MRI image synthesis for fluid-attenuated inversion recovery and diffusion-weighted images with deep learning

被引:0
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作者
Daisuke Kawahara
Hisanori Yoshimura
Takaaki Matsuura
Akito Saito
Yasushi Nagata
机构
[1] Hiroshima University,Department of Radiation Oncology, Graduate School of Biomedical and Health Sciences
[2] National Hospital Organization Kure Medical Center,Department of Radiology
[3] Hiroshima High-Precision Radiotherapy Cancer Center,undefined
关键词
Deep learning; Image synthesis; Generative adversarial network; Magnetic resonance imaging;
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中图分类号
学科分类号
摘要
This study aims to synthesize fluid-attenuated inversion recovery (FLAIR) and diffusion-weighted images (DWI) with a deep conditional adversarial network from T1- and T2-weighted magnetic resonance imaging (MRI) images. A total of 1980 images of 102 patients were split into two datasets: 1470 (68 patients) in a training set and 510 (34 patients) in a test set. The prediction framework was based on a convolutional neural network with a generator and discriminator. T1-weighted, T2-weighted, and composite images were used as inputs. The digital imaging and communications in medicine (DICOM) images were converted to 8-bit red–green–blue images. The red and blue channels of the composite images were assigned to 8-bit grayscale pixel values in T1-weighted images, and the green channel was assigned to those in T2-weighted images. The prediction FLAIR and DWI images were of the same objects as the inputs. For the results, the prediction model with composite MRI input images in the DWI image showed the smallest relative mean absolute error (rMAE) and largest mutual information (MI), and that in the FLAIR image showed the largest relative mean-square error (rMSE), relative root-mean-square error (rRMSE), and peak signal-to-noise ratio (PSNR). For the FLAIR image, the prediction model with the T2-weighted MRI input images generated more accurate synthesis results than that with the T1-weighted inputs. The proposed image synthesis framework can improve the versatility and quality of multi-contrast MRI without extra scans. The composite input MRI image contributes to synthesizing the multi-contrast MRI image efficiently.
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页码:313 / 323
页数:10
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