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Automated 3D lymphoma lesion segmentation from PET/CT characteristics

机译:通过PET / CT特征自动进行3D淋巴瘤病变分割

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Positron Emission Tomography (PET) using F-FDG is recognized as the modality of choice for lymphoma, due to its high sensitivity and specificity. Its wider use for the detection of lesions, quantification of their metabolic activity and evaluation of response to treatment demands the development of accurate and reproducible quantitative image interpretation tools. An accurate tumour delineation remains a challenge in PET, due to the limitations the modality suffers from, despite being essential for quantifying reliable changes in tumour tissues. Due to the spatial and spectral properties of PET images, most methods rely on intensity-based strategies. Recent methods also propose to integrate anatomical priors to improve the segmentation process. However, the current routinely-used approach remains a local relative thresholding and requires important user interaction, leading to a process that is not only user-dependent but very laborious in the case of lymphomas. In this paper, we propose to rely on hierarchical image models embedding multimodality PET/CT descriptors for a fully automated PET lesion detection / segmentation, performed via a machine learning process. More precisely, we propose to perform random forest classification within the mixed spatial-spectral space of component-trees modeling PET/CT mages. This new approach, combining the strengths of machine learning and morphological hierarchy models leads to intelligent thresholding based on high-level PET/CT knowledge. We evaluate our approach on a database of multi-centric PET/CT images of patients treated for lymphoma, delineated by an expert. Our method provides good efficiency, with the detection of 92% of all lesions, and accurate segmentation results with mean sensitivity and specificity of 0.73 and 0.99 respectively, without any user interaction.
机译:使用F-FDG的正电子发射断层扫描(PET)被认为是淋巴瘤的一种选择形式,因为它具有很高的灵敏度和特异性。它被广泛用于检测病灶,量化其代谢活性和评估对治疗的反应,因此需要开发准确且可重现的定量图像解释工具。尽管对量化肿瘤组织的可靠变化至关重要,但由于这种方法的局限性,准确的肿瘤轮廓描述在PET中仍然是一个挑战。由于PET图像的空间和光谱特性,大多数方法都依赖于基于强度的策略。最近的方法还提出整合解剖先验以改善分割过程。但是,当前常规使用的方法仍然是局部相对阈值,并且需要重要的用户交互作用,从而导致该过程不仅依赖于用户,而且在淋巴瘤的情况下非常费力。在本文中,我们建议依靠通过机器学习过程执行的全自动PET病变检测/分割的嵌入多模态PET / CT描述符的分层图像模型。更准确地说,我们建议在对PET / CT法师进行建模的组成树的混合空间光谱空间内执行随机森林分类。这种结合了机器学习和形态层次模型优势的新方法,可以基于高级PET / CT知识进行智能阈值处理。我们在专家描述的针对淋巴瘤治疗的患者的多中心PET / CT图像数据库中评估了我们的方法。我们的方法具有很高的效率,可以检测所有病变的92%,并且可以准确分割结果,平均灵敏度和特异性分别为0.73和0.99,而无需用户干预。

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