Author:
Stern Lindsay,Fernie Geoff,Roshan Fekr Atena
Abstract
Abstract
Background
Decubitus ulcers are prevalent among the aging population due to a gradual decline in their overall health, such as nutrition, mental health, and mobility, resulting in injury to the skin and tissue. The most common technique to prevent these ulcers is through frequent repositioning to redistribute body pressures. Therefore, the main goal of this study is to facilitate the timely repositioning of patients through the use of a pressure mat to identify in-bed postures in various sleep environments. Pressure data were collected from 10 healthy participants lying down on a pressure mat in 19 various in-bed postures, correlating to the supine, prone, right-side, and left-side classes. In addition, pressure data were collected from participants sitting at the edge of the bed as well as an empty bed. Each participant was asked to lie in these 19 postures in three distinct testing environments: a hospital bed, a home bed, and a home bed with a foam mattress topper. To categorize each posture into its respective class, the pre-trained 2D ResNet-18 CNN and the pre-trained Inflated 3D CNN algorithms were trained and validated using image and video pressure mapped data, respectively.
Results
The ResNet-18 and Inflated 3D CNN algorithms were validated using leave-one-subject-out (LOSO) and leave-one-environment-out (LOEO) cross-validation techniques. LOSO provided an average accuracy of 92.07% ± 5.72% and 82.22% ± 8.50%, for the ResNet-18 and Inflated 3D CNN algorithms, respectively. Contrastingly, LOEO provided a reduced average accuracy of 85.37% ± 14.38% and 77.79% ± 9.76%, for the ResNet-18 and Inflated 3D CNN algorithms, respectively.
Conclusion
These pilot results indicate that the proposed algorithms can accurately distinguish between in-bed postures, on unseen participant data as well as unseen mattress environment data. The proposed algorithms can establish the basis of a decubitus ulcer prevention platform that can be applied to various sleeping environments. To the best of our knowledge, the impact of mattress stiffness has not been considered in previous studies regarding in-bed posture monitoring.
Funder
Mitacs Accelerate Program
Publisher
Springer Science and Business Media LLC
Reference17 articles.
1. Norton L, Parslow N, MClSc R, Johnston D, Ho C, Afalavi A, Mark M, MCISc RM, O’Sullivan-Drombolis D, Moffatt S, Crn RB. Prevention and Management of Pressure Injuries. Best Pract.
2. Gefen A. The burden of pressure ulcers is one of the most important, yet unsolved, current medical problems. This article reviews the status of technology-based options to prevent pressure ulcers. 2018; 19(2).
3. Pressure Injuries (Pressure Ulcers) and Wound Care: Practice Essentials, Background, Anatomy (2023). Publication: Medscape - eMedicine. Accessed 2023-06-13
4. Woodbury MG, Houghton PE. Prevalence of pressure ulcers in Canadian healthcare settings. Ostomy/Wound Management. 2004;50(10):22.
5. Diao H, Chen C, Yuan W, Amara A, Tamura T, Fan J, Meng L, Liu X, Chen W. Deep residual networks for sleep posture recognition with unobtrusive miniature scale smart mat system. IEEE Trans Biomed Circuits Syst. 2021;15(1):111–21. https://doi.org/10.1109/TBCAS.2021.3053602.
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献