Literature DB >> 30575178

Deep learning in radiology: An overview of the concepts and a survey of the state of the art with focus on MRI.

Maciej A Mazurowski1,2,3, Mateusz Buda1, Ashirbani Saha1, Mustafa R Bashir1,4.   

Abstract

Deep learning is a branch of artificial intelligence where networks of simple interconnected units are used to extract patterns from data in order to solve complex problems. Deep-learning algorithms have shown groundbreaking performance in a variety of sophisticated tasks, especially those related to images. They have often matched or exceeded human performance. Since the medical field of radiology mainly relies on extracting useful information from images, it is a very natural application area for deep learning, and research in this area has rapidly grown in recent years. In this article, we discuss the general context of radiology and opportunities for application of deep-learning algorithms. We also introduce basic concepts of deep learning, including convolutional neural networks. Then, we present a survey of the research in deep learning applied to radiology. We organize the studies by the types of specific tasks that they attempt to solve and review a broad range of deep-learning algorithms being utilized. Finally, we briefly discuss opportunities and challenges for incorporating deep learning in the radiology practice of the future. Level of Evidence: 3 Technical Efficacy: Stage 1 J. Magn. Reson. Imaging 2019;49:939-954.
© 2018 International Society for Magnetic Resonance in Medicine.

Entities:  

Keywords:  artificial intelligence; convolutional neural networks; deep learning; machine learning; medical imaging; radiology

Year:  2018        PMID: 30575178      PMCID: PMC6483404          DOI: 10.1002/jmri.26534

Source DB:  PubMed          Journal:  J Magn Reson Imaging        ISSN: 1053-1807            Impact factor:   4.813


  68 in total

1.  A Deep Learning-Based Approach for the Detection and Localization of Prostate Cancer in T2 Magnetic Resonance Images.

Authors:  Ruba Alkadi; Fatma Taher; Ayman El-Baz; Naoufel Werghi
Journal:  J Digit Imaging       Date:  2019-10       Impact factor: 4.056

2.  Fostering a Healthy AI Ecosystem for Radiology: Conclusions of the 2018 RSNA Summit on AI in Radiology.

Authors:  Falgun H Chokshi; Adam E Flanders; Luciano M Prevedello; Curtis P Langlotz
Journal:  Radiol Artif Intell       Date:  2019-03-27

3.  Do We Expect More from Radiology AI than from Radiologists?

Authors:  Maciej A Mazurowski
Journal:  Radiol Artif Intell       Date:  2021-03-17

4.  Harnessing the Power of Deep Learning to Assess Breast Cancer Risk.

Authors:  Manisha Bahl
Journal:  Radiology       Date:  2019-12-17       Impact factor: 11.105

Review 5.  Understanding artificial intelligence based radiology studies: What is overfitting?

Authors:  Simukayi Mutasa; Shawn Sun; Richard Ha
Journal:  Clin Imaging       Date:  2020-04-23       Impact factor: 1.605

6.  Deep Learning-Based Automatic Segmentation of Lumbosacral Nerves on CT for Spinal Intervention: A Translational Study.

Authors:  G Fan; H Liu; Z Wu; Y Li; C Feng; D Wang; J Luo; W M Wells; S He
Journal:  AJNR Am J Neuroradiol       Date:  2019-05-30       Impact factor: 3.825

Review 7.  Magnetic resonance fingerprinting review part 2: Technique and directions.

Authors:  Debra F McGivney; Rasim Boyacıoğlu; Yun Jiang; Megan E Poorman; Nicole Seiberlich; Vikas Gulani; Kathryn E Keenan; Mark A Griswold; Dan Ma
Journal:  J Magn Reson Imaging       Date:  2019-07-25       Impact factor: 4.813

8.  Fully automated multiorgan segmentation in abdominal magnetic resonance imaging with deep neural networks.

Authors:  Yuhua Chen; Dan Ruan; Jiayu Xiao; Lixia Wang; Bin Sun; Rola Saouaf; Wensha Yang; Debiao Li; Zhaoyang Fan
Journal:  Med Phys       Date:  2020-08-30       Impact factor: 4.071

9.  Generalization error analysis for deep convolutional neural network with transfer learning in breast cancer diagnosis.

Authors:  Ravi K Samala; Heang-Ping Chan; Lubomir M Hadjiiski; Mark A Helvie; Caleb D Richter
Journal:  Phys Med Biol       Date:  2020-05-11       Impact factor: 3.609

10.  The use of optical coherence tomography and convolutional neural networks to distinguish normal and abnormal oral mucosa.

Authors:  Andrew E Heidari; Tiffany T Pham; Ibe Ifegwu; Ross Burwell; William B Armstrong; Tjoa Tjoson; Stephanie Whyte; Carmen Giorgioni; Beverly Wang; Brian J F Wong; Zhongping Chen
Journal:  J Biophotonics       Date:  2020-01-12       Impact factor: 3.207

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