Invention Grant
- Patent Title: Multiplicative recurrent neural network for fast and robust intracortical brain machine interface decoders
-
Application No.: US14826300Application Date: 2015-08-14
-
Publication No.: US10223634B2Publication Date: 2019-03-05
- Inventor: David Sussillo , Jonathan C. Kao , Sergey Stavisky , Krishna V. Shenoy
- Applicant: The Board of Trustees of the Leland Stanford Junior University
- Applicant Address: US CA Stanford
- Assignee: The Board of Trustees of the Leland Stanford Junior University
- Current Assignee: The Board of Trustees of the Leland Stanford Junior University
- Current Assignee Address: US CA Stanford
- Agency: Lumen Patent Firm
- Main IPC: G06N3/04
- IPC: G06N3/04 ; A61B5/04

Abstract:
A brain machine interface (BMI) to control a device is provided. The BMI has a neural decoder, which is a neural to kinematic mapping function with neural signals as input to the neural decoder and kinematics to control the device as output of the neural decoder. The neural decoder is based on a continuous-time multiplicative recurrent neural network, which has been trained as a neural to kinematic mapping function. An advantage of the invention is the robustness of the decoder to perturbations in the neural data; its performance degrades less—or not at all in some circumstances—in comparison to the current state decoders. These perturbations make the current use of BMI in a clinical setting extremely challenging. This invention helps to ameliorate this problem. The robustness of the neural decoder does not come at the cost of some performance, in fact an improvement in performance is observed.
Public/Granted literature
Information query