and these groups should, at the very least, take into
consideration not only age and gender, but also the
behavioral patterns typical of those groups. Future
studies should continue to pursue this research
avenue, by exploring how other personal
characteristics influence technology acceptance as
people get older and approach the elderly stage of life.
5.2 Limitations and Future Directions
The previously discussed findings should be
considered in view of at least two methodological
limitations, which may guide future research. A first
limitation is that there were more participants in the
younger group. The sample was split at the age of 40
to achieve a relatively large difference between the
mean ages of younger and older groups. However,
this resulted in an unequal sample size per group.
Moreover, due to the recruitment procedure, there
was a larger representation of women than men in our
sample. Future studies should aim to collect larger
samples, with an equivalent number of younger and
older adults, as well as men and women. This would
also allow researchers to use more sophisticated
techniques, such as multiple-group structural
equation modeling, to test and compare different
models of technology acceptance across age groups
and gender. Additionally, because ageing brings
changes in diverse aspects, such as physical health,
perception, cognition, and psychological functioning
(Charness and Boot, 2009), it would be important to
control for these aspects, particularly in older
samples. Along with age, gender and personality,
these personal characteristics may also play a role in
the way that people use or intend to use mHealth. A
second limitation was the lack of measurement of
previous knowledge and actual use of mobile devices
and health applications. This seems to be an important
factor to take into account in future studies. The
previous experience with technologies was also
proposed to influence individuals’ behavioral
intention to use technologies (Venkatesh et al., 2012;
Venkatesh et al., 2003), showing the relevance of
considering this variable when testing technology
acceptance models.
6 CONCLUSIONS
Despite the increased attention to factors influencing
technology acceptance, research examining the role
of personal characteristics is still scarce. Our study
provided additional knowledge on the role of age,
gender, and personality in younger and older adults’
behavioral intention to use mHealth. This knowledge
is useful to develop and adjust technologies to key
characteristics of target groups. With elders
displaying a marked resistance in accepting
technology (Charness and Boot, 2009), the promotion
of mHealth in earlier stages of life seems particularly
important to create habits to use technology. These
habits may promote the sustained use of technology
throughout the lifespan and, at the same time, act as
preventive measures to negative health outcomes.
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