Literature DB >> 29923839

Computed tomography super-resolution using deep convolutional neural network.

Junyoung Park1, Donghwi Hwang, Kyeong Yun Kim, Seung Kwan Kang, Yu Kyeong Kim, Jae Sung Lee.   

Abstract

The objective of this study is to develop a convolutional neural network (CNN) for computed tomography (CT) image super-resolution. The network learns an end-to-end mapping between low (thick-slice thickness) and high (thin-slice thickness) resolution images using the modified U-Net. To verify the proposed method, we train and test the CNN using axially averaged data of existing thin-slice CT images as input and their middle slice as the label. Fifty-two CT studies are used as the CNN training set, and 13 CT studies are used as the test set. We perform five-fold cross-validation to confirm the performance consistency. Because all input and output images are used in two-dimensional slice format, the total number of slices for training the CNN is 7670. We assess the performance of the proposed method with respect to the resolution and contrast, as well as the noise properties. The CNN generates output images that are virtually equivalent to the ground truth. The most remarkable image-recovery improvement by the CNN is deblurring of boundaries of bone structures and air cavities. The CNN output yields an approximately 10% higher peak signal-to-noise ratio and lower normalized root mean square error than the input (thicker slices). The CNN output noise level is lower than the ground truth and equivalent to the iterative image reconstruction result. The proposed deep learning method is useful for both super-resolution and de-noising.

Mesh:

Year:  2018        PMID: 29923839     DOI: 10.1088/1361-6560/aacdd4

Source DB:  PubMed          Journal:  Phys Med Biol        ISSN: 0031-9155            Impact factor:   3.609


  24 in total

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5.  Generation of PET Attenuation Map for Whole-Body Time-of-Flight 18F-FDG PET/MRI Using a Deep Neural Network Trained with Simultaneously Reconstructed Activity and Attenuation Maps.

Authors:  Donghwi Hwang; Seung Kwan Kang; Kyeong Yun Kim; Seongho Seo; Jin Chul Paeng; Dong Soo Lee; Jae Sung Lee
Journal:  J Nucl Med       Date:  2019-01-25       Impact factor: 10.057

6.  Deep Learning Based High-Resolution Reconstruction of Trabecular Bone Microstructures from Low-Resolution CT Scans using GAN-CIRCLE.

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Review 7.  Preclinical Voxel-Based Dosimetry in Theranostics: a Review.

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8.  Artificial intelligence in oral and maxillofacial radiology: what is currently possible?

Authors:  Min-Suk Heo; Jo-Eun Kim; Jae-Joon Hwang; Sang-Sun Han; Jin-Soo Kim; Won-Jin Yi; In-Woo Park
Journal:  Dentomaxillofac Radiol       Date:  2020-11-16       Impact factor: 2.419

9.  PET-enabled dual-energy CT: image reconstruction and a proof-of-concept computer simulation study.

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Journal:  Phys Med Biol       Date:  2020-12-17       Impact factor: 3.609

10.  Classification of Myocardial 18F-FDG PET Uptake Patterns Using Deep Learning.

Authors:  Nicholas Josselyn; Matthew T MacLean; Christopher Jean; Ben Fuchs; Brianna F Moon; Eileen Hwuang; Srikant Kamesh Iyer; Harold Litt; Yuchi Han; Fatemeh Kaghazchi; Paco E Bravo; Walter R Witschey
Journal:  Radiol Artif Intell       Date:  2021-03-31
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