Transfusion: Understanding Transfer Learning for Medical Imaging
Google (United States) · Cornell University
Abstract
Transfer learning from natural image datasets, particularly ImageNet, using standard large models and corresponding pretrained weights has become a de-facto method for deep learning applications to medical imaging. However, there are fundamental differences in data sizes, features and task specifications between natural image classification and the target medical tasks, and there is little understanding of the effects of transfer. In this paper, we explore properties of transfer learning for medical imaging. A performance evaluation on two large scale medical imaging tasks shows that surprisingly, transfer offers little benefit to performance, and simple, lightweight models can perform comparably to ImageNet…
Citation impact
- FWCI
- —
- Percentile
- —
- References
- 40
Authors
4Topics & keywords
- Transfer of learning
- Computer science
- Reuse
- Feature (linguistics)
- Artificial intelligence
- Task (project management)
- Machine learning
- Medical imaging