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Main Authors: Masuda, Masachika, Soufi, Mazen, Otake, Yoshito, Uemura, Keisuke, Kono, Sotaro, Takashima, Kazuma, Hamada, Hidetoshi, Gu, Yi, Takao, Masaki, Okada, Seiji, Sugano, Nobuhiko, Sato, Yoshinobu
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2401.00159
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author Masuda, Masachika
Soufi, Mazen
Otake, Yoshito
Uemura, Keisuke
Kono, Sotaro
Takashima, Kazuma
Hamada, Hidetoshi
Gu, Yi
Takao, Masaki
Okada, Seiji
Sugano, Nobuhiko
Sato, Yoshinobu
author_facet Masuda, Masachika
Soufi, Mazen
Otake, Yoshito
Uemura, Keisuke
Kono, Sotaro
Takashima, Kazuma
Hamada, Hidetoshi
Gu, Yi
Takao, Masaki
Okada, Seiji
Sugano, Nobuhiko
Sato, Yoshinobu
contents Progression of hip osteoarthritis (hip OA) leads to pain and disability, likely leading to surgical treatment such as hip arthroplasty at the terminal stage. The severity of hip OA is often classified using the Crowe and Kellgren-Lawrence (KL) classifications. However, as the classification is subjective, we aimed to develop an automated approach to classify the disease severity based on the two grades using digitally-reconstructed radiographs (DRRs) from CT images. Automatic grading of the hip OA severity was performed using deep learning-based models. The models were trained to predict the disease grade using two grading schemes, i.e., predicting the Crowe and KL grades separately, and predicting a new ordinal label combining both grades and representing the disease progression of hip OA. The models were trained in classification and regression settings. In addition, the model uncertainty was estimated and validated as a predictor of classification accuracy. The models were trained and validated on a database of 197 hip OA patients, and externally validated on 52 patients. The model accuracy was evaluated using exact class accuracy (ECA), one-neighbor class accuracy (ONCA), and balanced accuracy.The deep learning models produced a comparable accuracy of approximately 0.65 (ECA) and 0.95 (ONCA) in the classification and regression settings. The model uncertainty was significantly larger in cases with large classification errors (P<6e-3). In this study, an automatic approach for grading hip OA severity from CT images was developed. The models have shown comparable performance with high ONCA, which facilitates automated grading in large-scale CT databases and indicates the potential for further disease progression analysis. Classification accuracy was correlated with the model uncertainty, which would allow for the prediction of classification errors.
format Preprint
id arxiv_https___arxiv_org_abs_2401_00159
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Automatic hip osteoarthritis grading with uncertainty estimation from computed tomography using digitally-reconstructed radiographs
Masuda, Masachika
Soufi, Mazen
Otake, Yoshito
Uemura, Keisuke
Kono, Sotaro
Takashima, Kazuma
Hamada, Hidetoshi
Gu, Yi
Takao, Masaki
Okada, Seiji
Sugano, Nobuhiko
Sato, Yoshinobu
Image and Video Processing
Computer Vision and Pattern Recognition
Progression of hip osteoarthritis (hip OA) leads to pain and disability, likely leading to surgical treatment such as hip arthroplasty at the terminal stage. The severity of hip OA is often classified using the Crowe and Kellgren-Lawrence (KL) classifications. However, as the classification is subjective, we aimed to develop an automated approach to classify the disease severity based on the two grades using digitally-reconstructed radiographs (DRRs) from CT images. Automatic grading of the hip OA severity was performed using deep learning-based models. The models were trained to predict the disease grade using two grading schemes, i.e., predicting the Crowe and KL grades separately, and predicting a new ordinal label combining both grades and representing the disease progression of hip OA. The models were trained in classification and regression settings. In addition, the model uncertainty was estimated and validated as a predictor of classification accuracy. The models were trained and validated on a database of 197 hip OA patients, and externally validated on 52 patients. The model accuracy was evaluated using exact class accuracy (ECA), one-neighbor class accuracy (ONCA), and balanced accuracy.The deep learning models produced a comparable accuracy of approximately 0.65 (ECA) and 0.95 (ONCA) in the classification and regression settings. The model uncertainty was significantly larger in cases with large classification errors (P<6e-3). In this study, an automatic approach for grading hip OA severity from CT images was developed. The models have shown comparable performance with high ONCA, which facilitates automated grading in large-scale CT databases and indicates the potential for further disease progression analysis. Classification accuracy was correlated with the model uncertainty, which would allow for the prediction of classification errors.
title Automatic hip osteoarthritis grading with uncertainty estimation from computed tomography using digitally-reconstructed radiographs
topic Image and Video Processing
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2401.00159