The Applications of Artificial Intelligence for Assessing Fall Risk: Systematic Review

被引:14
作者
Gonzalez-Castro, Ana [1 ]
Leiros-Rodriguez, Raquel [2 ]
Prada-Garcia, Camino [3 ]
Benitez-Andrades, Jose Alberto [4 ]
机构
[1] Univ Leon, Nursing & Phys Therapy Dept, Astorga Ave, Ponferrada 24401, Spain
[2] Univ Leon, Nursing & Phys Therapy Dept, SALBIS Res Grp, Ponferrada, Spain
[3] Univ Valladolid, Dept Prevent Med & Publ Hlth, Valladolid, Spain
[4] Univ Leon, Dept Elect Syst & Automat Engn, SALBIS Res Grp, Leon, Spain
关键词
machine learning; accidental falls; public health; patient care; artificial intelligence; AI; fall risk; MODELS; ADULTS;
D O I
10.2196/54934
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: Falls and their consequences are a serious public health problem worldwide. Each year, 37.3 million falls requiring medical attention occur. Therefore, the analysis of fall risk is of great importance for prevention. Artificial intelligence (AI) represents an innovative tool for creating predictive statistical models of fall risk through data analysis. Objective: The aim of this review was to analyze the available evidence on the applications of AI in the analysis of data related to postural control and fall risk. Methods: A literature search was conducted in 6 databases with the following inclusion criteria: the articles had to be published within the last 5 years (from 2018 to 2024), they had to apply some method of AI, AI analyses had to be applied to data from samples consisting of humans, and the analyzed sample had to consist of individuals with independent walking with or without the assistance of external orthopedic devices. Results: We obtained a total of 3858 articles, of which 22 were finally selected. Data extraction for subsequent analysis varied in the different studies: 82% (18/22) of them extracted data through tests or functional assessments, and the remaining 18% (4/22) of them extracted through existing medical records. Different AI techniques were used throughout the articles. All the research included in the review obtained accuracy values of >70% in the predictive models obtained through AI. Conclusions: The use of AI proves to be a valuable tool for creating predictive models of fall risk. The use of this tool could have a significant socioeconomic impact as it enables the development of low-cost predictive models with a high level of accuracy.
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页数:16
相关论文
共 86 条
[11]   Levels, trends, and determinants of cause-of-death diversity in a global perspective: 1990-2019 [J].
Calazans, Julia Almeida ;
Permanyer, Inaki .
BMC PUBLIC HEALTH, 2023, 23 (01)
[12]   Predicting pharmaceutical inkjet printing outcomes using machine learning [J].
Carou-Senra, Paola ;
Ong, Jun Jie ;
Castro, Brais Muniz ;
Seoane-Viano, Iria ;
Rodriguez-Pombo, Lucia ;
Cabalar, Pedro ;
Alvarez-Lorenzo, Carmen ;
Basit, Abdul W. ;
Perez, Gilberto ;
Goyanes, Alvaro .
INTERNATIONAL JOURNAL OF PHARMACEUTICS-X, 2023, 5
[13]   Driver Intent-Based Intersection Autonomous Driving Collision Avoidance Reinforcement Learning Algorithm [J].
Chen, Ting ;
Chen, Youjing ;
Li, Hao ;
Gao, Tao ;
Tu, Huizhao ;
Li, Siyu .
SENSORS, 2022, 22 (24)
[14]   Relationship between stair ascent gait speed, bone density and gait characteristics of postmenopausal women [J].
Dostan, Ali ;
Dobson, Catherine ;
Vanicek, Natalie .
PLOS ONE, 2023, 18 (03)
[15]   Identifying Fall Risk Predictors by Monitoring Daily Activities at Home Using a Depth Sensor Coupled to Machine Learning Algorithms [J].
Dubois, Amandine ;
Bihl, Titus ;
Bresciani, Jean-Pierre .
SENSORS, 2021, 21 (06) :1-10
[16]   Automatic measurement of fall risk indicators in timed up and go test [J].
Dubois, Amandine ;
Bihl, Titus ;
Bresciani, Jean-Pierre .
INFORMATICS FOR HEALTH & SOCIAL CARE, 2019, 44 (03) :237-245
[17]   Automatic and Efficient Fall Risk Assessment Based on Machine Learning [J].
Eichler, Nadav ;
Raz, Shmuel ;
Toledano-Shubi, Adi ;
Livne, Daphna ;
Shimshoni, Ilan ;
Hel-Or, Hagit .
SENSORS, 2022, 22 (04)
[18]   A systematic review of fear of falling and related constructs after hip fracture: prevalence, measurement, associations with physical function, and interventions [J].
Gadhvi, Chandini ;
Bean, Debbie ;
Rice, David .
BMC GERIATRICS, 2023, 23 (01)
[19]   Accelerometric Assessment of Postural Balance in Children: A Systematic Review [J].
Garcia-Soidan, Jose L. ;
Leiros-Rodriguez, Raquel ;
Romo-Perez, Vicente ;
Garcia-Lineira, Jesus .
DIAGNOSTICS, 2021, 11 (01)
[20]  
Ghosh M, 2021, Artificial Intelligence for Information Management: A Healthcare Perspective, P88