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A Semi-automatic Image Segmentation Method for Extraction of Brain Volume from In Vivo Mouse Head Magnetic Resonance Imaging using Constraint Level Sets

机译:使用约束水平集从体内小鼠头部磁共振成像中提取脑体积的半自动图像分割方法

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摘要

In vivo magnetic resonance imaging (MRI) of mouse brain has been widely used to non-invasively monitor disease progression and/or therapeutic effects in murine models of human neurodegenerative disease. Segmentation of MRI to differentiate brain from non-brain tissue (usually referred to as brain extraction) is required for many MRI data processing and analysis methods, including coregistration, statistical parametric analysis, mapping to brain atlas and histology. This paper presents a semi-automatic brain extraction technique based on a level set method with the incorporation of user-defined constraints. The constraints are derived from the prior knowledge of brain anatomy by defining brain boundary on orthogonal planes of the MRI. Constraints are incorporated in the level set method by spatially varying the weighting factors of the internal and external forces and modifying the image gradient (edge) map. Both two-dimensional multi-slice and three-dimensional versions of the brain extraction technique were developed and applied to MRI data with minimal brainon-brain contrast T1-weighted (T1-wt) FLASH and maximized contrast T2-weighted (T2-wt) RARE. Results were evaluated by calculating the overlap measure (OM) between the automatically segmented and manually traced brain volumes. Results demonstrate that this technique accurately extracts the brain volume (mean OM = 94 %) and consistently outperformed the region growing method applied to the T2-wt RARE MRI (mean OM = 81 %). This method not only successfully extracts the mouse brain in low and high contrast MRI, but can also be used to segment other organs and tissues.
机译:小鼠脑的体内磁共振成像(MRI)已被广泛用于非侵入性地监测人类神经退行性疾病的鼠模型中的疾病进展和/或治疗效果。许多MRI数据处理和分析方法都需要MRI分割以区分大脑和非脑组织(通常称为脑提取),包括核心分布,统计参数分析,映射到脑图谱和组织学。本文提出了一种基于水平集方法并结合了用户定义的约束条件的半自动脑提取技术。通过在MRI的正交平面上定义大脑边界,从对大脑解剖结构的先验知识中得出约束。通过在空间上改变内,外力的加权因子并修改图像梯度(边缘)图,可以将约束合并到级别设置方法中。开发了二维多切片和三维版本的脑部提取技术,并将其应用于具有最小脑部/非脑部对比度T1加权(T1-wt)FLASH和最大化对比度T2加权(T2- wt)稀有。通过计算自动分段和手动跟踪的大脑体积之间的重叠量度(OM)评估结果。结果表明,该技术可准确提取脑体积(平均OM = 94%),并且始终优于应用于T2-wt RARE MRI的区域生长方法(平均OM = 81%)。该方法不仅可以在低对比度和高对比度MRI中成功提取小鼠大脑,还可以用于分割其他器官和组织。

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