Literature DB >> 27816861

Deep learning for automated skeletal bone age assessment in X-ray images.

C Spampinato1, S Palazzo2, D Giordano3, M Aldinucci4, R Leonardi5.   

Abstract

Skeletal bone age assessment is a common clinical practice to investigate endocrinology, genetic and growth disorders in children. It is generally performed by radiological examination of the left hand by using either the Greulich and Pyle (G&P) method or the Tanner-Whitehouse (TW) one. However, both clinical procedures show several limitations, from the examination effort of radiologists to (most importantly) significant intra- and inter-operator variability. To address these problems, several automated approaches (especially relying on the TW method) have been proposed; nevertheless, none of them has been proved able to generalize to different races, age ranges and genders. In this paper, we propose and test several deep learning approaches to assess skeletal bone age automatically; the results showed an average discrepancy between manual and automatic evaluation of about 0.8 years, which is state-of-the-art performance. Furthermore, this is the first automated skeletal bone age assessment work tested on a public dataset and for all age ranges, races and genders, for which the source code is available, thus representing an exhaustive baseline for future research in the field. Beside the specific application scenario, this paper aims at providing answers to more general questions about deep learning on medical images: from the comparison between deep-learned features and manually-crafted ones, to the usage of deep-learning methods trained on general imagery for medical problems, to how to train a CNN with few images.
Copyright © 2016 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Convolutional neural networks; Deep learning for medical images; Greulich and Pyle; Tanner–Whitehouse

Mesh:

Year:  2016        PMID: 27816861     DOI: 10.1016/j.media.2016.10.010

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   8.545


  46 in total

1.  MABAL: a Novel Deep-Learning Architecture for Machine-Assisted Bone Age Labeling.

Authors:  Simukayi Mutasa; Peter D Chang; Carrie Ruzal-Shapiro; Rama Ayyala
Journal:  J Digit Imaging       Date:  2018-08       Impact factor: 4.056

2.  Detection of rheumatoid arthritis from hand radiographs using a convolutional neural network.

Authors:  Kemal Üreten; Hasan Erbay; Hadi Hakan Maraş
Journal:  Clin Rheumatol       Date:  2019-03-08       Impact factor: 2.980

Review 3.  Current applications and future directions of deep learning in musculoskeletal radiology.

Authors:  Pauley Chea; Jacob C Mandell
Journal:  Skeletal Radiol       Date:  2019-08-04       Impact factor: 2.199

4.  A Deep Automated Skeletal Bone Age Assessment Model with Heterogeneous Features Learning.

Authors:  Chao Tong; Baoyu Liang; Jun Li; Zhigao Zheng
Journal:  J Med Syst       Date:  2018-11-03       Impact factor: 4.460

5.  Forensic age estimation for pelvic X-ray images using deep learning.

Authors:  Yuan Li; Zhizhong Huang; Xiaoai Dong; Weibo Liang; Hui Xue; Lin Zhang; Yi Zhang; Zhenhua Deng
Journal:  Eur Radiol       Date:  2018-11-06       Impact factor: 5.315

6.  Towards fully automated third molar development staging in panoramic radiographs.

Authors:  Nikolay Banar; Jeroen Bertels; François Laurent; Rizky Merdietio Boedi; Jannick De Tobel; Patrick Thevissen; Dirk Vandermeulen
Journal:  Int J Legal Med       Date:  2020-04-01       Impact factor: 2.686

7.  Bone age estimation using deep learning and hand X-ray images.

Authors:  Jang Hyung Lee; Young Jae Kim; Kwang Gi Kim
Journal:  Biomed Eng Lett       Date:  2020-03-11

8.  Residual Deep Convolutional Neural Network Predicts MGMT Methylation Status.

Authors:  Panagiotis Korfiatis; Timothy L Kline; Daniel H Lachance; Ian F Parney; Jan C Buckner; Bradley J Erickson
Journal:  J Digit Imaging       Date:  2017-10       Impact factor: 4.056

9.  Bone age determination using only the index finger: a novel approach using a convolutional neural network compared with human radiologists.

Authors:  Nakul E Reddy; Jesse C Rayan; Ananth V Annapragada; Nadia F Mahmood; Alan E Scheslinger; Wei Zhang; J Herman Kan
Journal:  Pediatr Radiol       Date:  2019-12-20

Review 10.  Radiological images and machine learning: Trends, perspectives, and prospects.

Authors:  Zhenwei Zhang; Ervin Sejdić
Journal:  Comput Biol Med       Date:  2019-02-27       Impact factor: 4.589

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