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多图谱法在头颈部 CT 图像 IMRT 甲状腺分割中的评价。

Evaluation of multiple-atlas-based strategies for segmentation of the thyroid gland in head and neck CT images for IMRT.

机构信息

Department of Electrical Engineering and Computer Science, Vanderbilt University, Nashville, TN 37235, USA.

出版信息

Phys Med Biol. 2012 Jan 7;57(1):93-111. doi: 10.1088/0031-9155/57/1/93. Epub 2011 Nov 29.

Abstract

Segmenting the thyroid gland in head and neck CT images is of vital clinical significance in designing intensity-modulated radiation therapy (IMRT) treatment plans. In this work, we evaluate and compare several multiple-atlas-based methods to segment this structure. Using the most robust method, we generate automatic segmentations for the thyroid gland and study their clinical applicability. The various methods we evaluate range from selecting a single atlas based on one of three similarity measures, to combining the segmentation results obtained with several atlases and weighting their contribution using techniques including a simple majority vote rule, a technique called STAPLE that is widely used in the medical imaging literature, and the similarity between the atlas and the volume to be segmented. We show that the best results are obtained when several atlases are combined and their contributions are weighted with a measure of similarity between each atlas and the volume to be segmented. We also show that with our data set, STAPLE does not always lead to the best results. Automatic segmentations generated by the combination method using the correlation coefficient (CC) between the deformed atlas and the patient volume, which is the most accurate and robust method we evaluated, are presented to a physician as 2D contours and modified to meet clinical requirements. It is shown that about 40% of the contours of the left thyroid and about 42% of the right thyroid can be used directly. An additional 21% on the left and 24% on the right require only minimal modification. The amount and the location of the modifications are qualitatively and quantitatively assessed. We demonstrate that, although challenged by large inter-subject anatomical discrepancy, atlas-based segmentation of the thyroid gland in IMRT CT images is feasible by involving multiple atlases. The results show that a weighted combination of segmentations by atlases using the CC as the similarity measure slightly outperforms standard combination methods, e.g. the majority vote rule and STAPLE, as well as methods selecting a single most similar atlas. The results we have obtained suggest that using our contours as initial contours to be edited has clinical value.

摘要

在设计调强放射治疗(IMRT)治疗计划中,对头颈部 CT 图像中的甲状腺进行分割具有重要的临床意义。在这项工作中,我们评估和比较了几种基于多图谱的方法来分割该结构。使用最稳健的方法,我们为甲状腺生成自动分割,并研究它们的临床适用性。我们评估的各种方法从基于三种相似性度量之一选择单个图谱,到结合使用几个图谱的分割结果并使用包括简单多数投票规则、在医学成像文献中广泛使用的称为 STAPLE 的技术以及图谱与要分割的体积之间的相似性的技术来对其贡献进行加权。我们表明,当结合使用几个图谱并使用每个图谱与要分割的体积之间的相似性度量对其贡献进行加权时,会得到最佳结果。我们还表明,在我们的数据集上,STAPLE 并不总是导致最佳结果。通过使用变形图谱与患者体积之间的相关系数(CC)对组合方法生成的自动分割作为 2D 轮廓呈现给医生,并进行修改以满足临床要求。结果表明,大约 40%的左甲状腺和大约 42%的右甲状腺轮廓可以直接使用。另外,左侧需要最小修改的有 21%,右侧有 24%。定性和定量地评估了修改的数量和位置。我们证明,尽管受到大的个体间解剖差异的挑战,但通过涉及多个图谱,在 IMRT CT 图像中基于图谱的甲状腺分割是可行的。结果表明,使用 CC 作为相似性度量的图谱分割的加权组合略微优于标准组合方法,例如多数投票规则和 STAPLE,以及选择单个最相似图谱的方法。我们得到的结果表明,使用我们的轮廓作为要编辑的初始轮廓具有临床价值。

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