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Automatic 3-D segmentation of internal structures of the head in MR images using a combination of similarity and free-form transformations. I. Methodology and validation on normal subjects

机译:MR图像中头部的内部结构的自动3D分割,结合了相似度和自由形式的变换。一,正常人的方法论和验证

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摘要

The study presented in this paper tests the hypothesis that the combination of a global similarity transformation and local free-form deformations can be used for the accurate segmentation of internal structures in MR images of the brain. To quantitatively evaluate the authors' approach, the entire brain, the cerebellum, and the head of the caudate have been segmented manually by two raters on one of the volumes (the reference volume) and mapped back onto all the other volumes, using the computed transformations. The contours so obtained have been compared to contours drawn manually around the structures of interest in each individual brain. Manual delineation was performed twice by the same two raters to test inter- and intrarater variability. For the brain and the cerebellum, results indicate that for each rater, contours obtained manually and contours obtained automatically by deforming his own atlas are virtually indistinguishable. Furthermore, contours obtained manually by one rater and contours obtained automatically by deforming this rater's own atlas are more similar than contours obtained manually by two raters. For the caudate, manual intra- and interrater similarity indexes remain slightly better than manual versus automatic indexes, mainly because of the spatial resolution of the images used in this study. Qualitative results also suggest that this method can be used for the segmentation of more complex structures, such as the hippocampus.
机译:本文提出的研究检验了以下假设:全局相似性变换和局部自由形式变形的组合可用于对大脑MR图像中的内部结构进行精确分割。为了定量评估作者的方法,整个大脑,小脑和尾状头已被两个评估者手动分割成一个体积(参考体积),并使用计算出的值映射回所有其他体积转变。这样获得的轮廓已经与在每个单独的大脑中围绕感兴趣的结构手动绘制的轮廓进行了比较。由相同的两个评估者进行两次手动描述,以测试评估者之间和评估者内部的变异性。对于大脑和小脑,结果表明,对于每个评估者,手动获得的轮廓和通过变形自己的图谱自动获得的轮廓实际上是无法区分的。此外,由一个评估者手动获得的轮廓和通过使该评估者自己的图集变形而自动获得的轮廓比由两个评估者手动获得的轮廓更为相似。对于尾状,人工的内和间相似度指标仍然比人工的和自动的指标稍好,主要是因为这项研究中使用的图像具有空间分辨率。定性结果还表明,该方法可用于分割更复杂的结构,例如海马体。

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