Design of an integrated circuit for decoding motor brain activity for autonomous use of a brain-machine interface for motor substitution

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This work is part of the development of brain-machine interfaces dedicated to restoring mobility for patients with severe chronic motor disabilities. The proposed technological solutions are based on decoding brain signals acquired at the motor cortex level in order to extract movement intentions. These intentions serve as commands for motor compensation systems. Our team is a pioneer in this field, having developed WIMAGINE, one of the first chronic wireless implants, as well as a decoder and effectors adapted to the needs of paraplegic or quadriplegic patients (Benabid et al, The Lancet Neurology, 2019 ; Lorach et al, Nature 2023). The proposed research follows on from an initial thesis whose objective was to design an integrated circuit capable of replicating the performance of the brain signal decoder with extremely low energy consumption, using a fixed model. However, due to changes in the userapos;s strategy or the natural evolution of their brain structures, the performance of the decoding model tends to deteriorate over time, requiring regular recalibration. Initial strategies to compensate for these phenomena have been identified. The candidateapos;s objective will be to refine these strategies and propose an implementation in the form of a low-power digital circuit. The thesis will be carried out in Grenoble, within a dynamic project team composed of recognized experts in the design and clinical validation of brain-machine interfaces. The team is particularly distinguished in the design of specific integrated circuits and the development of signal decoding algorithms. This framework will allow the doctoral student to evolve in a stimulating scientific environment and to promote their research work, both in France and abroad.

master en microélectronique et traitement du signal

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