Nature Communications (Nov 2020)
Training confounder-free deep learning models for medical applications
Abstract
The presence of confounding effects is one of the most critical challenges in using deep learning to advance discovery in medical imaging studies. Here, the authors introduce an end-to-end approach for deriving features invariant to confounding factors as inputs to prediction models.