Abstract

Almost one third of population 65 years-old and older faces at least one fall per year. An accurate evaluation of the risk of fall through simple and easy-to-use measurements is an important issue in current clinic. A common way to evaluate balance in posturography is through the recording of the centre-of-pressure (CoP) displacement (statokinesigram) with force platforms. A variety of indices have been proposed to differentiate fallers from non fallers. However, no agreement has been reached whether these analyses alone can explain sufficiently the complex synergies of postural control. In this work, we study the statokinesigrams of 84 elderly subjects (80.3+− 6.4 years old), which had no impairment related to balance control. Each subject was recorded 25 seconds with eyes open and 25 seconds with eyes closed and information pertaining to the presence of problems of balance, such as fall, in the last six months, was collected. Five descriptors of the statokinesigrams were computed for each record, and a Ranking Forest algorithm was used to combine those features in order to evaluate each subject’s balance with a score. A classical train-test split approach was used to evaluate the performance of the method through ROC analysis. ROC analysis showed that the performance of each descriptor separately was close to a random classifier (AUC between 0.49 and 0.54). On the other hand, the score obtained by our method reached an AUC of 0.75 on the test set, consistent over multiple train-test split. This non linear multi-dimensional approach seems appropriate in evaluating complex postural control.

Highlights

  • Human ability to stand and walk is mainly the result of postural control

  • We propose an online version of the resulting scoring algorithm, which can be found at http://taureau.pppcmla.ens-cachan.fr/, and which can be applied to the existing dataset or to new statokinesigrams

  • Most of the features,except for0.1, did not show significant results through the conventional Wilcoxon test (p < 0.05), and their performances in ROC analysis was close to the performance of a random classifier (AUC between 0.49-0.54), questioning the features’ ability to successfully classify the two groups (Table 3)

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Summary

Introduction

Human ability to stand and walk is mainly the result of postural control. Postural control is achieved by a complex synergy of namely the visual, proprioceptive, and vestibular systems, as well as the central nervous system [1]. The combination of skeletal, visual, balance and gait impairments throughout age may lead to a correspondingly significant loss of postural control, PLOS ONE | DOI:10.1371/journal.pone.0167456. Scoring Balance with a Non Linear Approach The combination of skeletal, visual, balance and gait impairments throughout age may lead to a correspondingly significant loss of postural control, PLOS ONE | DOI:10.1371/journal.pone.0167456 December 9, 2016

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