Department of Industrial and Systems Engineering, Northern Illinois University, DeKalb, IL, United States of America.
Department of Mechanical Engineering, Texas A&M, College Station, TX, United States of America.
PLoS One. 2021 Feb 11;16(2):e0246870. doi: 10.1371/journal.pone.0246870. eCollection 2021.
The objective of this study was to accurately predict the grip strength using a deep learning-based method (e.g., multi-layer perceptron [MLP] regression). The maximal grip strength with varying postures (upper arm, forearm, and lower body) of 164 young adults (100 males and 64 females) were collected. The data set was divided into a training set (90% of data) and a test set (10% of data). Different combinations of variables including demographic and anthropometric information of individual participants and postures was tested and compared to find the most predictive model. The MLP regression and 3 different polynomial regressions (linear, quadratic, and cubic) were conducted and the performance of regression was compared. The results showed that including all variables showed better performance than other combinations of variables. In general, MLP regression showed higher performance than polynomial regressions. Especially, MLP regression considering all variables achieved the highest performance of grip strength prediction (RMSE = 69.01N, R = 0.88, ICC = 0.92). This deep learning-based regression (MLP) would be useful to predict on-site- and individual-specific grip strength in the workspace to reduce the risk of musculoskeletal disorders in the upper extremity.
本研究旨在使用基于深度学习的方法(例如多层感知机 [MLP] 回归)准确预测握力。共收集了 164 名年轻成年人(男性 100 名,女性 64 名)不同姿势(上臂、前臂和下半身)的最大握力。数据集分为训练集(90%的数据)和测试集(10%的数据)。测试并比较了包括个体参与者的人口统计学和人体测量信息以及姿势的不同变量组合,以找到最具预测性的模型。进行了 MLP 回归和 3 种不同的多项式回归(线性、二次和三次),并比较了回归的性能。结果表明,包含所有变量的表现优于其他变量组合。一般来说,MLP 回归的表现优于多项式回归。特别是,考虑所有变量的 MLP 回归在握力预测方面表现出最高的性能(RMSE = 69.01N,R = 0.88,ICC = 0.92)。这种基于深度学习的回归(MLP)可用于预测工作场所的现场和个体特定握力,以降低上肢肌肉骨骼疾病的风险。