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多图谱颅骨剥离。

Multi-atlas skull-stripping.

机构信息

Section of Biomedical Image Analysis, Department of Radiology, 3600 Market St. Suite 380, University of Pennsylvania, Philadelphia, PA, USA.

出版信息

Acad Radiol. 2013 Dec;20(12):1566-76. doi: 10.1016/j.acra.2013.09.010.

Abstract

RATIONALE AND OBJECTIVES

We present a new method for automatic brain extraction on structural magnetic resonance images, based on a multi-atlas registration framework.

MATERIALS AND METHODS

Our method addresses fundamental challenges of multi-atlas approaches. To overcome the difficulties arising from the variability of imaging characteristics between studies, we propose a study-specific template selection strategy, by which we select a set of templates that best represent the anatomical variations within the data set. Against the difficulties of registering brain images with skull, we use a particularly adapted registration algorithm that is more robust to large variations between images, as it adaptively aligns different regions of the two images based not only on their similarity but also on the reliability of the matching between images. Finally, a spatially adaptive weighted voting strategy, which uses the ranking of Jacobian determinant values to measure the local similarity between the template and the target images, is applied for combining coregistered template masks.

RESULTS

The method is validated on three different public data sets and obtained a higher accuracy than recent state-of-the-art brain extraction methods. Also, the proposed method is successfully applied on several recent imaging studies, each containing thousands of magnetic resonance images, thus reducing the manual correction time significantly.

CONCLUSIONS

The new method, available as a stand-alone software package for public use, provides a robust and accurate brain extraction tool applicable for both clinical use and large population studies.

摘要

原理和目的

我们提出了一种新的基于多图谱配准框架的结构磁共振图像自动脑提取方法。

材料与方法

我们的方法解决了多图谱方法的基本挑战。为了克服研究之间成像特征变化带来的困难,我们提出了一种特定于研究的模板选择策略,通过该策略选择一组最能代表数据集内解剖变化的模板。为了克服与颅骨配准脑图像的困难,我们使用了一种特别适应的配准算法,该算法对图像之间的较大变化更稳健,因为它不仅根据相似性,还根据图像之间的匹配可靠性自适应地对齐两个图像的不同区域。最后,应用了一种空间自适应加权投票策略,该策略使用雅可比行列式值的排序来衡量模板和目标图像之间的局部相似性,以组合配准后的模板掩模。

结果

该方法在三个不同的公共数据集上进行了验证,其准确性高于最近的脑提取方法。此外,该方法已成功应用于几项最新的成像研究,每个研究都包含数千张磁共振图像,从而大大减少了手动校正时间。

结论

新方法作为一个独立的软件包供公众使用,提供了一种稳健且准确的脑提取工具,适用于临床应用和大型人群研究。

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BEaST: brain extraction based on nonlocal segmentation technique.BEaST:基于非局部分割技术的脑提取。
Neuroimage. 2012 Feb 1;59(3):2362-73. doi: 10.1016/j.neuroimage.2011.09.012. Epub 2011 Sep 16.
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