首页> 外文会议>International conference on medical image computing and computer-assisted intervention;MICCAI 2009 >Hierarchical Normalized Cuts: Unsupervised Segmentation of Vascular Biomarkers from Ovarian Cancer Tissue Microarrays
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Hierarchical Normalized Cuts: Unsupervised Segmentation of Vascular Biomarkers from Ovarian Cancer Tissue Microarrays

机译:分级归一化切割:来自卵巢癌组织微阵列的血管生物标记物的无监督分割

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Research has shown that tumor vascular markers (TVMs) may serve as potential OCa biomarkers for prognosis prediction. One such TVM is ESM-1, which can be visualized by staining ovarian Tissue Microarrays (TMA) with an antibody to ESM-1. The ability to quickly and quantitatively estimate vascular stained regions may yield an image based metric linked to disease survival and outcome. Automated segmentation of the vascular stained regions on the TMAs, however, is hindered by the presence of spuriously stained false positive regions. In this paper, we present a general, robust and efficient unsupervised segmentation algorithm, termed Hierarchical Normalized Cuts (HNCut), and show its application in precisely quantifying the presence and extent of a TVM on OCa TMAs. The strength of HNCut is in the use of a hierarchically represented data structure that bridges the mean shift (MS) and the normalized cuts (NCut) algorithms. This allows HNCut to efficiently traverse a pyramid of the input image at various color resolutions, efficiently and accurately segmenting the object class of interest (in this case ESM-1 vascular stained regions) by simply annotating half a dozen pixels belonging to the target class. Quantitative and qualitative analysis of our results, using 100 pathologist annotated samples across multiple studies, prove the superiority of our method (sensitivity 81%, Positive predictive value (PPV), 80%) versus a popular supervised learning technique, Probabilistic Boosting Trees (sensitivity, PPV of 76% and 66%).
机译:研究表明,肿瘤血管标志物(TVMs)可以作为潜在的OCa生物标志物用于预后预测。一种这样的TVM是ESM-1,可以通过用针对ESM-1的抗体对卵巢组织微阵列(TMA)染色来可视化。快速而定量地估计血管染色区域的能力可以产生与疾病存活和结果相关的基于图像的度量。但是,TMA上血管染色区域的自动分割会受到伪染色假阳性区域的存在的阻碍。在本文中,我们提出了一种通用的,健壮且有效的无监督分割算法,称为层次归一化割据(HNCut),并展示了其在精确量化OCa TMA上TVM的存在和程度方面的应用。 HNCut的优势在于使用分层表示的数据结构,该数据结构将均值平移(MS)和归一化割(NCut)算法联系起来。这使得HNCut可以通过简单地注释一下属于目标类别的六个像素,以各种颜色分辨率有效地遍历输入图像的金字塔,从而有效而准确地分割目标对象类别(在这种情况下为ESM-1血管染色区域)。我们对结果进行了定量和定性分析,使用了100个病理学家注释的多个研究样本,证明了我们的方法(灵敏度81%,阳性预测值(PPV),80%)相对于一种流行的监督学习技术-概率助推树(灵敏度)的优越性。 ,PPV分别为76%和66%)。

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