Image Analysis Tools and Pipelines

Development and evaluation of new image analysis tools and processing pipelines.

This project focuses on solving the computational challenges surrounding processing of quantitative imaging data, especially in the context of large imaging clinical studies and trials (i.e., >>1,000 examinations). A major focus is on the application of novel machine learning approaches to facilitate automated and semi-automated processing. A number of traditional as well as deep learning methods are currently under investigation. Interpretable deep-learning techniques are of particular interest.

Several of these developments is conducted in conjunction with expertise at the Calgary Image Processing and Analysis Centre (CIPAC), as well as with collaborators at the Medical Imaging Processing Laboratory (MICLab) at the University of Campinas.

Representative Publications

Prospective Trainee Requirements

MSc or PhD in Mathematics, Computer Science, Electrical or Computer Engineering, Physics or a closely aligned field. Good skills and experience in statistics, and image processing and analysis techniques. Understanding of modern software engineering principles. Experience in C++ or Python or similar language and pattern recognition techniques is desired. Good written and oral English language skills.

WMH segementation

Segmentation results for the three patients comparing 2.5D U-Net variants (regular U-Net, LinkNET, FPN).