The Digital Mammography DREAM Challenge will attempt to improve the predictive accuracy of digital mammography for the early detection of breast cancer. The primary benefit of this Challenge will be to establish new quantitative tools - machine learning, deep learning or other - that can help decrease the recall rate of screening mammography, with a potential impact on shifting the balance of routine breast cancer screening towards more benefit and less harm. Participating teams will be asked to submit predictive models based on over 640,000 de-identified digital mammography images from over 86000 patients, with corresponding clinical variables.
Tech
Project will be deployed as a Docker image, as it is required by the challenge.
Language: Python
Libs: TensorFlow or Keras
Model: Convolutional Neural Networks
Team
Aleksandar Lukić (E2 97/2016)
Opened for new members.
Description
The Digital Mammography DREAM Challenge will attempt to improve the predictive accuracy of digital mammography for the early detection of breast cancer. The primary benefit of this Challenge will be to establish new quantitative tools - machine learning, deep learning or other - that can help decrease the recall rate of screening mammography, with a potential impact on shifting the balance of routine breast cancer screening towards more benefit and less harm. Participating teams will be asked to submit predictive models based on over 640,000 de-identified digital mammography images from over 86000 patients, with corresponding clinical variables.
Tech
Project will be deployed as a Docker image, as it is required by the challenge. Language: Python Libs: TensorFlow or Keras Model: Convolutional Neural Networks
Team
Aleksandar Lukić (E2 97/2016) Opened for new members.