Outline

Ingegneria Sismica

Ingegneria Sismica

Research on intelligent assessment and exercise risk prediction model of knee joint function in elderly patients

Author(s): Xinghai Yang1,2, Xiaoyan Liu1,2, Ye Li1,2, Xiaolu Zhang1,2
1Department of Orthopedics, West China Hospital, Sichuan University, Chengdu 610041, China
2West China School of Nursing, Sichuan University, Chengdu 610041, China
Yang, Xinghai. et al “Research on intelligent assessment and exercise risk prediction model of knee joint function in elderly patients.” Ingegneria Sismica Volume 43 Issue 2: 1-22, doi:10.65102/is2026569.

Abstract

This paper proposes a computational modeling oriented framework for intelligent knee function assessment and movement risk prediction in elderly patients. The framework revolves around the joint modeling of gait video, inertial signals, plantar pressure sequences, and knee flexion and extension measurements, and no longer relies on single source observations. This study constructs a data set containing 1240 evaluation samples from 186 elderly patients, and integrates multi-modal feature fusion, temporal representation of functional status and probabilistic risk inference mechanism in a unified framework to characterize the changes in joint stability, mobility and motor coordination. The experimental results show that the mean absolute error of functional score estimation is 4.9%, the accuracy of risk prediction is 91.3%, and the precision, recall and F1-score are 92.1%, 89.4% and 90.7%, respectively. Compared with CNN-LSTM, random forest and unimodal baseline models, the proposed framework shows strong stability and robustness under complex continuous action clips of elderly patients, which can provide feasible technical support for digital rehabilitation assessment and risk early warning in intelligent medical scenarios.

 

Keywords
Multimodal fusion; Functional assessment; Temporal modeling; Risk prediction

Related Articles

Huiqiao Liu1
1Yinchuan University of Energy, Ningxia, 750000, China
Xin Zhao1, Yan Li1, Xiangyang Cao1, Qiushuang Li1, Jianing Zhang1
1State Grid Shandong Electric Power Company Economic and Technological Research Institute ShanDong JiNan 250001, China
Dan Yang1
1School of Marxism, Suzhou Polytechnic University, Suzhou, 215104, China
Liuhang Shen1, Xiangwen Sun1
1Ulster college at Shaanxi University of Science &Technology, Xi’an,710021, Shaanxi, China