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首页> 外文期刊>Biomedical Engineering, IEEE Transactions on >Computerized Image-Based Detection and Grading of Lymphocytic Infiltration in HER2+ Breast Cancer Histopathology
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Computerized Image-Based Detection and Grading of Lymphocytic Infiltration in HER2+ Breast Cancer Histopathology

机译:基于计算机图像的HER2 +乳腺癌组织病理学中淋巴细胞浸润的检测和分级

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The identification of phenotypic changes in breast cancer (BC) histopathology on account of corresponding molecular changes is of significant clinical importance in predicting disease outcome. One such example is the presence of lymphocytic infiltration (LI) in histopathology, which has been correlated with nodal metastasis and distant recurrence in HER2+ BC patients. In this paper, we present a computer-aided diagnosis (CADx) scheme to automatically detect and grade the extent of LI in digitized HER2+ BC histopathology. Lymphocytes are first automatically detected by a combination of region growing and Markov random field algorithms. Using the centers of individual detected lymphocytes as vertices, three graphs (Voronoi diagram, Delaunay triangulation, and minimum spanning tree) are constructed and a total of 50 image-derived features describing the arrangement of the lymphocytes are extracted from each sample. A nonlinear dimensionality reduction scheme, graph embedding (GE), is then used to project the high-dimensional feature vector into a reduced 3-D embedding space. A support vector machine classifier is used to discriminate samples with high and low LI in the reduced dimensional embedding space. A total of 41 HER2+ hematoxylin-and-eosin-stained images obtained from 12 patients were considered in this study. For more than 100 three-fold cross-validation trials, the architectural feature set successfully distinguished samples of high and low LI levels with a classification accuracy greater than 90%. The popular unsupervised Varma-Zisserman texton-based classification scheme was used for comparison and yielded a classification accuracy of only 60%. Additionally, the projection of the 50 image-derived features for all 41 tissue samples into a reduced dimensional space via GE allowed for the visualization of a smooth manifold that revealed a continuum between low, intermediate, and high levels of LI. Since it is known that extent of LI in BC biopsy specimens is a -nprognostic indicator, our CADx scheme will potentially help clinicians determine disease outcome and allow them to make better therapy recommendations for patients with HER2+ BC.
机译:由于相应的分子变化,在乳腺癌(BC)组织病理学中表型变化的鉴定在预测疾病结局方面具有重要的临床意义。这样的一个例子是组织病理学中存在淋巴细胞浸润(LI),这与HER2 + BC患者的淋巴结转移和远处复发相关。在本文中,我们提出了一种计算机辅助诊断(CADx)方案,可以自动检测和分级数字化HER2 + BC组织病理学中的LI程度。首先结合区域生长和马尔可夫随机场算法自动检测淋巴细胞。使用单个检测到的淋巴细胞的中心作为顶点,构建了三个图形(Voronoi图,Delaunay三角剖分和最小生成树),并且从每个样本中提取了总共50个描述淋巴细胞排列的图像衍生特征。然后使用非线性降维方案(图形嵌入(GE))将高维特征向量投影到简化的3-D嵌入空间中。支持向量机分类器用于在降维嵌入空间中区分具有高LI和低LI的样本。这项研究共计从12例患者中获得了41张HER2 +苏木精和曙红染色的图像。对于100多次三重交叉验证试验,体系结构功能集成功地区分了高和低LI水平的样本,分类精度大于90%。比较流行的无监督Varma-Zisserman基于texton的分类方案用于比较,分类精度仅为60%。此外,通过GE将所有41个组织样本的50个图像衍生特征投影到尺寸减小的空间中,从而可以看到平滑的歧管,从而显示出低,中和高水平LI的连续性。由于已知BC活检标本中LI的程度是-n个预后指标,因此我们的CADx计划将潜在地帮助临床医生确定疾病的结局,并为HER2 + BC患者提供更好的治疗建议。

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