Literature DB >> 28111643

Mathematical Modeling and Evaluation of Human Motions in Physical Therapy Using Mixture Density Neural Networks.

A Vakanski1, J M Ferguson2, S Lee3.   

Abstract

OBJECTIVE: The objective of the proposed research is to develop a methodology for modeling and evaluation of human motions, which will potentially benefit patients undertaking a physical rehabilitation therapy (e.g., following a stroke or due to other medical conditions). The ultimate aim is to allow patients to perform home-based rehabilitation exercises using a sensory system for capturing the motions, where an algorithm will retrieve the trajectories of a patient's exercises, will perform data analysis by comparing the performed motions to a reference model of prescribed motions, and will send the analysis results to the patient's physician with recommendations for improvement.
METHODS: The modeling approach employs an artificial neural network, consisting of layers of recurrent neuron units and layers of neuron units for estimating a mixture density function over the spatio-temporal dependencies within the human motion sequences. Input data are sequences of motions related to a prescribed exercise by a physiotherapist to a patient, and recorded with a motion capture system. An autoencoder subnet is employed for reducing the dimensionality of captured sequences of human motions, complemented with a mixture density subnet for probabilistic modeling of the motion data using a mixture of Gaussian distributions.
RESULTS: The proposed neural network architecture produced a model for sets of human motions represented with a mixture of Gaussian density functions. The mean log-likelihood of observed sequences was employed as a performance metric in evaluating the consistency of a subject's performance relative to the reference dataset of motions. A publically available dataset of human motions captured with Microsoft Kinect was used for validation of the proposed method.
CONCLUSION: The article presents a novel approach for modeling and evaluation of human motions with a potential application in home-based physical therapy and rehabilitation. The described approach employs the recent progress in the field of machine learning and neural networks in developing a parametric model of human motions, by exploiting the representational power of these algorithms to encode nonlinear input-output dependencies over long temporal horizons.

Entities:  

Keywords:  Auto-encoder; Mathematical model; Mixture density network; Neural networks; Performance metric; Physical rehabilitation; Recurrent neural networks; Time series

Year:  2016        PMID: 28111643      PMCID: PMC5242735     

Source DB:  PubMed          Journal:  J Physiother Phys Rehabil


  12 in total

1.  Trajectory Learning for Robot Programming by Demonstration Using Hidden Markov Model and Dynamic Time Warping.

Authors:  A Vakanski; I Mantegh; A Irish; F Janabi-Sharifi
Journal:  IEEE Trans Syst Man Cybern B Cybern       Date:  2012-03-09

2.  Determinants of utilization and expenditures for episodes of ambulatory physical therapy among adults.

Authors:  Steven R Machlin; Julia Chevan; William W Yu; Marc W Zodet
Journal:  Phys Ther       Date:  2011-05-12

3.  Long short-term memory.

Authors:  S Hochreiter; J Schmidhuber
Journal:  Neural Comput       Date:  1997-11-15       Impact factor: 2.026

Review 4.  Deep learning in neural networks: an overview.

Authors:  Jürgen Schmidhuber
Journal:  Neural Netw       Date:  2014-10-13

5.  Statistical analysis of motor unit firing patterns in a human skeletal muscle.

Authors:  H P Clamann
Journal:  Biophys J       Date:  1969-10       Impact factor: 4.033

6.  Auto-association by multilayer perceptrons and singular value decomposition.

Authors:  H Bourlard; Y Kamp
Journal:  Biol Cybern       Date:  1988       Impact factor: 2.086

7.  Exercise after Stroke: Patient Adherence and Beliefs after Discharge from Rehabilitation.

Authors:  Kristine K Miller; Rebecca E Porter; Erin DeBaun-Sprague; Marieke Van Puymbroeck; Arlene A Schmid
Journal:  Top Stroke Rehabil       Date:  2016-06-23       Impact factor: 2.119

8.  Home-based physical therapy intervention with adherence-enhancing strategies versus clinic-based management for patients with ankle sprains.

Authors:  Sandra F Bassett; Harry Prapavessis
Journal:  Phys Ther       Date:  2007-07-03

Review 9.  A Review on Technical and Clinical Impact of Microsoft Kinect on Physical Therapy and Rehabilitation.

Authors:  Hossein Mousavi Hondori; Maryam Khademi
Journal:  J Med Eng       Date:  2014-12-10

10.  Quality and Quantity of Rehabilitation Exercises Delivered By A 3-D Motion Controlled Camera: A Pilot Study.

Authors:  Ravi Komatireddy; Anang Chokshi; Jeanna Basnett; Michael Casale; Daniel Goble; Tiffany Shubert
Journal:  Int J Phys Med Rehabil       Date:  2014-07-29
View more
  7 in total

1.  Metrics for Performance Evaluation of Patient Exercises during Physical Therapy.

Authors:  Aleksandar Vakanski; Jake M Ferguson; Stephen Lee
Journal:  Int J Phys Med Rehabil       Date:  2017-04-20

Review 2.  Machine learning in human movement biomechanics: Best practices, common pitfalls, and new opportunities.

Authors:  Eni Halilaj; Apoorva Rajagopal; Madalina Fiterau; Jennifer L Hicks; Trevor J Hastie; Scott L Delp
Journal:  J Biomech       Date:  2018-09-13       Impact factor: 2.712

3.  Generative Adversarial Networks for Generation and Classification of Physical Rehabilitation Movement Episodes.

Authors:  Longze Li; Aleksandar Vakanski
Journal:  Int J Mach Learn Comput       Date:  2018-10

Review 4.  A review of computational approaches for evaluation of rehabilitation exercises.

Authors:  Yalin Liao; Aleksandar Vakanski; Min Xian; David Paul; Russell Baker
Journal:  Comput Biol Med       Date:  2020-03-04       Impact factor: 4.589

5.  A Deep Learning Framework for Assessing Physical Rehabilitation Exercises.

Authors:  Yalin Liao; Aleksandar Vakanski; Min Xian
Journal:  IEEE Trans Neural Syst Rehabil Eng       Date:  2020-01-13       Impact factor: 3.802

6.  A Data Set of Human Body Movements for Physical Rehabilitation Exercises.

Authors:  Aleksandar Vakanski; Hyung-Pil Jun; David Paul; Russell Baker
Journal:  Data (Basel)       Date:  2018-01-11

7.  Out-of-Distribution Detection of Human Activity Recognition with Smartwatch Inertial Sensors.

Authors:  Philip Boyer; David Burns; Cari Whyne
Journal:  Sensors (Basel)       Date:  2021-03-01       Impact factor: 3.576

  7 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.