SCH: Model-informed patient-specific rehabilitation using robotics and neuromuscular modeling
University Of Delaware, Newark DE
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Abstract
PROJECT DESCRIPTION 1 Motivation Stroke is a leading cause of long-term disability in the United States. Stroke survivors now constitute around 3% of the over-20 population, with 50% of stroke-affected subjects left with impaired propulsion on the paretic side, resulting in asymmetric movement and compromised balance [1]. The hemiparetic gait observed in many individuals post-stroke is slower and more metabolically expensive than in healthy individuals [2â6], and is a primary contributor to reduced community participation and quality of life [7â11]. Contemporary approaches to gait training are based on repetitive therapy often conducted on treadmills [12], with variants including the combination of human or robotic assistance [13], body weight support [14], and functional electrical stimulation [15]. Robotic intervention enables systematic and accurate modulation of joint-level variables, such as assis- tance torques and joint angles/velocities. Robotics is an intriguing tool for gait training, but the capability of using robots as tools to support locomotor learning for rehabilitation purposes has not yet been fully demonstrated. Earlier implementations of robot-aided gait rehabilitation provided non-convincing or nega- tive results [13, 16], as extensively quantiï¬ed in a meta-analysis [17]. Currently, the effects of robot-aided gait training in stroke have yet to exceed those achieved with conventional therapy methods [17]. We speculate that such limitations are mostly imputable to the controllers used for robot-aided gait train- ing. The majority of robotic devices, designed speciï¬cally to rehabilitate gait, utilize one of the various controller forms (e.g., force control, position control, or impedance control), and controller update methods (e.g., assist-as-needed control, inter-limb coordination, or ï¬nite state machine), to ultimately promote spe- ciï¬c features of gait kinematics [18]. The limited efï¬cacy of these methods could be due to their lack of targeting speciï¬c functional mechanisms of gait, which are only partially described by joint kinematics. From an extremely reductionist perspective, walking is pushing ones' center of mass in a desired direction while not falling. Fundamentally, walking involves three main sub-tasks: propulsion, limb advancement, and balance [19]. Of these components, limb advancement may be based on kinematic control, but is the least energetically demanding. Instead, the sub-tasks of propulsion and balance require precise neuromuscular coordination, and speciï¬cally mediation of the interaction forces between the walker and ground. Despite their fundamental importance, there have been very little efforts in rehabilitation robotics in developing robot-aided methods to study and/or train propulsion and balance in post-stroke rehabilitation. The overarching goal of the proposed research Measure is to advance the science of therapeutic engineering Walking Surfac~ for gait by identifying optimal robot interventions " ., and therapies with speciï¬c functional outcomes. Stiffne.ss Perturbations Model Those interventions will be developed using a new modeling approach to target enhanced propulsion Evaluate and balance in stroke survivors. The sense-plan- act paradigm in robotics will be applied in a unique way to robot-assisted model-informed rehabilita- tion research. The proposed framework will inte- grate robotic solutions that will allow the creation of comprehensive models of sensorimotor mecha- nisms of gait. These models will then inform a set of interventions to stroke survivors, the outcomes of which will be fed back to the developed models to uncover and suggest novel patient-speciï¬c train- ing strategies. The proposed approach will enable Figure 1: Proposed integrative research framework fol- a better understanding of essential mechanisms lowing the sense-plan-act paradigm in robotics. responsible for walking and lead to the design of optimized and personalized post-stroke rehabilitation strategies. The overall framework of the proposed 49
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