Common brain networks between major depressive disorder and symptoms of depression that are validated for independent cohorts
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Saori C. Tanaka | M. Kawato | H. Imamizu | R. Hashimoto | N. Kato | K. Kasai | Y. Okamoto | G. Okada | N. Yahata | Takashi Yamada | Hidehiko Takahashi | O. Yamashita | A. Kunimatsu | M. Takamura | N. Ichikawa | Y. Sakai | K. Matsuo | A. Yamashita | T. Itahashi | N. Okada | H. Yamagata | Hiroto Mizuta | Kenichiro Harada
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