models can be used for the design of treatment plan, which is a challenging task due to large number of parameters and the nonlinearity of the problem. A major challenge in these models is to model the natural subject response - spontaneous and in respond to the treatment. In this work, we suggest design of predictive models that can incorporate in optimal manner the human internal mechanism for his/her healthcare maintenance to a medical expert system by using reinforcement learning model with natural and medical agents. The personal and public medical records, medical knowledge, sensory inputs, including brain recording when available, can be used not just as constraints to the medical agent, but to estimate the natural agent states and reward. This new model suggestion has a potential to improve healthcare quality, with better control of the desired level of medical intervention.
机译:优化医疗保健效率今天是一个主要问题。目前,医疗诊断可以不准确,并且当转化为医疗策略时,如选择如果运作或不进行操作,并且哪种拖曳式和最佳剂量,则可能会影响医疗效果。预测模型可用于治疗计划的设计,由于大量参数和问题的非线性,这是一个具有挑战性的任务。这些模型中的一项重大挑战是模拟自然科学响应 - 自发性和反应治疗。在这项工作中,我们建议设计能够以最佳的方式通过使用强化学习模型与自然和医疗剂的强化学习模型为医疗专家系统的人类内部机制来融入预测模型。个人和公共医疗记录,医学知识,感官投入,包括脑记录的可用时,不仅可以使用对医疗剂的限制,而是为了估算自然代理商国家和奖励。这种新的模型建议有可能提高医疗保健质量,更好地控制所需的医疗干预水平。

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