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Joint Segmentation of Anatomical and Functional Images: Applications in Quantification of Lesions from PET PET-CT MRI-PET and MRI-PET-CT Images

机译:解剖和功能图像的联合分割:在PETPET-CTMRI-PET和MRI-PET-CT图像的病变定量中的应用

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摘要

We present a novel method for the joint segmentation of anatomical and functional images. Our proposed methodology unifies the domains of anatomical and functional images, represents them in a product lattice, and performs simultaneous delineation of regions based on random walk image segmentation. Furthermore, we also propose a simple yet effective object/background seed localization method to make the proposed segmentation process fully automatic. Our study uses PET, PET-CT, MRI-PET, and fused MRI-PET-CT scans (77 studies in all) from 56 patients who had various lesions in different body regions. We validated the effectiveness of the proposed method on different PET phantoms as well as on clinical images with respect to the ground truth segmentation provided by clinicians. Experimental results indicate that the presented method is superior to threshold and Bayesian methods commonly used in PET image segmentation, is more accurate and robust compared to the other PET-CT segmentation methods recently published in the literature, and also it is general in the sense of simultaneously segmenting multiple scans in real-time with high accuracy needed in routine clinical use.
机译:我们提出了一种解剖和功能图像的联合分割的新方法。我们提出的方法统一了解剖图像和功能图像的域,在产品晶格中表示它们,并基于随机步行图像分割执行区域的同时描绘。此外,我们还提出了一种简单而有效的对象/背景种子定位方法,以使提出的分割过程完全自动化。我们的研究使用了PET,PET-CT,MRI-PET和融合MRI-PET-CT扫描(总共77项研究),来自56位在不同身体部位有各种病变的患者。关于临床医生提供的地面真相分割,我们验证了该方法在不同的PET体模以及临床图像上的有效性。实验结果表明,所提出的方法优于PET图像分割中常用的阈值和贝叶斯方法,比最近文献中发表的其他PET-CT分割方法更准确,更可靠,并且在意义上是通用的。同时以常规临床使用所需的高精度实时分割多个扫描。

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