Literature DB >> 28030999

Seizure Control in a Computational Model Using a Reinforcement Learning Stimulation Paradigm.

Vivek Nagaraj1, Andrew Lamperski2, Theoden I Netoff3.   

Abstract

Neuromodulation technologies such as vagus nerve stimulation and deep brain stimulation, have shown some efficacy in controlling seizures in medically intractable patients. However, inherent patient-to-patient variability of seizure disorders leads to a wide range of therapeutic efficacy. A patient specific approach to determining stimulation parameters may lead to increased therapeutic efficacy while minimizing stimulation energy and side effects. This paper presents a reinforcement learning algorithm that optimizes stimulation frequency for controlling seizures with minimum stimulation energy. We apply our method to a computational model called the epileptor. The epileptor model simulates inter-ictal and ictal local field potential data. In order to apply reinforcement learning to the Epileptor, we introduce a specialized reward function and state-space discretization. With the reward function and discretization fixed, we test the effectiveness of the temporal difference reinforcement learning algorithm (TD(0)). For periodic pulsatile stimulation, we derive a relation that describes, for any stimulation frequency, the minimal pulse amplitude required to suppress seizures. The TD(0) algorithm is able to identify parameters that control seizures quickly. Additionally, our results show that the TD(0) algorithm refines the stimulation frequency to minimize stimulation energy thereby converging to optimal parameters reliably. An advantage of the TD(0) algorithm is that it is adaptive so that the parameters necessary to control the seizures can change over time. We show that the algorithm can converge on the optimal solution in simulation with slow and fast inter-seizure intervals.

Entities:  

Keywords:  Epilepsy; closed-loop; deep brain stimulation; neuromodulation; reinforcement learning

Mesh:

Year:  2016        PMID: 28030999     DOI: 10.1142/S0129065717500125

Source DB:  PubMed          Journal:  Int J Neural Syst        ISSN: 0129-0657            Impact factor:   5.866


  4 in total

1.  Supervised-actor-critic reinforcement learning for intelligent mechanical ventilation and sedative dosing in intensive care units.

Authors:  Chao Yu; Guoqi Ren; Yinzhao Dong
Journal:  BMC Med Inform Decis Mak       Date:  2020-07-09       Impact factor: 2.796

2.  Minimal model of interictal and ictal discharges "Epileptor-2".

Authors:  Anton V Chizhov; Artyom V Zefirov; Dmitry V Amakhin; Elena Yu Smirnova; Aleksey V Zaitsev
Journal:  PLoS Comput Biol       Date:  2018-05-31       Impact factor: 4.475

3.  Inverse reinforcement learning for intelligent mechanical ventilation and sedative dosing in intensive care units.

Authors:  Chao Yu; Jiming Liu; Hongyi Zhao
Journal:  BMC Med Inform Decis Mak       Date:  2019-04-09       Impact factor: 2.796

4.  Active probing to highlight approaching transitions to ictal states in coupled neural mass models.

Authors:  Vinícius Rezende Carvalho; Márcio Flávio Dutra Moraes; Sydney S Cash; Eduardo Mazoni Andrade Marçal Mendes
Journal:  PLoS Comput Biol       Date:  2021-01-25       Impact factor: 4.475

  4 in total

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