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Hands-on session in Computational Pathology:

Multiple Instance Learning for cancer diagnosis in whole-slide images

Presented by:

Guillaume Jaume

  • Post-doctoral researcher at Harvard Medical School and Brigham and Women's Hospital
  • [email protected]

Welcome to this tutorial session on Computational Pathology. This hands-on session is created to showcase simple but efficient methods for classifying whole-slide-images (WSIs) of lung cancer. Although illustrated in lung cancer subtyping, similar approaches can be applied to other tasks (e.g., grading, metastasis detection), and sites (e.g., breast, prostate, etc).

This tutorial is largely based on Lu et al., Data-efficient and weakly supervised computational pathology on whole-slide images Nature BME 2021, with code derived from CLAM.

We recommend using Google Colab for running the main notebook. All default Colab packages can be used for this session.

Schedule

The workshop will take place on the 6th and 7th of July from 9:00 to 18:00 CET.

Time Title
9:00-10:30 Session 1: Intro to QuPath and OpenSlide
10:30-11:00 Break
11:00-12:30 Session 2: Multiple Instance Learning (MIL)
12:30-14:30 Break
14:30-16:00 Session 3: Interpretability of MIL methods
16:00-16:30 Break
16:30-18:00 Session 4: Broader considerations