4.6 Article

Improving Image Classification of Knee Radiographs: An Automated Image Labeling Approach

Journal

JOURNAL OF DIGITAL IMAGING
Volume -, Issue -, Pages -

Publisher

SPRINGER
DOI: 10.1007/s10278-023-00894-x

Keywords

EMR; Image classification; NLP; Knee; Osteoarthritis

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The study aimed to develop an automated labeling approach to improve the image classification model for diagnosing knee abnormalities. The researchers trained the labeler on a small set of labeled data and used BioBERT and EfficientNet as the feature extraction backbone. The proposed approach significantly enhanced the performance of image classification for radiographic knee diagnosis.
Large numbers of radiographic images are available in musculoskeletal radiology practices which could be used for training of deep learning models for diagnosis of knee abnormalities. However, those images do not typically contain readily available labels due to limitations of human annotations. The purpose of our study was to develop an automated labeling approach that improves the image classification model to distinguish normal knee images from those with abnormalities or prior arthroplasty. The automated labeler was trained on a small set of labeled data to automatically label a much larger set of unlabeled data, further improving the image classification performance for knee radiographic diagnosis. We used BioBERT and EfficientNet as the feature extraction backbone of the labeler and imaging model, respectively. We developed our approach using 7382 patients and validated it on a separate set of 637 patients. The final image classification model, trained using both manually labeled and pseudo-labeled data, had the higher weighted average AUC (WA-AUC 0.903) value and higher AUC values among all classes (normal AUC 0.894; abnormal AUC 0.896, arthroplasty AUC 0.990) compared to the baseline model (WA-AUC = 0.857; normal AUC 0.842; abnormal AUC 0.848, arthroplasty AUC 0.987), trained using only manually labeled data. Statistical tests show that the improvement is significant on normal (p value < 0.002), abnormal (p value < 0.001), and WA-AUC (p value = 0.001). Our findings demonstrated that the proposed automated labeling approach significantly improves the performance of image classification for radiographic knee diagnosis, allowing for facilitating patient care and curation of large knee datasets.

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