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Deep Learning-Based Classification of Primary Bone Tumors on Radiographs: A Preliminary Study

33 Pages Posted: 10 Aug 2020

See all articles by Yu He

Yu He

Central South University - Department of Radiology

Ian Pan

Brown University - Department of Diagnostic Imaging

Jing Wu

Central South University - Department of Radiology

Bingting Bao

Central South University - Department of Radiology

Kasey Halsey

Brown University - Department of Diagnostic Imaging

Marcello Chang

Stanford University - School of Medicine

Paul J. Zhang

University of Pennsylvania - Department of Pathology and Laboratory Medicine

Zishu Zhang

Central South University - Department of Radiology

Harrison X. Bai

Brown University - Department of Diagnostic Imaging

More...

Abstract

Background: To develop a deep learning model to classify primary bone tumors from preoperative radiographs and compare performance with expert radiologists.

Methods: A total of 1,057 patients (2,233 images) with histologically confirmed primary bone tumors and pre-operative radiographs were identified from three institutions’ pathology databases. Lesions were manually segmented by a radiologist. Binary discriminatory capacity (benign versus not-benign and malignant versus not-malignant) and three-way classification (benign versus intermediate versus malignant) performance of our model were evaluated. Final model performance was compared with two experts’ interpretation.

Findings: For benign vs. not benign, the model achieved 82.3% accuracy (AUC [area under curve]: 0.895) compared to 84.1% and 81.0% for experts 1 and 2 (p=0.25 for expert 1 and p=0.34 for expert 2). For malignant vs. not malignant, the model achieved 85.6% accuracy (AUC: 0.908) vs. 84.9% and 85.5% for experts 1 and 2 (p=0.79 for expert 1 and p=0.96 for expert 2). For three-way classification, the model achieved 75.0% accuracy vs. 74.7% and 72.0% for experts 1 and 2 (p=0.76 for expert 1 and p=0.17 for expert 2).

Interpretation: Deep learning can classify primary bone tumors using conventional radiographs in a multi-institutional dataset with similar accuracy compared to experts. Future study will focus on development of a fully automatic pipeline including lesion localization and further validation on additional datasets.

Funding Statement: This project was supported by the National Institutes of Health under Award Number R03CA235202 and National Natural Science Foundation of China grant under Award Number 8181101287 to Harrison X. Bai.

Declaration of Interests: No potential conflicts of interest were disclosed.

Ethics Approval Statement: The study was conducted in accordance with Declaration of Helsinki and approved by the Institutional Review Boards at all three institutions.

Keywords: deep learning; convolutional neural network; primary bone tumor; plain radiograph

Suggested Citation

He, Yu and Pan, Ian and Wu, Jing and Bao, Bingting and Halsey, Kasey and Chang, Marcello and Zhang, Paul J. and Zhang, Zishu and Bai, Harrison X., Deep Learning-Based Classification of Primary Bone Tumors on Radiographs: A Preliminary Study (4/23/2020). Available at SSRN: https://ssrn.com/abstract=3586659 or http://dx.doi.org/10.2139/ssrn.3586659

Yu He

Central South University - Department of Radiology

Changsha, Hunan 410083
China

Ian Pan

Brown University - Department of Diagnostic Imaging

Providence, RI 02912
United States

Jing Wu

Central South University - Department of Radiology

Changsha, Hunan 410083
China

Bingting Bao

Central South University - Department of Radiology

Changsha, Hunan 410083
China

Kasey Halsey

Brown University - Department of Diagnostic Imaging

Providence, RI 02912
United States

Marcello Chang

Stanford University - School of Medicine

291 Campus Drive
Li Ka Shing Building
Stanford, CA 94305-5101
United States

Paul J. Zhang

University of Pennsylvania - Department of Pathology and Laboratory Medicine

Philadelphia, PA 19104
United States

Zishu Zhang

Central South University - Department of Radiology

Changsha, Hunan 410083
China

Harrison X. Bai (Contact Author)

Brown University - Department of Diagnostic Imaging ( email )

Providence, RI 02912
United States

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