一种新的用于在线自适应癫痫预测的强化学习框架

Shouyi Wang, W. Chaovalitwongse, Stephen Wong
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引用次数: 23

摘要

癫痫发作预测对医学专业人员来说仍然是一个非常具有挑战性和未解决的问题。目前癫痫发作预测技术的瓶颈是缺乏灵活性,以不同的病人难以置信的各种癫痫发作。本研究提出了一种新的自适应机制,成功地将强化学习、在线监测和自适应控制理论相结合,用于癫痫发作预测。该方法消除了复杂的阈值调整/优化过程,具有很大的灵活性和适应性,适用于各种类型癫痫发作的患者。该预测系统在5例癫痫患者身上进行了测试。在最佳参数设置下,该模型的平均准确率为71.34%,大大优于机会模型。该系统的自适应特性为医生和患者开发实用的在线癫痫预测技术提供了一条有希望的道路。
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A novel reinforcement learning framework for online adaptive seizure prediction
Epileptic seizure prediction is still a very challenging and unsolved problem for medical professionals. The current bottleneck of seizure prediction techniques is the lack of flexibility for different patients with an incredible variety of epileptic seizures. This study proposes a novel self-adaptation mechanism which successfully combines reinforcement learning, online monitoring and adaptive control theory for seizure prediction. The proposed method eliminates a sophisticated threshold-tuning/optimization process, and has a great potential of flexibility and adaptability to a wide range of patients with various types of seizures. The proposed prediction system was tested on five patients with epilepsy. With the best parameter settings, it achieved an averaged accuracy of 71.34%, which is considerably better than a chance model. The autonomous adaptation property of the system offers a promising path towards development of practical online seizure prediction techniques for physicians and patients.
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