Predicting Knee Joint Contact Forces During Normal Walking Using Kinematic Inputs With a Long-Short Term Neural Network

被引:0
作者
Bennett, Hunter J. [1 ]
Estler, Kaileigh [2 ]
Valenzuela, Kevin [3 ]
Weinhandl, Joshua T. [2 ]
机构
[1] Old Dominion Univ, Neuromech Lab, 1007 Student Recreat Ctr, Norfolk, VA 23529 USA
[2] Univ Tennessee, Dept Kinesiol Recreat & Sport Studies, Knoxville, TN 37996 USA
[3] Calif State Univ Long Beach, Dept Kinesiol, Long Beach, CA 90840 USA
来源
JOURNAL OF BIOMECHANICAL ENGINEERING-TRANSACTIONS OF THE ASME | 2024年 / 146卷 / 08期
关键词
knee joint contact forces; neural network; long-short term memory; knee adduction moment; medial compartment; GROUND REACTION FORCE; FOOT PROGRESSION ANGLE; ADDUCTION MOMENT; IN-VIVO; TOE-IN; MUSCULOSKELETAL MODEL; GAIT PATTERN; OSTEOARTHRITIS; LOADS; REPLACEMENT;
D O I
10.1115/1.4064550
中图分类号
Q6 [生物物理学];
学科分类号
071011 ;
摘要
Knee joint contact forces are commonly estimated via surrogate measures (i.e., external knee adduction moments or musculoskeletal modeling). Despite its capabilities, modeling is not optimal for clinicians or persons with limited experience. The purpose of this study was to design a novel prediction method for knee joint contact forces that is simplistic in terms of required inputs. This study included marker trajectories and instrumented knee forces during normal walking from the "Grand Challenge" (n = 6) and "CAMS" (n = 2) datasets. Inverse kinematics were used to derive stance phase hip (sagittal, frontal, transverse), knee (sagittal, frontal), ankle (sagittal), and trunk (frontal) kinematics. A long-short term memory network (LSTM) was created using matlab to predict medial and lateral knee force waveforms using combinations of the kinematics. The Grand Challenge and CAMS datasets trained and tested the network, respectively. Musculoskeletal modeling forces were derived using static optimization and joint reaction tools in OpenSim. Waveform accuracy was determined as the proportion of variance and root-mean-square error between network predictions and in vivo data. The LSTM network was highly accurate for medial forces (R-2 = 0.77, RMSE = 0.27 BW) and required only frontal hip and knee and sagittal hip and ankle kinematics. Modeled medial force predictions were excellent (R-2 = 0.77, RMSE = 0.33 BW). Lateral force predictions were poor for both methods (LSTM R-2 = 0.18, RMSE = 0.08 BW; modeling R-2 = 0.21, RMSE = 0.54 BW). The designed LSTM network outperformed most reports of musculoskeletal modeling, including those reached in this study, revealing knee joint forces can accurately be predicted by using only kinematic input variables.
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页数:10
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