A prediction model of working memory across health and psychiatric disease using whole-brain functional connectivity

  1. Masahiro Yamashita
  2. Yujiro Yoshihara
  3. Ryuichiro Hashimoto
  4. Noriaki Yahata
  5. Naho Ichikawa
  6. Yuki Sakai
  7. Takashi Yamada
  8. Noriko Matsukawa
  9. Go Okada
  10. Saori C Tanaka
  11. Kiyoto Kasai
  12. Nobumasa Kato
  13. Yasumasma Okamoto
  14. Ben Seymour  Is a corresponding author
  15. Hidehiko Takahashi  Is a corresponding author
  16. Mitsuo Kawato  Is a corresponding author
  17. Hiroshi Imamizu  Is a corresponding author
  1. Advanced Telecommunications Research Institute International, Japan
  2. Kyoto University Graduate School of Medicine, Japan
  3. Showa University, Japan
  4. The University of Tokyo, Japan
  5. Hiroshima University Graduate School of Biomedical and Health Sciences, Japan
  6. University of Cambridge, United Kingdom
1 additional file

Additional files

All additional files

Any figure supplements, source code, source data, videos or supplementary files associated with this article are contained within this zip.

https://cdn.elifesciences.org/articles/38844/elife-38844-supp-v1.zip

Download links

A two-part list of links to download the article, or parts of the article, in various formats.

Downloads (link to download the article as PDF)

Open citations (links to open the citations from this article in various online reference manager services)

Cite this article (links to download the citations from this article in formats compatible with various reference manager tools)

  1. Masahiro Yamashita
  2. Yujiro Yoshihara
  3. Ryuichiro Hashimoto
  4. Noriaki Yahata
  5. Naho Ichikawa
  6. Yuki Sakai
  7. Takashi Yamada
  8. Noriko Matsukawa
  9. Go Okada
  10. Saori C Tanaka
  11. Kiyoto Kasai
  12. Nobumasa Kato
  13. Yasumasma Okamoto
  14. Ben Seymour
  15. Hidehiko Takahashi
  16. Mitsuo Kawato
  17. Hiroshi Imamizu
(2018)
A prediction model of working memory across health and psychiatric disease using whole-brain functional connectivity
eLife 7:e38844.
https://doi.org/10.7554/eLife.38844