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Automatic extraction of brain surface and mid-sagittal plane from PET images applying deformable models.

机译:应用可变形模型从PET图像中自动提取脑表面和矢状中平面。

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摘要

In this study, we propose and evaluate new methods for automatic extraction of the brain surface and the mid-sagittal plane from functional positron emission tomography (PET) images. Designing methods for these segmentation tasks is challenging because the spatial distribution of intensity values in a PET image depends on the applied radiopharmaceutical and the contrast to noise ratio in a PET image is typically low. We extracted the brain surface with a deformable model which is based on a global optimization algorithm. The global optimization allows reliable automation of the extraction task. Based on the extracted brain surface, the mid-sagittal plane was determined. The method was tested with the image of the Hoffman brain phantom (FDG) and the images from the brain studies with the FDG (17 images) and the C11-Raclopride tracers (4 images). In addition to the brain surfaces, we applied the deformable model for extraction of the coarse cortical structure based on the tracer uptake from FDG-PET brainimages. The proposed segmentation methods provide a promising direction for automatic processing and analysis of PET brain images.
机译:在这项研究中,我们提出并评估了从功能性正电子发射断层扫描(PET)图像自动提取大脑表面和矢状中平面的新方法。这些分割任务的设计方法具有挑战性,因为PET图像中强度值的空间分布取决于所应用的放射性药物,并且PET图像中的噪声比通常较低。我们使用基于全局优化算法的可变形模型提取了大脑表面。全局优化可实现提取任务的可靠自动化。基于提取的脑表面,确定矢状中平面。该方法用霍夫曼脑部幻像(FDG)的图像以及来自大脑研究的图像用FDG(17幅图像)和C11-Raclopride示踪剂(4幅图像)进行了测试。除大脑表面外,我们还基于从FDG-PET脑图像中吸收的示踪剂,应用了可变形模型来提取粗皮质结构。提出的分割方法为PET脑图像的自动处理和分析提供了有希望的方向。

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