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A Heuristic Image Search Algorithm for Active Shape Model Segmentation of the Caudate Nucleus and Hippocampus in Brain MR Images of Children with FASD

机译:FASD儿童脑部MR图像中尾状核和海马主动形状模型分割的启发式图像搜索算法

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Magnetic Resonance Imaging provides a non-invasive means to study the neural correlates of Fetal Alcohol Spectrum Disorder (FASD) - the most common form of preventable mental retardation worldwide. One approach aims to detect brain abnormalities through an assessment of volume and shape of two sub-cortical structures, the caudate nucleus and hippocampus. We present a method for automatically segmenting these structures from high-resolution MR images captured as part of an ongoing study into the neural correlates of FASD. Our method incorporates an Active Shape Model, which is used to learn shape variation from manually segmented training data. A modified discrete Geometrically Deformable Model is used to generate point correspondence between training models. An ASM is then created from the landmark points. Experiments were conducted on the image search phase of ASM segmentation, in order to find the technique best suited to segmentation of the hippocampus and caudate nucleus. Various popular image search techniques were tested, including an edge detection method and a method based on grey profile Mahalanobis distance measurement. A novel heuristic image search method was also developed and tested. This heuristic method improves image segmentation by taking advantage of characteristics specific to the target data, such as a relatively homogeneous tissue colour in target structures. Results show that ASMs that use the heuristic image search technique produce the most accurate segmentations. An ASM constructed using this technique will enable researchers to quickly, reliably, and automatically segment test data for use in the FASD study.
机译:磁共振成像提供了一种非侵入性的方法来研究胎儿酒精性频谱障碍(FASD)的神经相关性-全世界可预防的智力障碍的最常见形式。一种方法旨在通过评估两个亚皮层结构(尾状核和海马体)的体积和形状来检测大脑异常。我们提出了一种方法,用于从作为正在进行的研究的一部分而捕获的FASD的神经相关性的高分辨率MR图像中自动分割这些结构。我们的方法结合了主动形状模型,该模型用于从手动分段的训练数据中学习形状变化。修改后的离散几何可变形模型用于生成训练模型之间的点对应关系。然后从界标点创建一个ASM。为了找到最适合海马和尾状核分割的技术,在ASM分割的图像搜索阶段进行了实验。测试了各种流行的图像搜索技术,包括边缘检测方法和基于灰度轮廓的Mahalanobis距离测量方法。还开发和测试了一种新颖的启发式图像搜索方法。这种启发式方法通过利用特定于目标数据的特征(例如目标结构中相对均匀的组织颜色)来改善图像分割。结果表明,使用启发式图像搜索技术的ASM产生最准确的分割。使用此技术构建的ASM将使研究人员能够快速,可靠地自动分割测试数据,以供FASD研究使用。

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