Literature DB >> 35817988

Preventing falls: the use of machine learning for the prediction of future falls in individuals without history of fall.

Ioannis Bargiotas1,2, Danping Wang3,4, Juan Mantilla3,4, Flavien Quijoux3,4,5, Albane Moreau3,4, Catherine Vidal3,4,6, Remi Barrois3,4, Alice Nicolai3,4, Julien Audiffren7, Christophe Labourdette3,4, François Bertin-Hugaul5, Laurent Oudre3,4, Stephane Buffat8, Alain Yelnik3,4,9, Damien Ricard3,4,10,11, Nicolas Vayatis3,4, Pierre-Paul Vidal3,4,12.   

Abstract

Nowadays, it becomes of paramount societal importance to support many frail-prone groups in our society (elderly, patients with neurodegenerative diseases, etc.) to remain socially and physically active, maintain their quality of life, and avoid their loss of autonomy. Once older people enter the prefrail stage, they are already likely to experience falls whose consequences may accelerate the deterioration of their quality of life (injuries, fear of falling, reduction of physical activity). In that context, detecting frailty and high risk of fall at an early stage is the first line of defense against the detrimental consequences of fall. The second line of defense would be to develop original protocols to detect future fallers before any fall occur. This paper briefly summarizes the current advancements and perspectives that may arise from the combination of affordable and easy-to-use non-wearable systems (force platforms, 3D tracking motion systems), wearable systems (accelerometers, gyroscopes, inertial measurement units-IMUs) with appropriate machine learning analytics, as well as the efforts to address these challenges.
© 2022. The Author(s).

Entities:  

Keywords:  Fall prediction; Force-platform; Frailty; Longitudinal follow-up; Machine learning; Wearables

Year:  2022        PMID: 35817988     DOI: 10.1007/s00415-022-11251-3

Source DB:  PubMed          Journal:  J Neurol        ISSN: 0340-5354            Impact factor:   6.682


  86 in total

1.  Cognitive demands of executing postural reactions: does aging impede attention switching?

Authors:  B E Maki; A Zecevic; H Bateni; N Kirshenbaum; W E McIlroy
Journal:  Neuroreport       Date:  2001-11-16       Impact factor: 1.837

Review 2.  Clinical practice. Preventing falls in elderly persons.

Authors:  Mary E Tinetti
Journal:  N Engl J Med       Date:  2003-01-02       Impact factor: 91.245

3.  Aging of human supraspinal locomotor and postural control in fMRI.

Authors:  Andreas Zwergal; Jennifer Linn; Guoming Xiong; Thomas Brandt; Michael Strupp; Klaus Jahn
Journal:  Neurobiol Aging       Date:  2010-11-03       Impact factor: 4.673

4.  Falls and Fall Injuries Among Adults Aged ≥65 Years - United States, 2014.

Authors:  Gwen Bergen; Mark R Stevens; Elizabeth R Burns
Journal:  MMWR Morb Mortal Wkly Rep       Date:  2016-09-23       Impact factor: 17.586

5.  Postural stability in the elderly: a comparison between fallers and non-fallers.

Authors:  I Melzer; N Benjuya; J Kaplanski
Journal:  Age Ageing       Date:  2004-11       Impact factor: 10.668

Review 6.  Gait disturbances in old age: classification, diagnosis, and treatment from a neurological perspective.

Authors:  Klaus Jahn; Andreas Zwergal; Roman Schniepp
Journal:  Dtsch Arztebl Int       Date:  2010-04-30       Impact factor: 5.594

Review 7.  Fear of falling: measurement strategy, prevalence, risk factors and consequences among older persons.

Authors:  Alice C Scheffer; Marieke J Schuurmans; Nynke van Dijk; Truus van der Hooft; Sophia E de Rooij
Journal:  Age Ageing       Date:  2008-01       Impact factor: 10.668

Review 8.  Single and dual task tests of gait speed are equivalent in the prediction of falls in older people: a systematic review and meta-analysis.

Authors:  Jasmine C Menant; Daniel Schoene; Mina Sarofim; Stephen R Lord
Journal:  Ageing Res Rev       Date:  2014-06-07       Impact factor: 10.895

9.  Do behavioral disturbances predict falls among nursing home residents?

Authors:  Hilde Sylliaas; Geir Selbaek; Astrid Bergland
Journal:  Aging Clin Exp Res       Date:  2012-06       Impact factor: 3.636

10.  Fall prediction in neurological gait disorders: differential contributions from clinical assessment, gait analysis, and daily-life mobility monitoring.

Authors:  Roman Schniepp; Anna Huppert; Julian Decker; Fabian Schenkel; Cornelia Schlick; Atal Rasoul; Marianne Dieterich; Thomas Brandt; Klaus Jahn; Max Wuehr
Journal:  J Neurol       Date:  2021-03-13       Impact factor: 4.849

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