Reproducible analysis of disease space via principal components using the novel R package syndRomics

  1. Abel Torres Espín  Is a corresponding author
  2. Austin Chou
  3. Russell Huie
  4. Nikolaos Kyritsis
  5. Pavan S Upadhyayula
  6. Adam Ferguson  Is a corresponding author
  1. University of California, San Francisco, United States
  2. University of California, San Diego, United States
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  1. Abel Torres Espín
  2. Austin Chou
  3. Russell Huie
  4. Nikolaos Kyritsis
  5. Pavan S Upadhyayula
  6. Adam Ferguson
(2021)
Reproducible analysis of disease space via principal components using the novel R package syndRomics
eLife 10:e61812.
https://doi.org/10.7554/eLife.61812