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Evaluation of Automatic Detection of Abnormal Uptake by Deep Learning and Combination Technique in FDG-PET Images

Masashi Kawakami, Hiroyuki Sugimori, Kenji Hirata and Chietsugu Katoh
Journal of Nuclear Medicine May 2020, 61 (supplement 1) 3007;
Masashi Kawakami
1Hokkaido University Sapporo Japan
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Hiroyuki Sugimori
2Faculty of Health Sciences Hokkaido University Sapporo Japan
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Kenji Hirata
3Department of Diagnostic Imaging Hokkaido University Graduate School of Medicine Sapporo Japan
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Chietsugu Katoh
4Hokkaido University School of Medicine Sapporo Japan
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Journal of Nuclear Medicine
Vol. 61, Issue supplement 1
May 1, 2020
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Evaluation of Automatic Detection of Abnormal Uptake by Deep Learning and Combination Technique in FDG-PET Images
Masashi Kawakami, Hiroyuki Sugimori, Kenji Hirata, Chietsugu Katoh
Journal of Nuclear Medicine May 2020, 61 (supplement 1) 3007;

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Evaluation of Automatic Detection of Abnormal Uptake by Deep Learning and Combination Technique in FDG-PET Images
Masashi Kawakami, Hiroyuki Sugimori, Kenji Hirata, Chietsugu Katoh
Journal of Nuclear Medicine May 2020, 61 (supplement 1) 3007;
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