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Scoring Nuclear pleomorphism using a visual BoF modulated by a graph structure

机译:使用由图形结构调制的视觉BOF评分核渗透形式

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Nuclear pleomorphism has been recognized as a key histological criterium in breast cancer grading systems (such as Bloom Richardson and Nottingham grading systems). However, the nuclear pleomorphism assessment is subjective and presents high inter-reader variability. Automatic algorithms might facilitate quantitative estimation of nuclear variations in shape and size. Nevertheless, the automatic segmentation of the nuclei is difficult and still and open research problem. This paper presents a method using a bag of multi-scale visual features, modulated by a graph structure, to grade nuclei in breast cancer microscopical fields. This strategy constructs hematoxylineosin image patches, each containing a nucleus that is represented by a set of visual words in the BoF. The contribution of each visual word is computed by examining the visual words in an associated graph built when projecting the multi-dimensional BoF to a bi-dimensional plane where local relationships are conserved. The methodology was evaluated using 14 breast cancer cases of the Cancer Genome Atlas database. From these cases, a set of 134 microscopical fields was extracted, and under a leave-one-out validation scheme, an average F-score of 0.68 was obtained.
机译:已被认为是乳腺癌分级系统(例如盛开的Richardson和Nottingham评分系统)中的关键组织学标准的权利。然而,核渗透评估是主观的,并且具有高互相互变异性。自动算法可能有助于定量估计形状和尺寸的核变化。尽管如此,核的自动分割是困难且仍然开放的研究问题。本文呈现了一种使用袋子的多尺度视觉特征,由图形结构调节,以乳腺癌显微镜级核细胞核的方法。该策略构建苏木喹啉素图像贴片,每个溶液含有由BOF中的一组视觉单词表示的核。通过在当将多维BOF投影到局部关系被节省的双维平面时,通过检查所构建的相关图中的视觉词来计算每个视觉字的贡献。使用14例癌症基因组Atlas数据库的14例评估方法。从这些情况下,提取了一组134个显微镜,并且在休留次验证方案下,获得了0.68的平均F分。

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