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Research ArticleBRAIN

Performance Evaluation of Radiologists with Artificial Neural Network for Differential Diagnosis of Intra-Axial Cerebral Tumors on MR Images

K. Yamashita, T. Yoshiura, H. Arimura, F. Mihara, T. Noguchi, A. Hiwatashi, O. Togao, Y. Yamashita, T. Shono, S. Kumazawa, Y. Higashida and H. Honda
American Journal of Neuroradiology June 2008, 29 (6) 1153-1158; DOI: https://doi.org/10.3174/ajnr.A1037
K. Yamashita
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T. Yoshiura
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H. Arimura
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F. Mihara
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T. Noguchi
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A. Hiwatashi
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O. Togao
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Y. Yamashita
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T. Shono
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S. Kumazawa
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Y. Higashida
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H. Honda
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American Journal of Neuroradiology: 29 (6)
American Journal of Neuroradiology
Vol. 29, Issue 6
June 2008
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K. Yamashita, T. Yoshiura, H. Arimura, F. Mihara, T. Noguchi, A. Hiwatashi, O. Togao, Y. Yamashita, T. Shono, S. Kumazawa, Y. Higashida, H. Honda
Performance Evaluation of Radiologists with Artificial Neural Network for Differential Diagnosis of Intra-Axial Cerebral Tumors on MR Images
American Journal of Neuroradiology Jun 2008, 29 (6) 1153-1158; DOI: 10.3174/ajnr.A1037

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Performance Evaluation of Radiologists with Artificial Neural Network for Differential Diagnosis of Intra-Axial Cerebral Tumors on MR Images
K. Yamashita, T. Yoshiura, H. Arimura, F. Mihara, T. Noguchi, A. Hiwatashi, O. Togao, Y. Yamashita, T. Shono, S. Kumazawa, Y. Higashida, H. Honda
American Journal of Neuroradiology Jun 2008, 29 (6) 1153-1158; DOI: 10.3174/ajnr.A1037
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