Authors
Phillip Chlap, Hang Min, Nym Vandenberg, Jason Dowling, Lois Holloway, Annette Haworth
Publication date
2021/8
Source
Journal of Medical Imaging and Radiation Oncology
Volume
65
Issue
5
Pages
545-563
Description
Research in artificial intelligence for radiology and radiotherapy has recently become increasingly reliant on the use of deep learning‐based algorithms. While the performance of the models which these algorithms produce can significantly outperform more traditional machine learning methods, they do rely on larger datasets being available for training. To address this issue, data augmentation has become a popular method for increasing the size of a training dataset, particularly in fields where large datasets aren’t typically available, which is often the case when working with medical images. Data augmentation aims to generate additional data which is used to train the model and has been shown to improve performance when validated on a separate unseen dataset. This approach has become commonplace so to help understand the types of data augmentation techniques used in state‐of‐the‐art deep learning …
Total citations
202120222023202410104269201
Scholar articles
P Chlap, H Min, N Vandenberg, J Dowling, L Holloway… - Journal of Medical Imaging and Radiation Oncology, 2021