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Dual-modality brain PET-CT image segmentation based on adaptive use of functional and anatomical information

机译:基于功能和解剖信息自适应使用的双峰脑PET-CT图像分割

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摘要

Dual medical imaging modalities, such as PET-CT, are now a routine component of clinical practice. Medical image segmentation methods, however, have generally only been applied to single modality images. In this paper, we propose the dual-modality image segmentation model to segment brain PET-CT images into gray matter, white matter and cerebrospinal fluid. This model converts PET-CT image segmentation into an optimization process controlled simultaneously by PET and CT voxel values and spatial constraints. It is innovative in the creation and application of the modality discriminatory power (MDP) coefficient as a weighting scheme to adaptively combine the functional (PET) and anatomical (CT) information on a voxel-by-voxel basis. Our approach relies upon allowing the modality with higher discriminatory power to play a more important role in the segmentation process. We compared the proposed approach to three other image segmentation strategies, including PET-only based segmentation, combination of the results of independent PET image segmentation and CT image segmentation, and simultaneous segmentation of joint PET and CT images without an adaptive weighting scheme. Our results in 21 clinical studies showed that our approach provides the most accurate and reliable segmentation for brain PET-CT images.
机译:如今,PET-CT等双重医学成像模式已成为临床实践的常规组成部分。但是,医学图像分割方法通常仅应用于单模态图像。在本文中,我们提出了双模式图像分割模型,将脑部PET-CT图像分割为灰质,白质和脑脊液。该模型将PET-CT图像分割转换为由PET和CT体素值以及空间约束同时控制的优化过程。它是模态鉴别力(MDP)系数的创建和应用的创新,它是一种加权方案,可以在逐个体素的基础上自适应地组合功能(PET)和解剖学(CT)信息。我们的方法依赖于允许具有较高区分能力的模式在细分过程中发挥更重要的作用。我们将提出的方法与其他三种图像分割策略进行了比较,包括基于PET的分割,独立PET图像分割和CT图像分割的结果的组合以及联合PET和CT图像的同时分割而没有自适应加权方案。我们在21项临床研究中的结果表明,我们的方法为大脑PET-CT图像提供了最准确,最可靠的分割方法。

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