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Incorporating prior knowledge into Q-learning for drug delivery individualization

机译:将先验知识整合到Q学习中以实现药物输送个性化

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Individualization of drug delivery in treatment of chronic ailments is a challenge to the physician. Variability of response across patient population requires tailoring the dosing strategies to individual's needs. We have previously demonstrated the potential of reinforcement learning methods to support the physician in the management of anemia. In this paper, we propose the incorporation of prior knowledge into the learning mechanism to further improve the outcomes of the treatment.
机译:在慢性疾病的治疗中药物递送的个性化是医师的挑战。不同患者群体的反应差异需要根据个人需求量身定制剂量策略。我们先前已经证明了强化学习方法在支持贫血治疗方面支持医师的潜力。在本文中,我们建议将先验知识整合到学习机制中,以进一步改善治疗效果。

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