日本磁気共鳴医学会雑誌
Online ISSN : 2434-0499
Print ISSN : 0914-9457
大会長賞記録
深層学習を用いた3D quantitative synthetic MRIに基づくMRA生成[大会長賞記録]
藤田 翔平大塚 裕次朗萩原 彰文堀 正明竹井 直行Ken-Pin Hwang入江 隆介Christina Andica鎌形 康司隈丸 加奈子鈴木 道真和田 昭彦青木 茂樹
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2020 年 40 巻 1 号 p. 20-23

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Purpose : Quantitative synthetic magnetic resonance imaging (MRI) enables the synthesis of various contrast-weighted images based on simultaneous relaxometry. Herein, we developed a deep learning algorithm to generate magnetic resonance angiography (MRA) from three-dimensional (3D) synthetic MRI data.

Materials and Methods : Eleven healthy volunteers underwent time-of-flight (TOF) MRA sequence and 3D synthetic MRI sequence, i.e., 3D-QALAS. Five raw 3D-QALAS images were used as inputs for deep learning (DL-MRA). A simple linear combination model was prepared for comparison (linear-MRA). Three-fold cross-validation was performed. The peak signal-to-noise ratio (PSNR) and structural similarity index (SSIM) were calculated for DL-MRA and linear-MRA against TOF-MRA. The overall image quality and branch visualization were scored on a 5-point Likert scale by a neuroradiologist blinded to the data.

Results : The PSNR and SSIM were significantly higher for DL-MRA that those of linear-MRA. Overall image quality and branch visualizations were comparable for DL-MRA and TOF-MRA.

Conclusion : Deep learning based on 3D-synthetic MRI enabled the generation of MRA with quality equivalent to that of TOF-MRA.

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