Using supervised learning machine algorithm to identify future fallers based on gait patterns: A two-year longitudinal study

被引:10
|
作者
Gillain, Sophie [1 ]
Boutaayamou, Mohamed [2 ]
Schwartz, Cedric [3 ]
Bruls, Olivier [3 ]
Bruyere, Olivier [4 ]
Croisier, Jean-Louis [3 ,5 ]
Salmon, Eric [6 ,7 ]
Reginster, Jean-Yves [8 ,9 ]
Garraux, Gaetan [6 ,10 ]
Petermans, Jean [1 ]
机构
[1] Liege Univ Hosp, Geriatr Dept, Route Gaillarmont 600, B-4032 Chenee, Belgium
[2] Univ Liege, Dept Elect Engn & Comp Sci, INTELSIG Lab, Liege, Belgium
[3] Univ Liege, Lab Human Mot Anal LAMH, Liege, Belgium
[4] Univ Liege, WHO Collaborating Ctr Publ Hlth Aspects Musculosk, Epidemiol & Hlth Econ, Liege, Belgium
[5] Univ Liege, Sci Motr Dept, Liege, Belgium
[6] Univ Liege, Neurol Dept, Liege, Belgium
[7] Univ Liege, GIGA Cyclotron Res Ctr, Liege, Belgium
[8] Univ Liege, Res Unit Publ Hlth, Epidemiol & Hlth Econ, Liege, Belgium
[9] King Saud Univ, Coll Sci, WHO Collaborating Ctr Publ Hlth Aspects Musculosk, Biochem Dept,Chair Biomarkers Chron Dis, Riyadh, Saudi Arabia
[10] Univ Liege, GIGA CRC In Vivo Imaging, Liege, Belgium
关键词
Supervise machine learning algorithm; Classification; Fall risk; Prospective; Older adults; OLDER-ADULTS; RISK-FACTORS; DATA SET; PEOPLE; WALKING;
D O I
10.1016/j.exger.2019.110730
中图分类号
R592 [老年病学]; C [社会科学总论];
学科分类号
03 ; 0303 ; 100203 ;
摘要
Introduction: Given their major health consequences in the elderly, identifying people at risk of fall is a major challenge faced by clinicians. A la of studies have confirmed the relationships between gait parameters and falls incidence. However, accurate tools to predict individual risk among independent older adults without a history of falls are lacking. Objective: This study aimed to apply a supervised learning algorithm to a data set recorded in a two-year longitudinal study, in order to build a classification tree that could discern subsequent fallers based on their gait patterns. Methods: A total of 105 adults aged > 65 years, living independently at home and without a recent fall history were included in a two-year longitudinal study. All underwent physical and functional assessment. Gait speed, stride length, frequency, symmetry and regularity, and minimum toe clearance were recorded in comfortable, fast and dual task walking conditions in a standardized laboratory environment. Fall events were recorded using personal falls diaries. A supervised machine learning algorithm (J48) has been applied to the data recorded at inclusion in order to obtain a classification tree able to identify future fallers. Results: Based on fall information from 96 volunteers, a classification tree correctly identifying 80% of future fallers based on gait patterns, gender, and stiffness, was obtained, with accuracy of 84%, sensitivity of 80%, specificity of 87%, a positive predictive value of 78%, and a negative predictive value of 88%. Discussion: While the performances of the classification tree warrant further confirmation, it is the first predictive tool based on gait parameters that are identified (not clustered) allowing its use by other research teams. Conclusion: This original longitudinal pilot study using a supervised machine learning algorithm, shows that gait parameters and clinical data can be used to identify future fallers among independent older adults.
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页数:5
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