Offline Policy Evaluation for Learning-based Deep Brain Stimulation Controllers

Qitong Gao, Stephen L. Schmidt, Karthik Kamaravelu, D. Turner, W. Grill, M. Pajic
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引用次数: 4

Abstract

Deep brain stimulation (DBS) is an effective procedure to treat motor symptoms caused by nervous system disorders such as Parkinson's disease (PD). Although existing implantable DBS devices can suppress PD symptoms by delivering fixed periodic stimuli to the Basal Ganglia (BG) region of the brain, they are considered inefficient in terms of energy and could cause side-effects. Recently, reinforcement learning (RL)-based DBS controllers have been developed to achieve both stimulation efficacy and energy efficiency, by adapting stimulation parameters (e.g., pattern and frequency of stimulation pulses) to the changes in neuronal activity. However, RL methods usually provide limited safety and performance guarantees, and directly deploying them on patients may be hindered due to clinical regulations. Thus, in this work, we introduce a model-based offline policy evaluation (OPE) methodology to estimate the performance of RL policies using historical data. As a first step, the BG region of the brain is modeled as a Markov decision process (MDP). Then, a deep latent MDP (DL-MDP) model is learned using variational inference and previously collected control trajectories. The performance of RL controllers is then evaluated on the DL-MDP models instead of patients directly, ensuring safety of the evaluation process. Further, we show that our method can be integrated into offline RL frameworks, improving control performance when limited training data are available. We illustrate the use of our methodology on a computational Basal Ganglia model (BGM); we show that it accurately estimates the expected returns of controllers trained following state-of-the-art RL frameworks, outperforming existing OPE methods designed for general applications.
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基于学习的脑深部刺激控制器离线策略评估
脑深部电刺激(DBS)是治疗帕金森病(PD)等神经系统疾病引起的运动症状的有效方法。虽然现有的植入式DBS装置可以通过向大脑基底神经节(BG)区域提供固定的周期性刺激来抑制PD症状,但它们在能量方面被认为效率低下,并且可能导致副作用。最近,基于强化学习(RL)的DBS控制器被开发出来,通过调整刺激参数(如刺激脉冲的模式和频率)来适应神经元活动的变化,从而实现刺激效果和能量效率。然而,RL方法通常提供有限的安全性和性能保证,并且由于临床法规的限制,直接将其应用于患者可能会受到阻碍。因此,在这项工作中,我们引入了一种基于模型的离线策略评估(OPE)方法,使用历史数据来估计RL策略的性能。作为第一步,大脑BG区域被建模为马尔可夫决策过程(MDP)。然后,使用变分推理和先前收集的控制轨迹来学习深度潜在MDP (DL-MDP)模型。然后在DL-MDP模型上而不是直接对患者进行RL控制器的性能评估,以确保评估过程的安全性。此外,我们表明我们的方法可以集成到离线强化学习框架中,在有限的训练数据可用时提高控制性能。我们说明使用我们的方法计算基底神经节模型(BGM);我们表明,它准确地估计了按照最先进的RL框架训练的控制器的预期回报,优于为一般应用设计的现有OPE方法。
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