Lymphoma detection and segmentation from whole-body Positron Emission Tomography/Computed Tomography (PET/CT) volumes are crucial for surgical indication and radiotherapy. Designing automatic segmentation methods capable of effectively exploiting the information from PET and CT as well as resolving their uncertainty remain a challenge. In this paper, we propose an lymphoma segmentation model using an UNet with an evidential PET/CT fusion layer. Single-modality volumes are trained separately to get initial segmentation maps and an evidential fusion layer is proposed to fuse the two pieces of evidence using Dempster-Shafer theory (DST). Moreover, a multi-task loss function is proposed: in addition to the use of the Dice loss for PET and CT segmentation, a loss function based on the concordance between the two segmentation is added to constrain the final segmentation. We evaluate our proposal on a database of polycentric PET/CT volumes of patients treated for lymphoma, delineated by the experts. Our method get accurate segmentation results with Dice score of 0.726, without any user interaction. Quantitative results show that our method is superior to the state-of-the-art methods.
翻译:对手术指示和放射治疗至关重要。设计能够有效利用来自PET和CT的信息并解决其不确定性的自动分解方法仍然是一项挑战。我们在本文件中建议使用具有证据PET/CT聚变层的UNet 淋巴分解模型。单调量经过单独培训,以获得初步分解图,并提议一个证据聚合层,以利用Dempster-Shafer理论(DST)将两件证据合为一体。此外,还提议了一个多任务损失功能:除了使用Dice损失作为PET和CT分解法之外,根据两个分解法的一致性增加一个损失函数以限制最后分解。我们评价了我们关于多中心PET/CT数量数据库的建议,由专家加以界定。我们的方法获得精确的分解结果,Dice分得0.726分位数,而不用任何用户互动。QQ:根据两个分解法的一致性计算出的损失函数,显示我们的数据-状态。QQ:根据两种分解法的一致性结果显示我们的任何用户互动。QQQQQ