5 CONCLUSIONS
In this study, we demonstrated how smartwatch
technology is a feasible tool to perform HRV
analysis, and could be used to objectively assess the
impact of physiologically adaptive training over the
autonomic cardiac regulation in healthy older adults.
Importantly, results demonstrate the effectiveness of
using physiologically adaptive Exergames to
maximize the time elders spent in the recommended
exertion levels. Our findings also suggest a careful
interpretation of HRV markers (time and frequency
domain) during physical exercise, since it is not clear
how or whether more variability can enhance training
effectiveness. In contrast, we hypothesized that
considering the recommended levels for
cardiorespiratory training established for the older
population, HR values should not display large
changes but be confined in a controlled manner
around the desirable target HR. Although this work is
a first step in this direction, more studies are required
to disentangle the role of HRV to support the
cardiorespiratory training in older people.
ACKNOWLEDGEMENTS
Authors would like to thank the staff personnel of
“Ginásio de Santo António - Funchal” for the
collaboration during the experiment as well as the
volunteers for the commitment with the procedure.
Teresa Paulino for developing the Exergame,
contributing in the development of the physiological
computing system and the final integration of the
system. This work was supported by the Portuguese
Foundation for Science and Technology through the
Augmented Human Assistance project (CMUP-
ERI/HCI/0046/2013), Projeto Estratégico
UID/EEA/50009/2013, and ARDITI (Agência
Regional para o Desenvolvimento da Investigação,
Tecnologia e Inovação).
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