Automatic diagnosis of pediatric supracondylar humerus fractures using radiomics-based machine learning

The aim of this study was to construct a classification model for the automatic diagnosis of pediatric supracondylar humerus fractures using radiomics-based machine learning. We retrospectively collected elbow joint Radiographs of children aged 3 to 14 years and manually delineated regions of intere...

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Published inMedicine (Baltimore) Vol. 103; no. 23; p. e38503
Main Authors Yao, Wuyi, Wang, Yu, Zhao, Xiaobin, He, Man, Wang, Qian, Liu, Hanjie, Zhao, Jingxin
Format Journal Article
LanguageEnglish
Published Hagerstown, MD Lippincott Williams & Wilkins 07.06.2024
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ISSN0025-7974
1536-5964
1536-5964
DOI10.1097/MD.0000000000038503

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Summary:The aim of this study was to construct a classification model for the automatic diagnosis of pediatric supracondylar humerus fractures using radiomics-based machine learning. We retrospectively collected elbow joint Radiographs of children aged 3 to 14 years and manually delineated regions of interest (ROI) using ITK-SNAP. Radiomics features were extracted using pyradiomics, a python-based feature extraction tool. T-tests and the least absolute shrinkage and selection operator (LASSO) algorithm were used to further select the most valuable radiomics features. A logistic regression (LR) model was trained, with an 8:2 split into training and testing sets, and 5-fold cross-validation was performed on the training set. The diagnostic performance of the model was evaluated using receiver operating characteristic curves (ROC) on the testing set. A total of 411 fracture samples and 190 normal samples were included. 1561 features were extracted from each ROI. After dimensionality reduction screening, 40 and 94 features with the most diagnostic value were selected for further classification modeling in anteroposterior and lateral elbow radiographs. The area under the curve (AUC) of anteroposterior and lateral elbow radiographs is 0.65 and 0.72. Radiomics can extract and select the most valuable features from a large number of image features. Supervised machine-learning models built using these features can be used for the diagnosis of pediatric supracondylar humerus fractures.
Bibliography:Received: 5 December 2023 / Received in final form: 15 May 2024 / Accepted: 17 May 2024 This work was supported by S&T Program of Chengde [NO.202109A075]; S&T Program of Chengde [NO.202204A063] and Medical Science Research Project of Hebei Province [NO.20231389]. The funding bodies have no responsibilities in study design, the collection, analysis, and interpretation of data, the writing of the report, and the decision to submit the manuscript. We have been performed in accordance with the Declaration of Helsinki and have been approved by the ethics committee of Affiliated Hospital of Chengde Medical College. Consent to participate is not applicable. The authors have no conflicts of interest to disclose. All data generated or analyzed during this study are included in this published article [and its supplementary information files]. How to cite this article: Yao W, Wang Y, Zhao X, He M, Wang Q, Liu H, Zhao J. Automatic diagnosis of pediatric supracondylar humerus fractures using radiomics-based machine learning. Medicine 2024;103:23(e38503). WY and YW contributed equally to this work. *Correspondence: Jingxin Zhao, Department of Orthopedics, Affiliated Hospital of Chengde Medical University, 36 Nanyingzi Street, Shuangqiao District, Chengde, Hebei 067000, PR China (e-mail: 18503145778@163.com).
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ISSN:0025-7974
1536-5964
1536-5964
DOI:10.1097/MD.0000000000038503