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Wrist fracture detection using self-supervised learning methodology

dc.contributor.authorThorat S.R.; Jha D.G.; Sharma A.K.; Katkar D.V.
dc.date.accessioned2025-05-23T11:13:38Z
dc.description.abstractObjectives: This study aimed to assist radiologists in faster and more accurate diagnosis by automating bone fracture detection in pediatric trauma wrist radiographic images using self-supervised learning. This addresses data labeling challenges associated with traditional deep learning models in medical imaging. Methods: In this study, we trained the model backbone for feature extraction. Then, we used this backbone to train a complete classification model for classifying images as fracture or non-fracture on the publically available Kaggle and GRAZPERDWRI-DX dataset using ResNet-18 in pediatric wrist radiographs. Results: The resulting output revealed that the model was able to detect fracture and non-fracture images with 94.10% accuracy, 93.21% specificity, and an area under the receiver operating characteristics of 94.12%. Conclusion: This self-supervised model showed a promising approach and paved the way for efficient and accurate fracture detection, ultimately enhancing radiological diagnosis without relying on extensive labeled data. © 2024 Published by Scientific Scholar on behalf of Journal of Musculoskeletal Surgery and Research.
dc.identifier.doihttps://doi.org/10.25259/JMSR_260_2023
dc.identifier.urihttp://172.23.0.11:4000/handle/123456789/6029
dc.relation.ispartofseriesJournal of Musculoskeletal Surgery and Research
dc.titleWrist fracture detection using self-supervised learning methodology

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