2023
DOI: 10.1101/2023.01.18.524615
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A Scalable Framework for Closed-Loop Neuromodulation with Deep Learning

Abstract: Closed-loop neuromodulation measures dynamic neural or physiological activity to optimize interventions for clinical and nonclinical behavioral, cognitive, wellness, attentional, or general task performance enhancement. Conventional closed-loop stimulation approaches can contain biased biomarker detection (decoders and error-based triggering) and stimulation-type application. We present and verify a novel deep learning framework for designing and deploying flexible, data-driven, automated closed-loop neuromodu… Show more

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References 103 publications
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