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Computational neurorehabilitation: modeling plasticity and learning to predict recovery.

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TLDR
It is argued that a fundamental understanding of neurologic recovery will be facilitated by developing computational models of the salient neural processes, including plasticity and learning systems of the brain, and integrating them into a context specific to rehabilitation.
Abstract
Despite progress in using computational approaches to inform medicine and neuroscience in the last 30 years, there have been few attempts to model the mechanisms underlying sensorimotor rehabilitation. We argue that a fundamental understanding of neurologic recovery, and as a result accurate predictions at the individual level, will be facilitated by developing computational models of the salient neural processes, including plasticity and learning systems of the brain, and integrating them into a context specific to rehabilitation. Here, we therefore discuss Computational Neurorehabilitation, a newly emerging field aimed at modeling plasticity and motor learning to understand and improve movement recovery of individuals with neurologic impairment. We first explain how the emergence of robotics and wearable sensors for rehabilitation is providing data that make development and testing of such models increasingly feasible. We then review key aspects of plasticity and motor learning that such models will incorporate. We proceed by discussing how computational neurorehabilitation models relate to the current benchmark in rehabilitation modeling – regression-based, prognostic modeling. We then critically discuss the first computational neurorehabilitation models, which have primarily focused on modeling rehabilitation of the upper extremity after stroke, and show how even simple models have produced novel ideas for future investigation. Finally, we conclude with key directions for future research, anticipating that soon we will see the emergence of mechanistic models of motor recovery that are informed by clinical imaging results and driven by the actual movement content of rehabilitation therapy as well as wearable sensor-based records of daily activity.

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Interpreting and Utilising Intersubject Variability in Brain Function

TL;DR: In this paper, between-subject variance in brain function is considered as data rather than noise, where variability is defined as a natural output of a noisy plastic system (the brain) where each subject embodies a particular parameterisation of that system.
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Restoring brain function after stroke — bridging the gap between animals and humans

TL;DR: Clinical trials can be designed in a stratified manner that takes into account when an intervention should be delivered and who is most likely to benefit, which is expected to lead to a substantial change in how restorative therapeutic strategies are delivered in patients after stroke.
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Principles of Neurorehabilitation After Stroke Based on Motor Learning and Brain Plasticity Mechanisms.

TL;DR: This work aims to unify the neuroscientific literature relevant to the recovery process and rehabilitation practice in order to provide a synthesis of the principles that constitute an effective neurorehabilitation approach.
Journal ArticleDOI

Wearable Movement Sensors for Rehabilitation: A Focused Review of Technological and Clinical Advances

TL;DR: In this article, state-of-the-art and next-generation wearable movement sensors, ranging from inertial measurement units to soft sensors, are presented across a wide spectrum of conditions that have potential to benefit from wearable sensors, including stroke, movement disorders, knee osteoarthritis and running injuries.
Journal ArticleDOI

Two hands, one brain, and aging.

TL;DR: The studies surveyed in this review reveal that aging is associated with cortical hyper‐activity (but also subcortical hypo‐activity) during performance of bimanual tasks and functional connectivity is increased in the resting brain as well as during task performance.
References
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TL;DR: This book provides a clear and simple account of the key ideas and algorithms of reinforcement learning, which ranges from the history of the field's intellectual foundations to the most recent developments and applications.
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TL;DR: As with previous analyses of effective connectivity, the focus is on experimentally induced changes in coupling, but unlike previous approaches in neuroimaging, the causal model ascribes responses to designed deterministic inputs, as opposed to treating inputs as unknown and stochastic.
Journal ArticleDOI

Predictive Reward Signal of Dopamine Neurons

TL;DR: Dopamine systems may have two functions, the phasic transmission of reward information and the tonic enabling of postsynaptic neurons.
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