computational model of motor recovery (Han et al.,
2008) that can predict the positive influence of
reinforcement-based training on arm use (Ballester
et al., 2015a). In this work, we proposed that hand
selection is modulated by two main parameters: ex-
pected success and effort. We conducted two clini-
cal experiments that suggested that by increasing the
value of using the paretic limb (expected success) and
decreasing its cost (effort) we can promote its spon-
taneous use (Ballester et al., 2015b) and boost recov-
ery (Ballester et al., 2015a). Based on these findings,
we now explore how wearable devices could allow
the ubiquitous delivery of a variant of Reinforcement-
Induced Movement Therapy (RIMT).
Our results suggest that monitoring the amount of
arm use and providing knowledge of progress could
provide multiple benefits: 1) it may allow the pa-
tient to set-up implicit goals, and 2) it may increase
the value of using the paretic limb, therefore bias-
ing effector selection patterns. Thus, the repetitive
exposure to reinforcement-based feedback after per-
formance may modify both the individual’s goals and
self-representation. While the first may provide the
necessary context for the introduction of behavioral
changes, the second may consolidate them. Inter-
estingly, a recent controlled clinical trial including
156 acute stroke patients evaluated the clinical impact
of using wearable triaxial accelerometers at both an-
kles and recording continuously for 8 hours per day
(Dorsch et al., 2015). Once a week, participants in
the experimental group also reviewed the results of
their summary activity graphs with the therapists. Re-
sults indicated that the group receiving the augmented
feedback did not spend a greater amount of time walk-
ing. This findings seem to be contrary to our re-
sults. This difference can be explained by three fac-
tors: 1) the RGS-Wear provided frequent daily feed-
back about performance and progress, 2) the patients
using RGS-Wear reviewed their activity feedback au-
tonomously and 3) the RGS-Wear was applied on the
upper-extremities while Dorsch, et al. focused in gait
and lower-extremities.
Future work aims at validating the impact of RGS-
Wear in arm use by conducting a controlled longitu-
dinal clinical study on acute stroke patients. In this
study we plan to measure the retention of improve-
ments in arm use induced by the RGS-Wear, and its
consequent influence on motor recovery.
ACKNOWLEDGEMENTS
We would like to acknowledge all patients who par-
ticipated in this study. Special thanks to Dr. Boza
G
´
omez for her assistance in recruiting stroke patients.
This project was supported through ERC project
cDAC (FP7-IDEAS-ERC 341196), EC H2020 project
socSMCs (H2020-EU.1.2.2. 641321) and MINECO
project SANAR (Gobierno de Espaa).
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