Abstract
Falls are among the frequent causes of the loss of mobility and independence in the elderly population. Given the global population aging, new strategies for predicting falls are required to reduce the number of their occurrences. In this study, a multifactorial screening protocol was applied to 281 community-dwelling adults aged over 65, and their 12-month prospective falls were annotated. Clinical and self-reported data, along with data from instrumented functional tests, involving inertial sensors and a pressure platform, were fused using early, late, and slow fusion approaches. For the early and late fusion, a classification pipeline was designed employing stratified sampling for the generation of the training and test sets. Grid search with cross-validation was used to optimize a set of feature selectors and classifiers. According to the slow fusion approach, each data source was mixed in the middle layers of a multilayer perceptron. The three studied fusion approaches yielded similar results for the majority of the metrics. However, if recall is considered to be more important than specificity, then the result of the late fusion approach providing a recall of [Formula: see text] is better compared with the results achieved by the other two approaches.
Highlights
T HE worldwide population aged over 65 is growing rapidly
This study describes an approach to predicting falls based on a multifactorial screening protocol that combines personal, inertial, and pressure platform data
We optimized the number of components for principal component analysis (PCA) and threshold for the variance threshold method
Summary
T HE worldwide population aged over 65 is growing rapidly. The consequences of this phenomenon are social and health-related, and economic. The process of aging affects the ability of a person to maintain balance, mobility, and muscle strength and to react properly to unexpected situations such as slipping or stumbling. There are cross-related factors resulting from health conditions, including loss of auditory. Manuscript received January 15, 2019; revised May 20, 2019, July 12, 2019, September 2, 2019, and October 9, 2019; accepted October 29, 2019. Date of publication November 8, 2019; date of current version January 6, 2020.
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