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Deep Learning-Based Pediatric Bone Age Estimation Using Hand Radiography Publisher



Siratiamsheh M1 ; Shabaninia E2 ; Chaparian A1
Authors

Source: Journal of Isfahan Medical School Published:2023


Abstract

Background: Hand radiographs are commonly used to evaluate bone maturity. So that the significant difference between the estimated bone age and the chronological age can indicate a developmental disorder. However, the manual evaluation of images is usually a time-consuming and observer-dependent process. Therefore, in this paper, an automatic method for the assessment of bone age using radiographs of children's hands is proposed. Methods: In this fundamental-applied research, the collection of radiographic images of the Radiological Society of North America (RSNA) was used, and transfer learning methods were proposed. The input images were first pre-processed due to low quality. Then a pre-trained model based on DenseNet-121 was used to extract the discriminating spatial features. Findings: Evaluations using five pre-trained models on the RSNA dataset showed that the DenseNet-121 model, after adjustment, could perform better than other models, with a mean absolute error of 9.8 months. Conclusion: Skeletal maturity can be estimated with satisfactory accuracy using the DenseNet-121 model, and this method can help radiologists in quick and accurate measurement of bone age. © 2023 Isfahan University of Medical Sciences(IUMS). All rights reserved.