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User-Guided Segmentation of Multi-modality Medical Imaging Datasets with ITK-SNAP

机译:使用ITK-Snap的多模态医学成像数据集的用户导出分割

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摘要

ITK-SNAP is an interactive software tool for manual and semi-automatic segmentation of 3D medical images. This paper summarizes major new features added to ITK-SNAP over the last decade. The main focus of the paper is on new features that support semi-automatic segmentation of multi-modality imaging datasets, such as MRI scans acquired using different contrast mechanisms (e.g., T1, T2, FLAIR). The new functionality uses decision forest classifiers trained interactively by the user to transform multiple input image volumes into a foreground/background probability map; this map is then input as the data term to the active contour evolution algorithm, which yields regularized surface representations of the segmented objects of interest. The new functionality is evaluated in the context of high-grade and low-grade glioma segmentation by three expert neuroradiogists and a non-expert on a reference dataset from the MICCAI 2013 Multi-Modal Brain Tumor Segmentation Challenge (BRATS). The accuracy of semi-automatic segmentation is competitive with the top specialized brain tumor segmentation methods evaluated in the BRATS challenge, with most results obtained in ITK-SNAP being more accurate, relative to the BRATS reference manual segmentation, than the second-best performer in the BRATS challenge; and all results being more accurate than the fourth-best performer. Segmentation time is reduced over manual segmentation by 2.5 and 5 times, depending on the rater. Additional experiments in interactive placenta segmentation in 3D fetal ultrasound illustrate the generalizability of the new functionality to a different problem domain.
机译:ITK-Snap是用于3D医学图像的手动和半自动分割的交互式软件工具。本文总结了在过去十年中添加到ITK-SNAP的主要新功能。本文的主要重点是支持多模态成像数据集的半自动分割的新功能,例如使用不同的对比机制获取的MRI扫描(例如,T1,T2,Flair)。新功能使用用户交互式培训的决策林分类,将多个输入图像卷转换为前景/背景概率图;然后将该地图作为数据项输入到主动轮廓演进算法,这产生了对其分段对象的正则化表面表示。通过三个专家神经修理学家的高级和低级胶质瘤细分的背景下评估新功能,以及来自Miccai 2013多模态脑肿瘤分割挑战(Brats)的参考数据集的非专家。半自动分割的准确性与Brats挑战中评估的顶级专业大脑肿瘤分割方法具有竞争力,大多数结果在ITK-Snap中获得更准确,相对于Brats参考手册分割,而不是第二个最佳表演者小挑战;所有结果都比第四个最佳表演者更准确。分割时间通过手动分段减少2.5和5次,具体取决于额定值。 3D胎儿超声中的交互胎盘分割中的附加实验说明了对不同问题域的新功能的概括性。

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