Regression Models for Predicting Peak and Continuous Three-Dimensional Spinal Loads during Symmetric and Asymmetric Lifting Tasks

Author:

Fathallah Fadi A.1,Marras William S.2,Parnianpour Mohamad2

Affiliation:

1. University of California, Davis, California

2. Ohio State University, Columbus, Ohio

Abstract

Most biomechanical assessments of spinal loading during industrial work have focused on estimating peak spinal compressive forces under static and sagittally symmetric conditions. The main objective of this study was to explore the potential of feasibly predicting three-dimensional (3D) spinal loading in industry from various combinations of trunk kinematics, kinetics, and subject-load characteristics. The study used spinal loading, predicted by a validated electromyographyassisted model, from 11 male participants who performed a series of symmetric and asymmetric lifts. Three classes of models were developed: (a) models using workplace, subject, and trunk motion parameters as independent variables (kinematic models); (b) models using workplace, subject, and measured moments variables (kinetic models); and (c) models incorporating workplace, subject, trunk motion, and measured moments variables (combined models). The results showed that peak 3D spinal loading during symmetric and asymmetric lifting were predicted equally well using all three types of regression models. Continuous 3D loading was predicted best using the combined models. When the use of such models is infeasible, the kinematic models can provide adequate predictions. Finally, lateral shear forces (peak and continuous) were consistently underestimated using all three types of models. The study demonstrated the feasibility of predicting 3D loads on the spine under specific symmetric and asymmetric lifting tasks without the need for collecting EMG information. However, further validation and development of the models should be conducted to assess and extend their applicability to lifting conditions other than those presented in this study. Actual or potential applications of this research include exposure assessment in epidemioligical studies, ergonomic intervention, and laboratory task assessment.

Publisher

SAGE Publications

Subject

Behavioral Neuroscience,Applied Psychology,Human Factors and Ergonomics

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1. Comparing Armband EMG-based Lifting Load Classification Algorithms using Various Lifting Trials;Proceedings of the Human Factors and Ergonomics Society Annual Meeting;2023-09

2. Optimization-based biomechanical lifting models for manual material handling: A comprehensive review;Proceedings of the Institution of Mechanical Engineers, Part H: Journal of Engineering in Medicine;2022-07-26

3. MANAGING LOW‐BACK DISORDER RISK IN THE WORKPLACE;HANDBOOK OF HUMAN FACTORS AND ERGONOMICS;2021-08-13

4. Three-dimensional asymmetric maximum weight lifting prediction considering dynamic joint strength;Proceedings of the Institution of Mechanical Engineers, Part H: Journal of Engineering in Medicine;2021-01-09

5. Selecting the appropriate input variables in a regression approach to estimate actively generated muscle moments around L5/S1 for exoskeleton control;Journal of Biomechanics;2020-03

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