| Literature DB >> 35052335 |
Rohit Tanwar1, Neha Nandal2, Mazdak Zamani3, Azizah Abdul Manaf4.
Abstract
Falling is one of the most serious health risk problems throughout the world for elderly people. Considerable expenses are allocated for the treatment of after-fall injuries and emergency services after a fall. Fall risks and their effects would be substantially reduced if a fall is predicted or detected accurately on time and prevented by providing timely help. Various methods have been proposed to prevent or predict falls in elderly people. This paper systematically reviews all the publications, projects, and patents around the world in the field of fall prediction, fall detection, and fall prevention. The related works are categorized based on the methodology which they used, their types, and their achievements.Entities:
Keywords: fall detection; fall prediction; fall prevention; fall risk factors; gait assessment
Year: 2022 PMID: 35052335 PMCID: PMC8776012 DOI: 10.3390/healthcare10010172
Source DB: PubMed Journal: Healthcare (Basel) ISSN: 2227-9032
Figure 1Fall risk factors [11].
Figure 2Types of falls [8,9,10].
Figure 3Fall detection approaches [2].
Figure 4Review methodology.
Figure 5Types of sensors used in fall detection.
Performance of accelerometer-based fall detection devices [4,5,6,7,8,9,10,11,12,13,15,16,17,19,20,21,22,23,24,25,26,27,28,29,30,31,32,33,34,35,36,37,38,39,40,41,42,43,44,45,46,47,48,49,50,51,52].
| Title | Author Details | Year | Specificity | Sensitivity |
|---|---|---|---|---|
| Evaluation of accelerometer-based fall detection algorithms on real-world falls | F. Bagalà et al. | 2012 | 83.3 | 57 |
| Evaluation of a threshold-based tri-axial accelerometer fall detection algorithm | A.K. Bourke et al. | 2007 | 91.6 | 93 |
| Comparison of low-complexity fall detection algorithms for body attached accelerometers | M. Kangas et al. | 2008 | 100 | 98 |
| Accurate, fast fall detection using gyroscopes and accelerometer-derived posture information | Q. Li et al. | 2009 | 92 | 91 |
| Barometric pressure and triaxial accelerometry-based falls event detection | F. Bianchi et al. | 2010 | 96.5 | 97.5 |
| Assessment of waist-worn tri-axial accelerometer-based fall-detection algorithms using continuous unsupervised activities | A. Bourke et al. | 2010 | 100 | 94.6 |
| A wearable pre-impact fall detector using feature selection and support vector machine | S. Shan et al. | 2010 | 100 | 100 |
| Unsupervised machine-learning method for improving the performance of ambulatory fall-detection systems | M. Yuwono et al. | 2012 | 99.6 | 98.6 |
| Evaluation of fall detection classification approaches | H. Kerdegari et al. | 2012 | 92 | 90.15 |
| Patient Fall Detection using Support Vector Machines | C. Doukas et al. | 2007 | 96.7 | 98.2 |
| A framework for daily activity monitoring and fall detection based on surface electromyography and accelerometer signals | J. Cheng et al. | 2013 | 97.66 | 95.33 |
Figure 6Variation of the number of publications (per publisher).
Figure 7Variation of the number of publications (publisher-wise).
Figure 8Qualitative analysis of various fall prediction and prevention techniques.
Figure 9Patents granted on fall prediction or detection.
Details of patents granted [113].
| S. No. | Patent ID | Patent Title | Year of | Inventor Name | Country |
|---|---|---|---|---|---|
| 1 | US10037669B2 | Fall detection technology | 2018 | Mark Andrew Hanson, Jean-Paul Martin, Adam T. Barth, Christopher Silverman | USA |
| 2 | US8990041B2 | Fall detection | 2010 | Mark D. Grabiner, Kenton R. Kaufman, Barry K. Gilbert | USA |
| 3 | US20160100776A1 | Fall detection and fall risk detection systems and methods | 2015 | Bijan BolooriNajafi, Ashkan | USA |
| 4 | US20180263534 | Fall detection device and method for controlling thereof | 2018 | Han-sung Lee, Jae-geol Cho, Moo-rim Kim, Chang-hyun Kim | USA |
| 5 | US20180146737 | Shoe system for the detection and monitoring of health, vitals, and fall detection | 2018 | Joseph Goodrich | USA |
| 6 | US20180007257 | Automatic detection by a wearable camera | 2018 | Senem Velipasalar, Mauricio Casares, Akhan Almagambetov | USA |
| 7 | 2316/CHE/2013 | System And Method For Personal Crash/Fall Detection And Notification | 2013 | Abhishek H Latthe | INDIA |
Details of funded projects for fall detection or prevention.
| Project Title | Investigators | Year of | Organization | Funding Details | Project Description |
|---|---|---|---|---|---|
| “Randomized Trial of a Multifactorial Fall Injury Prevention Strategy: A Joint Initiative of PCORI and the National Institute on Aging of the National Institutes of Health” [ | Shalender Bhasin, Thomas Gill, | 2014 | Harvard Medical School; Yale Medical School; UCLA Medical School | Budget: | Behavioral Interventions, Care Coordination, Other Clinical Interventions, |
| “Home Safety Adaptations for the Elderly (Home SAFE)” [ | Unspecified | 2010 | Fall Prevention Center of Excellence, headquartered at the University of Southern California Leonard Davis | Budget: Unspecified | Home safety for older people from Fall, fire, etc. and develop and implement related strategies |
| “Design and Development of fall prediction and protection system for pelvis & femur fractures: Preliminary study” [ | Dr. Dinesh Kalyanasundara m | 2015 | Centre for Biomedical Engineering, Indian Institute of | Budget: Rs.26,78,162/- | Unspecified |
| “WIISEL(Wireless Insole for Independent and Safe Elderly Living)” [ | Fanny Breuil, Meritxell Garcia Milà | 2007 | WIISEL, 7th Framework Programme | Budget: $2.9 M | To prevent falls in older people |
| “Development of a wireless sensor network based gait assessment system for fall predictionin | Prof. Subrat Kar | 2008 | Bharti School of Telecommunication Technology and Management, | Budget: Rs.36,73,200/- | Unspecified |