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  1. 原著論文

Image quality improvement of single-shot turbo spin-echo magnetic resonance imaging of female pelvis using a convolutional neural network

https://repo.qst.go.jp/records/81082
https://repo.qst.go.jp/records/81082
fa9016d2-fda1-487d-88cf-b88d83ed2471
アイテムタイプ 学術雑誌論文 / Journal Article(1)
公開日 2020-11-24
タイトル
タイトル Image quality improvement of single-shot turbo spin-echo magnetic resonance imaging of female pelvis using a convolutional neural network
言語
言語 eng
資源タイプ
資源タイプ識別子 http://purl.org/coar/resource_type/c_6501
資源タイプ journal article
アクセス権
アクセス権 metadata only access
アクセス権URI http://purl.org/coar/access_right/c_14cb
著者 Misaka, Tomofumi

× Misaka, Tomofumi

WEKO 1011348

Misaka, Tomofumi

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Asato, Nobuyuki

× Asato, Nobuyuki

WEKO 1011349

Asato, Nobuyuki

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Ono, Yukihiko

× Ono, Yukihiko

WEKO 1011350

Ono, Yukihiko

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Ota, Yukino

× Ota, Yukino

WEKO 1011351

Ota, Yukino

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Kobayashi, Takuma

× Kobayashi, Takuma

WEKO 1011352

Kobayashi, Takuma

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Umehara, Kensuke

× Umehara, Kensuke

WEKO 1011353

Umehara, Kensuke

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Ota, Junko

× Ota, Junko

WEKO 1011354

Ota, Junko

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Uemura, Masanobu

× Uemura, Masanobu

WEKO 1011355

Uemura, Masanobu

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Ashikaga, Ryuichiro

× Ashikaga, Ryuichiro

WEKO 1011356

Ashikaga, Ryuichiro

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Ishida, Takayuki

× Ishida, Takayuki

WEKO 1011357

Ishida, Takayuki

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Kensuke, Umehara

× Kensuke, Umehara

WEKO 1011358

en Kensuke, Umehara

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Junko, Ota

× Junko, Ota

WEKO 1011359

en Junko, Ota

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Ishida, Takayuki

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WEKO 1011360

en Ishida, Takayuki

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抄録
内容記述タイプ Abstract
内容記述 We have developed a deep learning-based approach to improve image quality of single-shot turbo spin-echo (SSTSE) images of female pelvis. We aimed to compare the deep learning-based single-shot turbo spin-echo (DL-SSTSE) images of female pelvis with turbo spin-echo (TSE) and conventional SSTSE images in terms of image quality.
One hundred five and 21 subjects were used as training and test sets, respectively. We performed 6-fold cross validation. In the training process, low-quality images were generated from TSE images as input. TSE images were used as ground truth images. In the test process, the trained convolutional neural network was applied to SSTSE images. The output images were denoted as DL-SSTSE images. Apart from DL-SSTSE images, classical filtering methods were adopted to SSTSE images. Generated images were denoted as F-SSTSE images. Contrast ratio (CR) of gluteal fat and myometrium and signal-to-noise ratio (SNR) of gluteal fat were measured for all images. Two radiologists graded these images using a 5-point scale and evaluated the image quality with regard to overall image quality, contrast, noise, motion artifact, boundary sharpness of layers in the uterus, and the conspicuity of the ovaries. CRs, SNRs, and image quality scores were compared using the Steel-Dwass multiple comparison tests.
CRs and SNRs were significantly higher in DL-SSTSE, F-SSTSE, and TSE images than in SSTSE images. Scores with regard to overall image quality, contrast, noise, and boundary sharpness of layers in the uterus were significantly higher on DL-SSTSE and TSE images than on SSTSE images. There were no significant differences in the CRs, SNRs, and respective scores between DL-SSTSE and TSE images. The score with regard to motion artifacts was significantly higher on DL-SSTSE, F-SSTSE, and SSTSE images than on TSE images. The score with regard to the conspicuity of ovaries was significantly higher on DL-SSTSE images than on F-SSTSE, SSTSE, and TSE images (P < .001).
DL-SSTSE images showed higher image quality as compared with SSTSE images. In comparison with conventional TSE images, DL-SSTSE images had acceptable image quality while keeping the advantage of the motion artifact-robustness and acquisition time efficiency in SSTSE imaging.
書誌情報 Medicine

巻 99, 号 47, p. e23138, 発行日 2020-11
出版者
出版者 Wolters Klumer
ISSN
収録物識別子タイプ ISSN
収録物識別子 0025-7974
PubMed番号
識別子タイプ PMID
関連識別子 33217817
DOI
識別子タイプ DOI
関連識別子 10.1097/MD.0000000000023138
関連サイト
識別子タイプ URI
関連識別子 https://journals.lww.com/md-journal/Fulltext/2020/11200/Image_quality_improvement_of_single_shot_turbo.32.aspx
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