Ground Truths

Faisal Mahmood: A.I.'s Transformation of Pathology

Jul 28, 2024
Faisal Mahmood, a Harvard Medical School professor and pathologist at Mass General Brigham, discusses how AI is revolutionizing pathology. He highlights the evolution of deep learning in medical diagnostics, the exciting use of foundation models like Uni and Conch, and innovations in 3D pathology that improve accuracy. Faisal also addresses the challenges of digital pathology, including resistance to change, while emphasizing accessible technologies to enhance care. His insights provide a glimpse into the future of diagnostics through AI.
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INSIGHT

Deep Learning's Impact on Pathology

  • Deep learning revolutionized pathology by enabling abstract feature representations.
  • This allowed for solving complex classification problems, like predicting treatment response.
ANECDOTE

Deep Learning with Conventional Slides

  • Early deep learning models primarily used whole slide images.
  • However, Faisal Mahmood's 2021 study demonstrated the feasibility of using conventional H&E slides and even cellphone camera images.
INSIGHT

Pathologist Variability and Need for Standardization

  • Intra-observer variability among pathologists is a significant issue, particularly in areas like endomyocardial biopsies, where Cohen's Kappa is around 0.22.
  • This variability impacts diagnoses and subsequent treatment regimens, highlighting the need for standardization.
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