2017 Winter Project Week/Evaluate Deep Learning for binary cancer legion classification

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Home < 2017 Winter Project Week < Evaluate Deep Learning for binary cancer legion classification

Key Investigators

Curt Lisle, KnowledgeVis, LLC others are invited

Project Description

Objective Approach and Plan Progress and Next Steps
  • Train a neural network to become a binary classifier for the detection of cancer lesions using T2 ROI images
  • Curt has a dataset prepared by colleagues at the Frederick National Lab for Cancer Research to use to train a classifier.
  • The library consists of a set of 50x50 PNG images containing cancer lesions and two different 50x50 sets which do not contain lesions.
  • We plan to collect advice from others at the Project Week to select a deep learning framework and attempt to build a classifer using this training data.

Background and References