Clinical and Functional Outcomes in Faller and Non-Faller Older Adults Clustered by Self-Organizing Maps: A Machine-Learning Approach

Author:

Almeida Milena L. S.1,Cavalcanti Aline O.2,Sarai Rebeca3,Silva Mateus A.3ORCID,Melo Paulo R. V.3,Silva Amanda A. M.2ORCID,Caldas Rafael R.3ORCID,Buarque Fernando3ORCID,Trombini-Souza Francis12ORCID

Affiliation:

1. Department of Physical Therapy, University of Pernambuco, Petrolina 56328-900, PE, Brazil

2. Master’s and Doctoral Programs in Rehabilitation and Functional Performance, University of Pernambuco, Petrolina 56328-900, PE, Brazil

3. Polytechnic School of Engineering, University of Pernambuco, Recife 50720-001, PE, Brazil

Abstract

A wide range of outcomes makes identifying clinical and functional features distinguishing older persons who fall from non-fallers challenging, especially for professionals with less clinical experience. Thus, this study aimed to map a high-dimensional and complex clinical and functional dataset and determine which outcomes better discriminate older adults with and without self-reported falls. For this, clinical, functional, and cognitive outcomes of 60 community-dwelling older adults classified as fallers and non-fallers were selected based on self-report of a single fall in the last 12 months. An unsupervised intelligent algorithm (Self-Organizing Maps—SOM) was used to cluster and topographically represent the data studied. The SOM model mapped and identified two different groups (topographic error: 0.00; sensitivity: 0.77; precision: 0.42; accuracy: 0.53; F1-score: 0.55) based on self-report of a single fall. We concluded that although two distinct groups were mapped and clustered by the SOM, participants were not necessarily fallers or non-fallers. The increased cost of cognitive demands regarding a motor task (Timed Up and Go Test) and the effect of the Trail Making Test (TMT) Part B regarding TMT Part A could discriminate the functional and cognitive patterns in community-dwelling older adults. Therefore, in clinical practice, identifying patterns involving the interaction between cognition and motor skills, even in once-only faller older adults, can be an efficient approach to assessment and, consequently, to compound intervention programs to prevent falls in this population.

Funder

National Council for Scientific and Technological Development (CNPq) funded Trombini-Souza’s research

Almeida’s scientific initiation scholarship

Coordenação de Aperfeiçoamento de Pessoal de Nível Superior—Brasil (CAPES) funded Caldas’s postdoctoral scholarship

University of Pernambuco—UPE

Publisher

MDPI AG

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