Grey-level morphology combined with an artificial neural networks approach for multimodal segmentation of the Hippocampus

R. Hult
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引用次数: 5

Abstract

This paper presents an algorithm that continues segmentation from a semi automatic artificial neural network (ANN) segmentation of the Hippocampus of registered T1-weighted and T2-weighted MRI data. Due to the morphological complexity of the Hippocampus and difficulty of separating from adjacent structures, reproducible segmentation using MR imaging is complicated. The human intervention in the ANN approach, consists of selecting a bounding-box. Grey-level dilated and grey-level eroded versions of the T1-weighted and T2-weighted data are used to minimise leaking from Hippocampus to surrounding tissue combined with possible foreground tissue. The segmentation algorithm uses a histogram-based method to find accurate threshold values. Grey-level morphology is a powerful tool to break stronger connections between the Hippocampus and surrounding regions than is otherwise possible. The method is 3D in the sense that all grey-level morphology operations use a 3 /spl times/ 3 /spl times/ 3 structure element and the herein described algorithms are applied in the three directions, sagittal, axial, and coronal, and the result are then combined together.
灰度形态学结合人工神经网络方法对海马进行多模态分割
本文提出了一种对注册的t1加权和t2加权MRI数据的海马进行半自动人工神经网络(ANN)分割的继续分割算法。由于海马形态的复杂性和与邻近结构分离的困难,使用MR成像进行可重复分割是复杂的。人工干预在人工神经网络方法中,包括选择一个边界框。使用t1加权和t2加权数据的灰度级扩张和灰度级侵蚀版本,以最大限度地减少从海马到周围组织以及可能的前景组织的泄漏。分割算法使用基于直方图的方法来找到准确的阈值。灰色形态是一种强大的工具,可以打破海马体和周围区域之间的更强的联系。该方法是3D的,因为所有的灰度形态学操作都使用3 /spl次/ 3 /spl次/ 3的结构单元,并在矢状、轴向和冠状三个方向上应用本文描述的算法,然后将结果组合在一起。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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