Joint Registration and Segmentation via Multi-Task Learning for Adaptive Radiotherapy of Prostate Cancer
Mohamed S. Elmahdy, Laurens Beljaards, Sahar Yousefi, Hessam Sokooti,, Fons Verbeek, U. A. van der Heide, and Marius Staring

TL;DR
This paper introduces a multi-task learning approach that jointly performs registration and segmentation in medical images, specifically for prostate cancer radiotherapy, leading to improved accuracy and efficiency over traditional single-task methods.
Contribution
The study proposes a novel multi-task learning framework that integrates registration and segmentation tasks at both loss and architectural levels for adaptive radiotherapy.
Findings
MTL algorithms outperform single-task learning counterparts.
Achieved high accuracy in automatic contouring for prostate and surrounding organs.
Demonstrated better generalization on independent test data.
Abstract
Medical image registration and segmentation are two of the most frequent tasks in medical image analysis. As these tasks are complementary and correlated, it would be beneficial to apply them simultaneously in a joint manner. In this paper, we formulate registration and segmentation as a joint problem via a Multi-Task Learning (MTL) setting, allowing these tasks to leverage their strengths and mitigate their weaknesses through the sharing of beneficial information. We propose to merge these tasks not only on the loss level, but on the architectural level as well. We studied this approach in the context of adaptive image-guided radiotherapy for prostate cancer, where planning and follow-up CT images as well as their corresponding contours are available for training. The study involves two datasets from different manufacturers and institutes. The first dataset was divided into training…
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