3D deep learning on medical images : a review
The rapid advancements in machine learning, graphics processing technologies and the availability of medical imaging data have led to a rapid increase in the use of deep learning models in the medical domain. This was exacerbated by the rapid advancements in convolutional neural network (CNN) based...
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sg-ntu-dr.10356-1460572023-03-05T16:46:11Z 3D deep learning on medical images : a review Singh, Satya P. Wang, Lipo Gupta, Sukrit Goli, Haveesh Padmanabhan, Parasuraman Gulyás, Balázs Lee Kong Chian School of Medicine (LKCMedicine) School of Electrical and Electronic Engineering School of Computer Science and Engineering Cognitive Neuroimaging Centre Science::Medicine 3D Convolutional Neural Networks 3D Medical Images The rapid advancements in machine learning, graphics processing technologies and the availability of medical imaging data have led to a rapid increase in the use of deep learning models in the medical domain. This was exacerbated by the rapid advancements in convolutional neural network (CNN) based architectures, which were adopted by the medical imaging community to assist clinicians in disease diagnosis. Since the grand success of AlexNet in 2012, CNNs have been increasingly used in medical image analysis to improve the efficiency of human clinicians. In recent years, three-dimensional (3D) CNNs have been employed for the analysis of medical images. In this paper, we trace the history of how the 3D CNN was developed from its machine learning roots, we provide a brief mathematical description of 3D CNN and provide the preprocessing steps required for medical images before feeding them to 3D CNNs. We review the significant research in the field of 3D medical imaging analysis using 3D CNNs (and its variants) in different medical areas such as classification, segmentation, detection and localization. We conclude by discussing the challenges associated with the use of 3D CNNs in the medical imaging domain (and the use of deep learning models in general) and possible future trends in the field. Nanyang Technological University Published version Authors acknowledge the support from Lee Kong Chian School of Medicine and Data Science and AI Research (DSAIR) center of Nanyang Technological University Singapore (Project Number ADH-11/2017-DSAIR). PP and BG also acknowledges the support from the Cognitive Neuro Imaging Centre (CONIC) at Nanyang Technological University Singapore. 2021-01-22T04:14:26Z 2021-01-22T04:14:26Z 2020 Journal Article Singh, S. P., Wang, L., Gupta, S., Goli, H., Padmanabhan, P., & Gulyás, B. (2020). 3D deep learning on medical images : a review. Sensors, 20(18), 5097-. doi:10.3390/s20185097 1424-8220 https://hdl.handle.net/10356/146057 10.3390/s20185097 32906819 2-s2.0-85090278031 18 20 en ADH-11/2017-DSAIR Sensors © 2020 the Author(s). Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution(CC BY) license (http://creativecommons.org/licenses/by/4.0/). application/pdf |
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Science::Medicine 3D Convolutional Neural Networks 3D Medical Images Singh, Satya P. Wang, Lipo Gupta, Sukrit Goli, Haveesh Padmanabhan, Parasuraman Gulyás, Balázs 3D deep learning on medical images : a review |
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The rapid advancements in machine learning, graphics processing technologies and the availability of medical imaging data have led to a rapid increase in the use of deep learning models in the medical domain. This was exacerbated by the rapid advancements in convolutional neural network (CNN) based architectures, which were adopted by the medical imaging community to assist clinicians in disease diagnosis. Since the grand success of AlexNet in 2012, CNNs have been increasingly used in medical image analysis to improve the efficiency of human clinicians. In recent years, three-dimensional (3D) CNNs have been employed for the analysis of medical images. In this paper, we trace the history of how the 3D CNN was developed from its machine learning roots, we provide a brief mathematical description of 3D CNN and provide the preprocessing steps required for medical images before feeding them to 3D CNNs. We review the significant research in the field of 3D medical imaging analysis using 3D CNNs (and its variants) in different medical areas such as classification, segmentation, detection and localization. We conclude by discussing the challenges associated with the use of 3D CNNs in the medical imaging domain (and the use of deep learning models in general) and possible future trends in the field. |
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Lee Kong Chian School of Medicine (LKCMedicine) |
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Lee Kong Chian School of Medicine (LKCMedicine) Singh, Satya P. Wang, Lipo Gupta, Sukrit Goli, Haveesh Padmanabhan, Parasuraman Gulyás, Balázs |
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Article |
author |
Singh, Satya P. Wang, Lipo Gupta, Sukrit Goli, Haveesh Padmanabhan, Parasuraman Gulyás, Balázs |
author_sort |
Singh, Satya P. |
title |
3D deep learning on medical images : a review |
title_short |
3D deep learning on medical images : a review |
title_full |
3D deep learning on medical images : a review |
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3D deep learning on medical images : a review |
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3D deep learning on medical images : a review |
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3d deep learning on medical images : a review |
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2021 |
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https://hdl.handle.net/10356/146057 |
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1759857749493022720 |