Literature DB >> 35782257

SMANet: multi-region ensemble of convolutional neural network model for skeletal maturity assessment.

Yi Zhang1, Wenwen Zhu1, Kai Li2, Dong Yan2, Hua Liu3, Jie Bai3, Fan Liu3, Xiaoguang Cheng2, Tongning Wu1.   

Abstract

Background: Bone age assessment (BAA) is a crucial research topic in pediatric radiology. Interest in the development of automated methods for BAA is increasing. The current BAA algorithms based on deep learning have displayed the following deficiencies: (I) most methods involve end-to-end prediction, lacking integration with clinically interpretable methods; (II) BAA methods exhibit racial and geographical differences.
Methods: A novel, automatic skeletal maturity assessment (SMA) method with clinically interpretable methods was proposed based on a multi-region ensemble of convolutional neural networks (CNNs). This method predicted skeletal maturity scores and thus assessed bone age by utilizing left-hand radiographs and key regional patches of clinical concern.
Results: Experiments included 4,861 left-hand radiographs from the database of Beijing Jishuitan Hospital and revealed that the mean absolute error (MAE) was 31.4±0.19 points (skeletal maturity scores) and 0.45±0.13 years (bone age) for the carpal bones-series and 29.9±0.21 points and 0.43±0.17 years, respectively, for the radius, ulna, and short (RUS) bones series based on the Tanner-Whitehouse 3 (TW3) method. Conclusions: The proposed automatic SMA method, which was without racial and geographical influence, is a novel, automatic method for assessing childhood bone development by utilizing skeletal maturity. Furthermore, it provides a comparable performance to endocrinologists, with greater stability and efficiency. 2022 Quantitative Imaging in Medicine and Surgery. All rights reserved.

Entities:  

Keywords:  Skeletal maturity; Tanner-Whitehouse 3 (TW3); bone age assessment (BAA); deep learning

Year:  2022        PMID: 35782257      PMCID: PMC9246748          DOI: 10.21037/qims-21-1158

Source DB:  PubMed          Journal:  Quant Imaging Med Surg        ISSN: 2223-4306


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