» Articles » PMID: 37391464

Assessing Physical Abilities of Sarcopenia Patients Using Gait Analysis and Smart Insole for Development of Digital Biomarker

Overview
Journal Sci Rep
Specialty Science
Date 2023 Jun 30
PMID 37391464
Authors
Affiliations
Soon will be listed here.
Abstract

The aim of this study is to compare variable importance across multiple measurement tools, and to use smart insole and artificial intelligence (AI) gait analysis to create variables that can evaluate the physical abilities of sarcopenia patients. By analyzing and comparing sarcopenia patients with non sarcopenia patients, this study aims to develop predictive and classification models for sarcopenia and discover digital biomarkers. The researchers used smart insole equipment to collect plantar pressure data from 83 patients, and a smart phone to collect video data for pose estimation. A Mann-Whitney U was conducted to compare the sarcopenia group of 23 patients and the control group of 60 patients. Smart insole and pose estimation were used to compare the physical abilities of sarcopenia patients with a control group. Analysis of joint point variables showed significant differences in 12 out of 15 variables, but not in knee mean, ankle range, and hip range. These findings suggest that digital biomarkers can be used to differentiate sarcopenia patients from the normal population with improved accuracy. This study compared musculoskeletal disorder patients to sarcopenia patients using smart insole and pose estimation. Multiple measurement methods are important for accurate sarcopenia diagnosis and digital technology has potential for improving diagnosis and treatment.

Citing Articles

Cross-sectional study comparing smart insoles and manual methods for short physical performance battery in hip fracture patients.

Kim S, Kim S, Kim H, Kim H, Yoo J Aging Clin Exp Res. 2025; 37(1):61.

PMID: 40021544 PMC: 11870933. DOI: 10.1007/s40520-025-02960-6.


Comparing Stability, Gait, and Functional Score after 40-mm Dual-Mobility Hip Arthroplasty to 36-mm Head Hip Arthroplasty in Elderly Hip Fracture Patients.

Cha Y, Lee S, Bae J, Kang Y, Baek J, Kang J Clin Orthop Surg. 2025; 17(1):62-70.

PMID: 39912063 PMC: 11791493. DOI: 10.4055/cios24148.


Gait-Based AI Models for Detecting Sarcopenia and Cognitive Decline Using Sensor Fusion.

Aznar-Gimeno R, Perez-Lasierra J, Perez-Lazaro P, Bosque-Lopez I, Azpiroz-Puente M, Salvo-Ibanez P Diagnostics (Basel). 2025; 14(24.

PMID: 39767247 PMC: 11675090. DOI: 10.3390/diagnostics14242886.


Advances in applying somatosensory interaction technology in geriatric care: A bibliometric analysis.

Pei C, Lyu W, Liu J, Wang Y, Ye W, Zhou Z Int J Nurs Sci. 2024; 11(5):571-577.

PMID: 39698138 PMC: 11650660. DOI: 10.1016/j.ijnss.2024.10.009.


Sarcopenia diagnosis using skeleton-based gait sequence and foot-pressure image datasets.

Naseem M, Kim N, Seo H, Lee J, Chung C, Shin S Front Public Health. 2024; 12:1443188.

PMID: 39664552 PMC: 11631742. DOI: 10.3389/fpubh.2024.1443188.


References
1.
Rom O, Kaisari S, Aizenbud D, Reznick A . Lifestyle and sarcopenia-etiology, prevention, and treatment. Rambam Maimonides Med J. 2013; 3(4):e0024. PMC: 3678825. DOI: 10.5041/RMMJ.10091. View

2.
Chen L, Woo J, Assantachai P, Auyeung T, Chou M, Iijima K . Asian Working Group for Sarcopenia: 2019 Consensus Update on Sarcopenia Diagnosis and Treatment. J Am Med Dir Assoc. 2020; 21(3):300-307.e2. DOI: 10.1016/j.jamda.2019.12.012. View

3.
Saeki C, Takano K, Oikawa T, Aoki Y, Kanai T, Takakura K . Comparative assessment of sarcopenia using the JSH, AWGS, and EWGSOP2 criteria and the relationship between sarcopenia, osteoporosis, and osteosarcopenia in patients with liver cirrhosis. BMC Musculoskelet Disord. 2019; 20(1):615. PMC: 6933666. DOI: 10.1186/s12891-019-2983-4. View

4.
Lim W, Cheong C, Lim J, Tan M, Chia J, Malik N . Singapore Clinical Practice Guidelines For Sarcopenia: Screening, Diagnosis, Management and Prevention. J Frailty Aging. 2022; 11(4):348-369. DOI: 10.14283/jfa.2022.59. View

5.
Nagano H, Begg R . Shoe-Insole Technology for Injury Prevention in Walking. Sensors (Basel). 2018; 18(5). PMC: 5982664. DOI: 10.3390/s18051468. View