different levels of fall risk. Despite the differences in
protocol and population analysed (only for
community settings and validated in a prospective
study), similar accuracy and sensitivity were
reported. Murphy et al. (Murphy et al. 2003)
concluded that ‘floor transfer’ and ‘50 ft walk’ tests
combined can discriminate fallers from non-fallers
with an overall accuracy of 96% (82% sensitivity
and 100% specificity).
A similar study from Liu et al. (Liu et al. 2011)
has used metrics from instrumented TUG, alternate
step test and 5 times STS to classify between fallers
and non fallers and the best models have achieved
70% accuracy (68% sensitivity and 73% specificity).
5 CONCLUSIONS
The objective of this study was to compare the
performance of functional tests scores and features
obtained from inertial sensors and pressure
platforms to discriminate between low and high risk
of fall. A fall level was defined based on history of
falls and usage of walking aid and was used as label
in classification and regression algorithms. Only
subjects who performed the three functional tests
(TUG, STS and 4-stage) were included in this study.
The association between functional tests scores
and fear of falling with fall level are not random
(Fisher’s exact test p-value < 0.05), concluding that
individuals with functional disabilities and fear of
falling have greater odds of having a higher fall level
than individuals without physical disabilities and
without fear of falling. Moreover, when comparing
personal metrics with fall level, it was concluded for
some personal metrics that random association with
fall level cannot be excluded.
The differentiation power of personal metrics
and tests scores was considerable different when
tested with classification and regression methods.
Accuracies above 80% were obtained for all
algorithms. Naïve Bayes outperforms with an
accuracy of 84.82% (74.58% of precision and
71.19% of recall).
However, features from inertial sensors and
pressure platform obtained better results for the
same algorithms than only tests scores. Naïve Bayes
classifier obtained an accuracy of 87.16% (88.18%
of precision and 97.50% of recall).
These results support the conclusion that
instrumentation of fall risk assessment tests with
inertial sensors and pressure platform could better
discriminate the individuals at a higher risk of
falling.
ACKNOWLEDGEMENTS
Authors would like to thank all participants and
centres, clinics and other entities hosting the
screenings. Financial support from project
FallSensing: Technological solution for fall risk
screening and falls prevention (POCI-01-0247-
FEDER-003464), co-funded by Portugal 2020,
framed under the COMPETE 2020 (Operational
Programme Competitiveness and
Internationalization) and European Regional
Development Fund (ERDF) from European Union
(EU).
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