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Book ChapterDOI

Bone Age Assessment for Lower Age Groups Using Triplet Network in Small Dataset of Hand X-Rays

TLDR
In this article, a bone-age assessment model using triplet loss for children in 0-3 years of age is proposed, which achieves an AUC of 0.92 for binary and 0.82 for multi-class classification with visible separation in embedding clusters.
Abstract
Skeletal Bone age assessment is a routine clinical procedure carried out by paediatricians and endocrinologists for investigating a variety of endocrinological, metabolic, genetic and growth disorders in children. Skeletal maturity advances with change in structure and size of the skeletal bones with respect to age. This is commonly done by radiological investigation of the left hand due to its non dominant use. Dissent in the skeletal age and bone age values indicates abnormality. In this study, a bone-age assessment model using triplet loss for children in 0–3 years of age is proposed. Furthermore, this is the first automated bone age assessment study on lower age groups with comparable results, using one tenth of the training data samples as opposed to conventional deep neural networks. We have used small number of radiographs per class from Digital Hand Atlas Database System (DHA), a publicly available comprehensive x-ray dataset. Model trained achieves an AUC of 0.92 for binary and 0.82 for multi-class classification with visible separation in embedding clusters; thereby resulting in correct predictions on test data set.

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Citations
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Journal ArticleDOI

Adaptive Critical Region Extraction Net via relationship modeling for bone age assessment

TL;DR: Wang et al. as discussed by the authors proposed an Adaptive Critical Region Extraction Net (ACRE-Net) for bone age assessment, which can automatically locate local critical regions from global images and calibrate features by relationship modeling.
References
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Journal ArticleDOI

Versatile Framework for Medical Image Processing and Analysis with Application to Automatic Bone Age Assessment

TL;DR: Experimental results indicate that the proposed framework can be effectively applied to medical image analysis task and apply to the bone age assessment (BAA) task using RSNA dataset and achieve the state-of-the-art performance.
Journal ArticleDOI

Impact of Ensemble Learning in the Assessment of Skeletal Maturity

TL;DR: The success of the ensemble methods allow us to conclude that their use may improve computer-based bone age assessment, offering a scalable option for utilizing multiple regions of interest and combining their output.
Journal ArticleDOI

Accurate Age Determination for Adolescents Using Magnetic Resonance Imaging of the Hand and Wrist with an Artificial Neural Network-Based Approach

TL;DR: The machine learning approach using ANN method was about 10-fold more accurate than the TW3 method using MRI alone and offers a more objective and accurate solution for prospective chronological maturity assessment for adolescents.
Journal ArticleDOI

Skeletal bone age assessments for young children based on regression convolutional neural networks.

TL;DR: An automated and efficient approach with regression convolutional neural network is proposed that evaluates the skeletal age from the left hand wrist radiograph of young children using the carpal bones as the region of interest (ROI) and based on the regression Convolutional Neural Network.
Journal ArticleDOI

Neonatal skeletal dysplasias

TL;DR: The components of the skeletal survey, the primary imaging tool for diagnosing dysplasias postnatally, are reviewed, emphasizing the use of an organized approach and appropriate descriptive terminology.
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