4.7 Article

Domain- and task-specific transfer learning for medical segmentation tasks

Journal

Publisher

ELSEVIER IRELAND LTD
DOI: 10.1016/j.cmpb.2021.106539

Keywords

Task transfer learning; MRI; Domain adaptation; Deep learning

Funding

  1. PPP Allowance by Health-Holland, Top Sector Life Sciences Health

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This study evaluates the influence of different source task and domain combinations on the performance of transfer learning-based medical image segmentation tasks. The results show that CNNs pre-trained on a segmentation task on the same domain as the target tasks have higher or similar segmentation accuracy. In addition, pre-training CNNs on ImageNet does not necessarily result in higher lesion detection rates.
Background and objectives: Transfer learning is a valuable approach to perform medical image segmentation in settings with limited cases available for training convolutional neural networks (CNN). Both the source task and the source domain influence transfer learning performance on a given target medical image segmentation task. This study aims to assess transfer learning-based medical segmentation task performance for various source task and domain combinations. Methods: CNNs were pre-trained on classification, segmentation, and self-supervised tasks on two domains: natural images and T1 brain MRI. Next, these CNNs were fine-tuned on three target T1 brain MRI segmentation tasks: stroke lesion, MS lesions, and brain anatomy segmentation. In all experiments, the CNN architecture and transfer learning strategy were the same. The segmentation accuracy on all target tasks was evaluated using the mIOU or Dice coefficients. The detection accuracy was evaluated for the stroke and MS lesion target tasks only. Results: CNNs pre-trained on a segmentation task on the same domain as the target tasks resulted in higher or similar segmentation accuracy compared to other source task and domain combinations. Pre-training a CNN on ImageNet resulted in a comparable, but not consistently higher lesion detection rate, despite the amount of training data used being 10 times larger. Conclusions: This study suggests that optimal transfer learning for medical segmentation is achieved with a similar task and domain for pre-training. As a result, CNNs can be effectively pre-trained on smaller datasets by selecting a source domain and task similar to the target domain and task. (C) 2021 Elsevier B.V.

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