Fourcade Constance, Ferrer Ludovic, Santini Gianmarco, Moreau Noemie, Rousseau Caroline, Lacombe Marie, Guillerminet Camille, Colombie Mathilde, Campone Mario, Mateus Diana, Rubeaux Mathieu
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:1536-1539. doi: 10.1109/EMBC44109.2020.9175683.
Semi-automatic measurements are performed on FDG PET-CT images to monitor the evolution of metastatic sites in the clinical follow-up of metastatic breast cancer patients. Apart from being time-consuming and prone to subjective approximation, semi-automatic tools cannot make the difference between cancerous regions and active organs, presenting a high FDG uptake.In this work, we combine a deep learning-based approach with a superpixel segmentation method to segment the main active organs (brain, heart, bladder) from full-body PET images. In particular, we integrate a superpixel SLIC algorithm at different levels of a convolutional network. Results are compared with a deep learning segmentation network alone. The methods are cross-validated on full-body PET images of 36 patients and tested on the acquisitions of 24 patients from a different study center, in the context of the ongoing EPICUREseinmeta study. The similarity between the manually defined organ masks and the results is evaluated with the Dice score. Moreover, the amount of false positives is evaluated through the positive predictive value (PPV).According to the computed Dice scores, all approaches allow to accurately segment the target organs. However, the networks integrating superpixels are better suited to transfer knowledge across datasets acquired on multiple sites (domain adaptation) and are less likely to segment structures outside of the target organs, according to the PPV.Hence, combining deep learning with superpixels allows to segment organs presenting a high FDG uptake on PET images without selecting cancerous lesion, and thus improves the precision of the semi-automatic tools monitoring the evolution of breast cancer metastasis.Clinical relevance- We demonstrate the utility of combining deep learning and superpixel segmentation methods to accurately find the contours of active organs from metastatic breast cancer images, to different dataset distributions.
在转移性乳腺癌患者的临床随访中,对FDG PET-CT图像进行半自动测量,以监测转移部位的演变。半自动工具除了耗时且容易出现主观近似外,还无法区分癌性区域和摄取高FDG的活跃器官。在这项工作中,我们将基于深度学习的方法与超像素分割方法相结合,从全身PET图像中分割出主要的活跃器官(脑、心脏、膀胱)。具体而言,我们在卷积网络的不同层次集成了超像素SLIC算法。将结果与单独的深度学习分割网络进行比较。在正在进行的EPICUREseinmeta研究的背景下,这些方法在36例患者的全身PET图像上进行交叉验证,并在来自不同研究中心的24例患者的图像上进行测试。用Dice分数评估手动定义的器官掩码与结果之间的相似性。此外,通过阳性预测值(PPV)评估假阳性的数量。根据计算出的Dice分数,所有方法都能准确分割目标器官。然而,根据PPV,集成超像素的网络更适合在多个站点获取的数据集之间传递知识(域适应),并且不太可能分割目标器官之外的结构。因此,将深度学习与超像素相结合,可以在不选择癌性病变的情况下分割PET图像上摄取高FDG的器官,从而提高监测乳腺癌转移演变的半自动工具的精度。临床相关性——我们证明了将深度学习和超像素分割方法相结合的实用性,以准确地从转移性乳腺癌图像中找到活跃器官的轮廓,适应不同的数据集分布。