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ITK-SNAP: An interactive tool for semi-automatic segmentation of multi-modality biomedical images

机译:ITK-SNAP:用于多模式生物医学图像的半自动分割的交互式工具

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Obtaining quantitative measures from biomedical images often requires segmentation, i.e., finding and outlining the structures of interest. Multi-modality imaging datasets, in which multiple imaging measures are available at each spatial location, are increasingly common, particularly in MRI. In applications where fully automatic segmentation algorithms are unavailable or fail to perform at desired levels of accuracy, semi-automatic segmentation can be a time-saving alternative to manual segmentation, allowing the human expert to guide segmentation, while minimizing the effort expended by the expert on repetitive tasks that can be automated. However, few existing 3D image analysis tools support semi-automatic segmentation of multi-modality imaging data. This paper describes new extensions to the ITK-SNAP interactive image visualization and segmentation tool that support semi-automatic segmentation of multi-modality imaging datasets in a way that utilizes information from all available modalities simultaneously. The approach combines Random Forest classifiers, trained by the user by placing several brushstrokes in the image, with the active contour segmentation algorithm. The new multi-modality semi-automatic segmentation approach is evaluated in the context of high-grade glioblastoma segmentation.
机译:从生物医学图像获得定量度量通常需要分割,即,找到并概述感兴趣的结构。多模态成像数据集越来越普遍,其中在每个空间位置都可以使用多种成像手段,尤其是在MRI中。在无法使用全自动分割算法或无法以所需的准确度执行性能的应用中,半自动分割可以替代手动分割,从而节省时间,从而使专家可以指导分割,同时最大程度地减少了专家的工作量可以执行的重复性任务。但是,很少有现有的3D图像分析工具支持多模态成像数据的半自动分割。本文介绍了ITK-SNAP交互式图像可视化和分段工具的新扩展,该工具以同时利用来自所有可用模态的信息的方式,支持多模态成像数据集的半自动分段。该方法将用户通过在图像中放置多个笔触进行训练的随机森林分类器与主动轮廓分割算法结合在一起。新的多模式半自动分割方法是在高级胶质母细胞瘤分割的背景下进行评估的。

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