Literature DB >> 32464565

Early detection of ankylosing spondylitis using texture features and statistical machine learning, and deep learning, with some patient age analysis.

Riel Castro-Zunti1, Eun Hae Park2, Younhee Choi1, Gong Yong Jin2, Seok-Bum Ko3.   

Abstract

Ankylosing spondylitis (AS) is an arthritis with symptoms visible in medical imagery. This paper proposes, to the authors' best knowledge, the first use of statistical machine learning- and deep learning-based classifiers to detect erosion, an early AS symptom, via analysis of computed tomography (CT) imagery, giving some consideration to patient age in so doing. We used gray-level co-occurrence matrices and local binary patterns to generate input features to machine learning algorithms, specifically k-nearest neighbors (k-NN) and random forest. Deep learning solutions based on a modified InceptionV3 architecture were designed and tested, with one classifier produced by training with a cross-entropy loss function and another produced by additionally seeking to minimize validation loss. We found that the random forest classifiers outperform the k-NN classifiers and achieve an eightfold cross-validation average accuracy, recall, and area under receiver operator characteristic curve (ROC AUC) of 96.0%, 92.9%, and 0.97, respectively, for erosion vs. young control patients, and 82.4%, 80.6%, and 0.91, respectively, for erosion vs. old control patients. We found that the deep learning classifier trained without minimizing validation loss was best and achieves an eightfold cross-validation accuracy, recall, and ROC AUC of 99.0%, 97.5%, and 0.97, respectively, for erosion vs. all (combined young and old) control patients; this classifier outperforms a musculoskeletal radiologist with 9 years of experience in raw sensitivity and specificity by 8.4% and 9.5%, respectively. Despite the relatively small dataset on which we trained and cross-validated, our results indicate the potential of machine and deep learning to aid AS diagnosis, and further research using larger datasets should be conducted.
Copyright © 2020. Published by Elsevier Ltd.

Entities:  

Keywords:  Convolutional neural networks; Deep learning; Radiology; Statistical machine learning; Texture features

Mesh:

Year:  2020        PMID: 32464565     DOI: 10.1016/j.compmedimag.2020.101718

Source DB:  PubMed          Journal:  Comput Med Imaging Graph        ISSN: 0895-6111            Impact factor:   4.790


  3 in total

1.  Imaging update in spondyloarthropathy.

Authors:  Amit Shah; Neel Raja; Winston J Rennie
Journal:  J Clin Orthop Trauma       Date:  2021-08-13

Review 2.  An introduction to machine learning and analysis of its use in rheumatic diseases.

Authors:  Kathryn M Kingsmore; Christopher E Puglisi; Amrie C Grammer; Peter E Lipsky
Journal:  Nat Rev Rheumatol       Date:  2021-11-02       Impact factor: 20.543

3.  Development and Validation of a Machine Learning-Based Nomogram for Prediction of Ankylosing Spondylitis.

Authors:  Jichong Zhu; Qing Lu; Tuo Liang; Hao Li; Chenxin Zhou; Shaofeng Wu; Tianyou Chen; Jiarui Chen; Guobing Deng; Yuanlin Yao; Shian Liao; Chaojie Yu; Shengsheng Huang; Xuhua Sun; Liyi Chen; Wenkang Chen; Zhen Ye; Hao Guo; Wuhua Chen; Wenyong Jiang; Binguang Fan; Xiang Tao; Xinli Zhan; Chong Liu
Journal:  Rheumatol Ther       Date:  2022-08-06
  3 in total

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