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White matter volume assessment in premature infants on MRI at term - computer aided volume analysis

机译:早产儿脑白质体积评估的mRI - 计算机辅助体积分析

摘要

The objective of this study is the development of an automatic segmentation framework for measuring volume changes in the white matter tissue from premature infant MRI data. The early stage of the brain development presents several major computational challenges such as structure and shape variations between patients. Furthermore, a high water content is present in the brain tissue, that leads to inconsistencies and overlapping intensity values across different brain structures. Another problem lies in low-frequency multiplicative intensity variations, which arises from an inhomogeneous magnetic field during the MRI acquisition. Finally, the segmentation is influenced by the partial volume effects which describe voxels that are generated by more than one tissue type. To overcome these challenges, this study is divided into three parts with the intention to locally segment the white matter tissue without the guidance of an atlas. Firstly, a novel brain extraction method is proposed with the aim to remove all non-brain tissue. The data quality can be improved by noise reduction using an anisotropic diffusion filter and intensity variations adjustments throughout the volume. In order to minimise the influence of missing contours and overlapping intensity values between brain and nonbrain tissue, a brain mask is created and applied during the extraction of the brain tissue. Secondly, the low-frequency intensity inhomogeneities are addressed by calculating the bias field which can be separated and corrected using low pass filtering. Finally, the segmentation process is performed by combining probabilistic clustering with classification algorithms. In order to achieve the final segmentation, the algorithm starts with a pre-segmentation procedure which was applied to reduce the intensity inhomogeneities within the white matter tissue. The key element in the segmentation process is the classification of diffused and missing contours as well as the partial volume voxels by performing a voxel reclassification scheme. The white matter segmentation framework was tested using the Dice Similarity Metric, and the numerical evaluation demonstrated precise segmentation results.
机译:这项研究的目的是开发一种自动分割框架,用于从早产儿MRI数据中测量白质组织的体积变化。大脑发育的早期阶段提出了几个主要的计算挑战,例如患者之间的结构和形状变化。此外,脑组织中存在高水分含量,这导致不同大脑结构之间的不一致和强度值重叠。另一个问题在于低频倍增强度变化,这是由于在MRI采集过程中磁场不均匀而引起的。最后,分割受局部体积效应的影响,局部体积效应描述了由一种以上组织类型生成的体素。为了克服这些挑战,本研究分为三个部分,目的是在不借助地图集的情况下局部分割白质组织。首先,提出了一种新颖的脑部提取方法,旨在去除所有非脑组织。通过使用各向异性扩散滤波器降低噪声并在整个体积中进行强度变化调整,可以提高数据质量。为了最小化丢失的轮廓和大脑与非大脑组织之间的重叠强度值的影响,在提取脑组织期间创建并应用了一个脑罩。其次,通过计算偏置场来解决低频强度不均匀性,该偏置场可以使用低通滤波进行分离和校正。最后,通过将概率聚类与分类算法相结合来执行分割过程。为了实现最终的分割,该算法从预分割程序开始,该程序被应用于减少白质组织内的强度不均匀性。分割过程中的关键要素是通过执行体素重分类方案对扩散轮廓线和缺失轮廓以及部分体积体素进行分类。使用Dice相似性度量标准对白质分割框架进行了测试,数值评估证明了精确的分割结果。

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    Péporté Michèle;

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  • 年度 2014
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