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      Reconstruction of cardiovascular black-blood T2-weighted image by deep learning algorithm: A comparison with intensity filter

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          Abstract

          Background

          Deep learning–based methods have been used to denoise magnetic resonance imaging.

          Purpose

          The purpose of this study was to evaluate a deep learning reconstruction (DL Recon) in cardiovascular black-blood T2-weighted images and compare with intensity filtered images.

          Material and Methods

          Forty-five DL Recon images were compared with intensity filtered and the original images. For quantitative image analysis, the signal to noise ratio (SNR) of the septum, contrast ratio (CR) of the septum to lumen, and sharpness of the endocardial border were calculated in each image. For qualitative image quality assessment, a 4-point subjective scale was assigned to each image (1 = poor, 2 = fair, 3 = good, 4 = excellent).

          Results

          The SNR and CR were significantly higher in the DL Recon images than in the intensity filtered and the original images ( p < .05 in each). Sharpness of the endocardial border was significantly higher in the DL Recon and intensity filtered images than in the original images ( p < .05 in each). The image quality of the DL Recon images was significantly better than that of intensity filtered and original images ( p < .001 in each).

          Conclusions

          DL Recon reduced image noise while improving image contrast and sharpness in the cardiovascular black-blood T2-weight sequence.

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          Most cited references14

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          Beyond a Gaussian Denoiser: Residual Learning of Deep CNN for Image Denoising.

          The discriminative model learning for image denoising has been recently attracting considerable attentions due to its favorable denoising performance. In this paper, we take one step forward by investigating the construction of feed-forward denoising convolutional neural networks (DnCNNs) to embrace the progress in very deep architecture, learning algorithm, and regularization method into image denoising. Specifically, residual learning and batch normalization are utilized to speed up the training process as well as boost the denoising performance. Different from the existing discriminative denoising models which usually train a specific model for additive white Gaussian noise at a certain noise level, our DnCNN model is able to handle Gaussian denoising with unknown noise level (i.e., blind Gaussian denoising). With the residual learning strategy, DnCNN implicitly removes the latent clean image in the hidden layers. This property motivates us to train a single DnCNN model to tackle with several general image denoising tasks, such as Gaussian denoising, single image super-resolution, and JPEG image deblocking. Our extensive experiments demonstrate that our DnCNN model can not only exhibit high effectiveness in several general image denoising tasks, but also be efficiently implemented by benefiting from GPU computing.
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            Learning a variational network for reconstruction of accelerated MRI data

            To allow fast and high-quality reconstruction of clinical accelerated multi-coil MR data by learning a variational network that combines the mathematical structure of variational models with deep learning.
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              Deep learning with convolutional neural network in radiology

              Deep learning with a convolutional neural network (CNN) is gaining attention recently for its high performance in image recognition. Images themselves can be utilized in a learning process with this technique, and feature extraction in advance of the learning process is not required. Important features can be automatically learned. Thanks to the development of hardware and software in addition to techniques regarding deep learning, application of this technique to radiological images for predicting clinically useful information, such as the detection and the evaluation of lesions, etc., are beginning to be investigated. This article illustrates basic technical knowledge regarding deep learning with CNNs along the actual course (collecting data, implementing CNNs, and training and testing phases). Pitfalls regarding this technique and how to manage them are also illustrated. We also described some advanced topics of deep learning, results of recent clinical studies, and the future directions of clinical application of deep learning techniques.
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                Author and article information

                Journal
                Acta Radiol Open
                Acta Radiol Open
                sparr
                ARR
                Acta Radiologica Open
                SAGE Publications (Sage UK: London, England )
                2058-4601
                September 2021
                26 September 2021
                : 10
                : 9
                : 20584601211044779
                Affiliations
                [1 ]Department of Radiology, Ringgold 38050, universityEhime University Graduate School of Medicine; , Toon, Japan
                [2 ]MR Collaboration and Development, universityGE Healthcare; , Tokyo, Japan
                [3 ]MR Collaboration and Development, universityGE Healthcare; , Calgary, Canada
                [4 ]Department of Radiology, universityI.M. Sechenov First Moscow State Medical University; , Russia
                Author notes
                [*]Ryo Ogawa, Department of Radiology, Ehime University Graduate School of Medicine, Shitsukawa, Toon 791-0295, Japan. Email: qq8y7cvd@ 123456tiara.ocn.ne.jp
                Author information
                https://orcid.org/0000-0002-3261-2752
                Article
                10.1177_20584601211044779
                10.1177/20584601211044779
                8477702
                34594576
                40484d98-61de-4dcc-8b67-e481ec427898
                © The Author(s) 2021

                Creative Commons Non Commercial CC BY-NC: This article is distributed under the terms of the Creative Commons Attribution-NonCommercial 4.0 License ( https://creativecommons.org/licenses/by-nc/4.0/) which permits non-commercial use, reproduction and distribution of the work without further permission provided the original work is attributed as specified on the SAGE and Open Access pages ( https://us.sagepub.com/en-us/nam/open-access-at-sage).

                History
                : 10 February 2021
                : 21 August 2021
                Categories
                Original Article
                Custom metadata
                ts10

                deep learning reconstruction,intensity filter,cardiovascular black-blood t2-weighted imaging

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