Literature DB >> 20875766

A fuzzy decision tree-based SVM classifier for assessing osteoarthritis severity using ground reaction force measurements.

S P Moustakidis1, J B Theocharis, G Giakas.   

Abstract

A novel fuzzy decision tree-based SVM (FDT-SVM) classifier is proposed in this paper, to distinguish between asymptotic (AS) and osteoarthritis (OA) knee gait patterns and to investigate OA severity using 3-D ground reaction force (GRF) measurements. FDT-SVM incorporates effective techniques for feature selection (FS) and class grouping (CG) at each non-leaf nodes of the tree structure, which reduce the overall complexity of DT building and alleviate the overfitting effect. The embedded FS and CG are based on the notion of fuzzy partition vector (FPV) that comprises the fuzzy membership degrees of every pattern in their target classes, serving as a local evaluation metric with respect to patterns. FS is driven by a fuzzy complementary criterion (FuzCoC) which assures that features are iteratively introduced, providing the maximum additional contribution in regard to the information content given by the previously selected features. A novel Wavelet Packet (WP) decomposition based on the FuzCoC principles is also introduced, to distinguish informative and complementary features from GRF data. The quality of our method is validated in terms of statistical metrics drawn by confusion matrices, such as sensitivity, specificity and total classification accuracy. In addition, we investigate the impact of each GRF component. Finally, comparative results with existing techniques are given, demonstrating the efficacy of the suggested approach.
Copyright © 2010 IPEM. Published by Elsevier Ltd. All rights reserved.

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Year:  2010        PMID: 20875766     DOI: 10.1016/j.medengphy.2010.08.006

Source DB:  PubMed          Journal:  Med Eng Phys        ISSN: 1350-4533            Impact factor:   2.242


  7 in total

1.  Compensatory Responses During Slip-Induced Perturbation in Patients With Knee Osteoarthritis Compared With Healthy Older Adults: An Increased Risk of Falls?

Authors:  Xiping Ren; Christoph Lutter; Maeruan Kebbach; Sven Bruhn; Qining Yang; Rainer Bader; Thomas Tischer
Journal:  Front Bioeng Biotechnol       Date:  2022-06-15

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.  The complexity of human walking: a knee osteoarthritis study.

Authors:  Margarita Kotti; Lynsey D Duffell; Aldo A Faisal; Alison H McGregor
Journal:  PLoS One       Date:  2014-09-18       Impact factor: 3.240

4.  Developing a Low-Cost Force Treadmill via Dynamic Modeling.

Authors:  Chih-Yuan Hong; Lan-Yuen Guo; Rong Song; Mark L Nagurka; Jia-Li Sung; Chen-Wen Yen
Journal:  J Healthc Eng       Date:  2017-06-04       Impact factor: 2.682

5.  Detecting knee osteoarthritis and its discriminating parameters using random forests.

Authors:  Margarita Kotti; Lynsey D Duffell; Aldo A Faisal; Alison H McGregor
Journal:  Med Eng Phys       Date:  2017-02-24       Impact factor: 2.242

Review 6.  Knee Joint Biomechanical Gait Data Classification for Knee Pathology Assessment: A Literature Review.

Authors:  Mariem Abid; Neila Mezghani; Amar Mitiche
Journal:  Appl Bionics Biomech       Date:  2019-05-14       Impact factor: 1.781

7.  Use of machine learning in osteoarthritis research: a systematic literature review.

Authors:  Encarnita Mariotti-Ferrandiz; Jérémie Sellam; Marie Binvignat; Valentina Pedoia; Atul J Butte; Karine Louati; David Klatzmann; Francis Berenbaum
Journal:  RMD Open       Date:  2022-03
  7 in total

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