Estienne Théo, Lerousseau Marvin, Vakalopoulou Maria, Alvarez Andres Emilie, Battistella Enzo, Carré Alexandre, Chandra Siddhartha, Christodoulidis Stergios, Sahasrabudhe Mihir, Sun Roger, Robert Charlotte, Talbot Hugues, Paragios Nikos, Deutsch Eric
Gustave Roussy-CentraleSupélec-TheraPanacea Center of Artificial Intelligence in Radiation Therapy and Oncology, Gustave Roussy Cancer Campus, Villejuif, France.
Université Paris-Saclay, Institut Gustave Roussy, Inserm, Molecular Radiotherapy and Innovative Therapeutics, Villejuif, France.
Front Comput Neurosci. 2020 Mar 20;14:17. doi: 10.3389/fncom.2020.00017. eCollection 2020.
Image registration and segmentation are the two most studied problems in medical image analysis. Deep learning algorithms have recently gained a lot of attention due to their success and state-of-the-art results in variety of problems and communities. In this paper, we propose a novel, efficient, and multi-task algorithm that addresses the problems of image registration and brain tumor segmentation jointly. Our method exploits the dependencies between these tasks through a natural coupling of their interdependencies during inference. In particular, the similarity constraints are relaxed within the tumor regions using an efficient and relatively simple formulation. We evaluated the performance of our formulation both quantitatively and qualitatively for registration and segmentation problems on two publicly available datasets (BraTS 2018 and OASIS 3), reporting competitive results with other recent state-of-the-art methods. Moreover, our proposed framework reports significant amelioration ( < 0.005) for the registration performance inside the tumor locations, providing a generic method that does not need any predefined conditions (e.g., absence of abnormalities) about the volumes to be registered. Our implementation is publicly available online at https://github.com/TheoEst/joint_registration_tumor_segmentation.
图像配准和分割是医学图像分析中研究最多的两个问题。深度学习算法最近因其在各种问题和领域中取得的成功及达到的先进成果而备受关注。在本文中,我们提出了一种新颖、高效的多任务算法,该算法联合解决图像配准和脑肿瘤分割问题。我们的方法在推理过程中通过自然耦合这些任务之间的相互依赖关系来利用它们之间的相关性。特别是,使用一种高效且相对简单的公式在肿瘤区域内放宽相似性约束。我们在两个公开可用的数据集(BraTS 2018和OASIS 3)上对配准和分割问题在定量和定性方面评估了我们公式的性能,报告了与其他近期先进方法相比具有竞争力的结果。此外,我们提出的框架在肿瘤位置的配准性能方面有显著改善(<0.005),提供了一种无需对要配准的体积有任何预定义条件(例如无异常)的通用方法。我们的实现可在https://github.com/TheoEst/joint_registration_tumor_segmentation上在线公开获取。