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首页> 外文期刊>Computerized Medical Imaging and Graphics: The Official Jounal of the Computerized Medical Imaging Society >Histogram partition and interval thresholding for volumetric breast tissue segmentation.
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Histogram partition and interval thresholding for volumetric breast tissue segmentation.

机译:直方图分区和间隔阈值用于乳腺体积组织分割。

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摘要

It is possible to automatically decompose a volume into subvolumes based on histogram partition and interval thresholding. In practice, a histogram may assume unimodal or multimodal distributions. In this paper, we implement an automatic volumetric segmentation scheme by partitioning a histogram into intervals followed by interval thresholding. Based on its distribution shape, the histogram is partitioned by either a valley-seeking algorithm (for multimodal) or a five-subinterval algorithm (for unimodal). Applied to volumetric breast analysis, this technique decomposes a breast volume into five subvolumes corresponding to five intensity subintervals: lower (air bubble), low (fat), middle (normal tissue, or parenchyma), high (glandular duct), higher (calcification), in the order of X-ray attenuation value. With the assumption that each subvolume resulting from interval thresholding corresponds to a tissue type, the spatial structure of each breast tissue type can be individually visualized and analyzed in a subvolume in an ample space (as big as the whole volume) in the absence of other tissue types. We demonstrate this histogram-partitioned interval thresholding segmentation method with one breast phantom and one breast surgical specimen that are volumetrically reconstructed by cone-beam tomography.
机译:可以根据直方图分区和间隔阈值自动将体积分解为子体积。实际上,直方图可以采用单峰或多峰分布。在本文中,我们通过将直方图划分为间隔然后进行间隔阈值化来实现自动体积分割方案。根据其分布形状,可以通过谷值搜索算法(对于多峰)或五子间隔算法(对于单峰)对直方图进行划分。应用于体积乳房分析,该技术将乳房体积分解为五个子体积,分别对应于五个强度子间隔:较低(气泡),低(脂肪),中(正常组织或薄壁组织),高(腺管),较高(钙化) ),按X射线衰减值的顺序排列。假设间隔阈值产生的每个子体积都对应于一种组织类型,则可以在不存在其他空间的情况下,在足够大的空间(与整个体积一样大)的子体积中分别可视化和分析每种乳腺组织类型的空间结构。组织类型。我们证明了这种直方图划分的间隔阈值分割方法,其中一种是通过锥形束层析成像技术重建的乳房假体和乳房外科标本。

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