Optimal calibration of the learning rate in closed-loop adaptive brain-machine interfaces

Author(s):  
Han-Lin Hsieh ◽  
Maryam M. Shanechi
Author(s):  
Xilin Liu ◽  
Milin Zhang ◽  
Han Hao ◽  
Andrew G. Richardson ◽  
Timothy H. Lucas ◽  
...  

Author(s):  
Ethan Sorrell ◽  
Michael E. Rule ◽  
Timothy O’Leary

Brain–machine interfaces (BMIs) promise to restore movement and communication in people with paralysis and ultimately allow the human brain to interact seamlessly with external devices, paving the way for a new wave of medical and consumer technology. However, neural activity can adapt and change over time, presenting a substantial challenge for reliable BMI implementation. Large-scale recordings in animal studies now allow us to study how behavioral information is distributed in multiple brain areas, and state-of-the-art interfaces now incorporate models of the brain as a feedback controller. Ongoing research aims to understand the impact of neural plasticity on BMIs and find ways to leverage learning while accommodating unexpected changes in the neural code. We review the current state of experimental and clinical BMI research, focusing on what we know about the neural code, methods for optimizing decoders for closed-loop control, and emerging strategies for addressing neural plasticity. Expected final online publication date for the Annual Review of Control, Robotics, and Autonomous Systems, Volume 4 is May 2021. Please see http://www.annualreviews.org/page/journal/pubdates for revised estimates.


2021 ◽  
pp. 59-64
Author(s):  
L. Ferrero ◽  
V. Quiles ◽  
M. Ortiz ◽  
E. Iáñez ◽  
J. L. Contreras-Vidal ◽  
...  

Technologies ◽  
2016 ◽  
Vol 4 (2) ◽  
pp. 18
Author(s):  
Gautam Kumar ◽  
Mayuresh Kothare ◽  
Nitish Thakor ◽  
Marc Schieber ◽  
Hongguang Pan ◽  
...  

2013 ◽  
Vol 25 (9) ◽  
pp. 2373-2420 ◽  
Author(s):  
Kevin C. Kowalski ◽  
Bryan D. He ◽  
Lakshminarayan Srinivasan

The closed-loop operation of brain-machine interfaces (BMI) provides a context to discover foundational principles behind human-computer interaction, with emerging clinical applications to stroke, neuromuscular diseases, and trauma. In the canonical BMI, a user controls a prosthetic limb through neural signals that are recorded by electrodes and processed by a decoder into limb movements. In laboratory demonstrations with able-bodied test subjects, parameters of the decoder are commonly tuned using training data that include neural signals and corresponding overt arm movements. In the application of BMI to paralysis or amputation, arm movements are not feasible, and imagined movements create weaker, partially unrelated patterns of neural activity. BMI training must begin naive, without access to these prototypical methods for parameter initialization used in most laboratory BMI demonstrations. Naive adaptive BMI refer to a class of methods recently introduced to address this problem. We first identify the basic elements of existing approaches based on adaptive filtering and define a decoder, ReFIT-PPF to represent these existing approaches. We then present Joint RSE, a novel approach that logically extends prior approaches. Using recently developed human- and synthetic-subjects closed-loop BMI simulation platforms, we show that Joint RSE significantly outperforms ReFIT-PPF and nonadaptive (static) decoders. Control experiments demonstrate the critical role of jointly estimating neural parameters and user intent. In addition, we show that nonzero sensorimotor delay in the user significantly degrades ReFIT-PPF but not Joint RSE, owing to differences in the prior on intended velocity. Paradoxically, substantial differences in the nature of sensory feedback between these methods do not contribute to differences in performance between Joint RSE and ReFIT-PPF. Instead, BMI performance improvement is driven by machine learning, which outpaces rates of human learning in the human-subjects simulation platform. In this regime, nuances of error-related feedback to the human user are less relevant to rapid BMI mastery.


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