On the objectivity, reliability, and validity of deep learning enabled bioimage analyses

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  1. Dennis Segebarth
  2. Matthias Griebel
  3. Nikolai Stein
  4. Cora R von Collenberg
  5. Corinna Martin
  6. Dominik Fiedler
  7. Lucas B Comeras
  8. Anupam Sah
  9. Victoria Schoeffler
  10. Teresa Lüffe
  11. Alexander Dürr
  12. Rohini Gupta
  13. Manju Sasi
  14. Christina Lillesaar
  15. Maren D Lange
  16. Ramon O Tasan
  17. Nicolas Singewald
  18. Hans-Christian Pape
  19. Christoph M Flath
  20. Robert Blum
(2020)
On the objectivity, reliability, and validity of deep learning enabled bioimage analyses
eLife 9:e59780.
https://doi.org/10.7554/eLife.59780