Improved Multi-Task Brain Tumour Segmentation with Synthetic Data Augmentation
Andr\'e Ferreira, Tiago Jesus, Behrus Puladi, Jens Kleesiek, Victor, Alves, Jan Egger

TL;DR
This paper demonstrates that synthetic data augmentation can enhance the robustness of brain tumor segmentation algorithms in clinical scenarios, with state-of-the-art results in BraTS challenge tasks.
Contribution
It introduces a synthetic data generation pipeline to improve multi-task brain tumor segmentation performance in challenging post-treatment and radiotherapy planning scenarios.
Findings
Synthetic data improved segmentation robustness.
Achieved top performance in BraTS challenge tasks.
Synthetic pipeline was less effective for meningioma segmentation.
Abstract
This paper presents the winning solution of task 1 and the third-placed solution of task 3 of the BraTS challenge. The use of automated tools in clinical practice has increased due to the development of more and more sophisticated and reliable algorithms. However, achieving clinical standards and developing tools for real-life scenarios is a major challenge. To this end, BraTS has organised tasks to find the most advanced solutions for specific purposes. In this paper, we propose the use of synthetic data to train state-of-the-art frameworks in order to improve the segmentation of adult gliomas in a post-treatment scenario, and the segmentation of meningioma for radiotherapy planning. Our results suggest that the use of synthetic data leads to more robust algorithms, although the synthetic data generation pipeline is not directly suited to the meningioma task. In task 1, we achieved a…
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Taxonomy
TopicsBrain Tumor Detection and Classification · Medical Image Segmentation Techniques · Advanced Neural Network Applications
