Literature DB >> 34847395

Trends in the application of deep learning networks in medical image analysis: Evolution between 2012 and 2020.

Lu Wang1, Hairui Wang2, Yingna Huang1, Baihui Yan1, Zhihui Chang2, Zhaoyu Liu2, Mingfang Zhao3, Lei Cui1, Jiangdian Song4, Fan Li1.   

Abstract

PURPOSE: To evaluate the general rules and future trajectories of deep learning (DL) networks in medical image analysis through bibliometric and hot spot analysis of original articles published between 2012 and 2020.
METHODS: Original articles related to DL and medical imaging were retrieved from the PubMed database. For the analysis, data regarding radiological subspecialties; imaging techniques; DL networks; sample size; study purposes, setting, origins and design; statistical analysis; funding sources; authors; and first authors' affiliation was manually extracted from each article. The Bibliographic Item Co-Occurrence Matrix Builder and VOSviewer were used to identify the research topics of the included articles and illustrate the future trajectories of studies.
RESULTS: The study included 2685 original articles. The number of publications on DL and medical imaging has increased substantially since 2017, accounting for 97.2% of all included articles. We evaluated the rules of the application of 47 DL networks to eight radiological tasks on 11 human organ sites. Neuroradiology, thorax, and abdomen were frequent research subjects, while thyroid was under-represented. Segmentation and classification tasks were the primary purposes. U-Net, ResNet, and VGG were the most frequently used Convolutional neural network-derived networks. GAN-derived networks were widely developed and applied in 2020, and transfer learning was highlighted in the COVID-19 studies. Brain, prostate, and diabetic retinopathy-related studies were mature research topics in the field. Breast- and lung-related studies were in a stage of rapid development.
CONCLUSIONS: This study evaluates the general rules and future trajectories of DL network application in medical image analyses and provides guidance for future studies.
Copyright © 2021 The Authors. Published by Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Bibliometrics; Deep learning; Diagnostic imaging; Radiology

Mesh:

Year:  2021        PMID: 34847395     DOI: 10.1016/j.ejrad.2021.110069

Source DB:  PubMed          Journal:  Eur J Radiol        ISSN: 0720-048X            Impact factor:   4.531


  4 in total

1.  Reduction in Acquisition Time and Improvement in Image Quality in T2-Weighted MR Imaging of Musculoskeletal Tumors of the Extremities Using a Novel Deep Learning-Based Reconstruction Technique in a Turbo Spin Echo (TSE) Sequence.

Authors:  Daniel Wessling; Judith Herrmann; Saif Afat; Dominik Nickel; Ahmed E Othman; Haidara Almansour; Sebastian Gassenmaier
Journal:  Tomography       Date:  2022-07-06

2.  Knowledge structure and emerging trends in the application of deep learning in genetics research: A bibliometric analysis [2000-2021].

Authors:  Bijun Zhang; Ting Fan
Journal:  Front Genet       Date:  2022-08-23       Impact factor: 4.772

3.  A retrospective study of 3D deep learning approach incorporating coordinate information to improve the segmentation of pre- and post-operative abdominal aortic aneurysm.

Authors:  Thanongchai Siriapisith; Worapan Kusakunniran; Peter Haddawy
Journal:  PeerJ Comput Sci       Date:  2022-07-11

4.  AI-Driven Image Analysis in Central Nervous System Tumors-Traditional Machine Learning, Deep Learning and Hybrid Models.

Authors:  A V Krauze; Y Zhuge; R Zhao; E Tasci; K Camphausen
Journal:  J Biotechnol Biomed       Date:  2022-01-10
  4 in total

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