Enhancing gait rehabilitation using robotic assistance and functional electrical stimulation
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Authors
Christou, Andreas
Abstract
Wearable robots and assistive exoskeletons have great potential as tools for
rehabilitation and assisted living. By providing support to dedicated joints and
body segments, these devices can foster the independence of people suffering
from neurological diseases and improve quality of life. However, ensuring
these devices respond appropriately to the unique needs of each patient is
crucial, as it can play a decisive role in whether neural plasticity is induced.
This is particularly challenging as patients suffering from stroke or incomplete
spinal cord injury start regaining control of their limbs, where rigid robotdriven
interventions are no longer adequate to facilitate recovery and more
adaptive patient-driven interventions are required.
Motivated by the principles of neuroplasticity, this thesis delves into the
integration of wearable robots in neurological gait rehabilitation, with a central
focus on the design of personalised interventions for ambulatory patients.
More specifically, this thesis explores methods for the optimisation of robotic
controllers and collaborative functional electrical stimulation (FES) controllers,
such that assistance can be provided as needed, encouraging the patient to use
their residual strength and actively take part in gait training.
Firstly, we formulate the problem of providing assistance ‘as needed’ as
an optimisation problem and propose an offline model-based optimisation
method for the design of personalised rehabilitation interventions. Using
motion capture and high-fidelity musculoskeletal models, we construct a personalised
model of the human interacting with the robot, and we optimise the
controller of the robot using forward dynamics. We describe how this method
can be applied for both the design of novel near-optimal surrogate controllers
in the real-world, as well as the fine-tuning of parameterised controllers with a
known control structure. The effect of the offline model-based optimisation
method is evaluated both in simulation and experimentally, highlighting the
need for personalisation and the importance of capturing the inter-personal
and intra-personal variability in human behaviour.
An alternative to model-based optimisation is human-in-the-loop optimisation,
where the human response to different levels of assistance can be obtained
in real time, reducing uncertainties due to modelling bias. Human-in-the-loop
optimisation has proven to be an effective method for reducing the metabolic
cost in robot-assisted locomotion, but its potential in enhancing rehabilitation
has not been explored. We hypothesise that with the use of the Covariance
Matrix Adaptation Evolution Strategy (CMA-ES), time-dependent variations in
gait may be captured, facilitating the detection of time-varying local minima.
Using continuous optimisation over a two-day experimental protocol we carry
out a preliminary study of human-in-the-loop optimisation and present the
results obtained from healthy subjects.
Beyond the deployment of robotics in neural rehabilitation, numerous
physiological benefits can be achieved with the use of functional electrical stimulation
(FES). Particularly interesting is the integration of robotics with FES,
as the two have several complementary characteristics. However, due to the
increased complexity of hybrid robot-FES systems, controller personalisation
through model-based or human-in-the-loop optimisation becomes increasingly
demanding. To promote the triadic collaboration between human, robot and
FES, we propose a novel hierarchical and adaptive controller. We demonstrate
a hybrid system that can prioritise the voluntary contributions of the human
and effectively distribute the necessary assistive forces between the robot and
the FES, in order to delay the onset of muscle fatigue and provide assistance
as needed.
These methods contribute towards the advancement of techniques for designing
personalised interventions for gait rehabilitation, which could lead to
improved functional outcomes and accelerated recovery after training.
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