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Deceptive learning in histopathology.

Sahar ShahamatdarDaryoush Saeed-VafaDrew LinsleyFarah KhalilKatherine LovingerLester LiHoward T McLeodSohini RamachandranThomas Serre
Published in: Histopathology (2024)
Our work demonstrates that DNNs hold immense promise for aiding pathologists in analysing tissue. However, they are also capable of achieving seemingly strong performance by learning deceptive strategies that leverage spurious correlations, and are ultimately unsuitable for research or clinical work. The framework we propose for model evaluation and interpretation is an important step towards developing reliable automated systems for histopathological analysis.
Keyphrases
  • machine learning
  • deep learning
  • high throughput
  • single cell