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Landscape and future directions of machine learning applications in closed-loop brain stimulation

Journal

NPJ DIGITAL MEDICINE
Volume 6, Issue 1, Pages -

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s41746-023-00779-x

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Brain stimulation (BStim) includes various modalities that use implanted electrodes in deep brain structures to treat neurological disorders. BStim is primarily used for movement disorders like Parkinson's, but is expanding to include neuropsychiatric disorders. Advancements in BStim have led to closed-loop systems that adjust stimulation based on neural biomarkers, using machine learning (ML) algorithms to predict disease symptoms. ML has been successfully utilized in developing closed-loop systems for epilepsy, movement disorders, and neuropsychiatric disorders.
Brain stimulation (BStim) encompasses multiple modalities (e.g., deep brain stimulation, responsive neurostimulation) that utilize electrodes implanted in deep brain structures to treat neurological disorders. Currently, BStim is primarily used to treat movement disorders such as Parkinson's, though indications are expanding to include neuropsychiatric disorders like depression and schizophrenia. Traditional BStim systems are open-loop and deliver constant electrical stimulation based on manually-determined parameters. Advancements in BStim have enabled development of closed-loop systems that analyze neural biomarkers (e.g., local field potentials in the sub-thalamic nucleus) and adjust electrical modulation in a dynamic, patient-specific, and energy efficient manner. These closed-loop systems enable real-time, context-specific stimulation adjustment to reduce symptom burden. Machine learning (ML) has emerged as a vital component in designing these closed-loop systems as ML models can predict / identify presence of disease symptoms based on neural activity and adaptively learn to modulate stimulation. We queried the US National Library of Medicine PubMed database to understand the role of ML in developing closed-loop BStim systems to treat epilepsy, movement disorders, and neuropsychiatric disorders. Both neural and non-neural network ML algorithms have successfully been leveraged to create closed-loop systems that perform comparably to open-loop systems. For disorders in which the underlying neural pathophysiology is relatively well understood (e.g., Parkinson's, essential tremor), most work has involved refining ML models that can classify neural signals as aberrant or normal. The same is seen for epilepsy, where most current research has focused on identifying optimal ML model design and integrating closed-loop systems into existing devices. For neuropsychiatric disorders, where the underlying pathologic neural circuitry is still being investigated, research is focused on identifying biomarkers (e.g., local field potentials from brain nuclei) that ML models can use to identify onset of symptoms and stratify severity of disease.

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