Super-resolution deep learning reconstruction approach for enhanced visualization in lumbar spine MR bone imaging
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Published:2024-09
Issue:
Volume:178
Page:111587
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ISSN:0720-048X
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Container-title:European Journal of Radiology
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language:en
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Short-container-title:European Journal of Radiology
Author:
Hokamura Masamichi,
Nakaura TakeshiORCID,
Yoshida Naofumi,
Uetani Hiroyuki,
Shiraishi Kaori,
Kobayashi Naoki,
Matsuo Kensei,
Morita Kosuke,
Nagayama Yasunori,
Kidoh Masafumi,
Yamashita Yuichi,
Miyamoto Takeshi,
Hirai Toshinori
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