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      Treating epilepsy via adaptive neurostimulation: a reinforcement learning approach.

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          Abstract

          This paper presents a new methodology for automatically learning an optimal neurostimulation strategy for the treatment of epilepsy. The technical challenge is to automatically modulate neurostimulation parameters, as a function of the observed EEG signal, so as to minimize the frequency and duration of seizures. The methodology leverages recent techniques from the machine learning literature, in particular the reinforcement learning paradigm, to formalize this optimization problem. We present an algorithm which is able to automatically learn an adaptive neurostimulation strategy directly from labeled training data acquired from animal brain tissues. Our results suggest that this methodology can be used to automatically find a stimulation strategy which effectively reduces the incidence of seizures, while also minimizing the amount of stimulation applied. This work highlights the crucial role that modern machine learning techniques can play in the optimization of treatment strategies for patients with chronic disorders such as epilepsy.

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          Author and article information

          Journal
          Int J Neural Syst
          International journal of neural systems
          World Scientific Pub Co Pte Lt
          0129-0657
          0129-0657
          Aug 2009
          : 19
          : 4
          Affiliations
          [1 ] School of Computer Science, McGill University, Montreal, QC, Canada. jpineau@cs.mcgill.ca
          Article
          S0129065709001987 CAMS5618
          10.1142/S0129065709001987
          4884089
          19731397
          a3a190f0-56e4-41aa-8c69-35b4f8d06557
          History

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