...
首页> 外文期刊>Applied immunohistochemistry and molecular morphology: AIMM >Development of an Unsupervised Pixel-basedClustering Algorithm for Compartmentalization ofImmunohistochemical Expression UsingAutomated Quantitative Analysis
【24h】

Development of an Unsupervised Pixel-basedClustering Algorithm for Compartmentalization ofImmunohistochemical Expression UsingAutomated Quantitative Analysis

机译:基于自动像素分析的免疫组织化学表达区划的无监督基于像素的聚类算法的开发

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Inherent to most tissue image analysis routines are user-defined steps whereby specific pixel intensity thresholds must be set manually to differentiate background from signal-specific pixels within multiple images. To reduce operator time, remove operator-to-operator variability, and to obtain objective and optimal pixel separation for each image, we have developed an unsupervised pixel-based clustering algorithm allowing for the objective and unsupervised differentiation of signal from background, and differentiation of compartment-specific pixels on an image-by-image basis. We used the Automated Quantitative Analysis (AQUA) platform, a well-established automated fluorescence-based immunohistochemistry image analysis platform used for quantification of protein expression in specific cellular compartments to demonstrate utility of this methodology. As a metric for cellular compartmentalization, we examined correlation of percentage nuclear volume with histologic grade in 3 serial sections of a large cohort (n = 669) of invasive breast cancer samples. We observed a significant (P = 0.002, 0.006, and 0.08) difference in mean percentage nuclear volume between low and high-grade tumors. Reprodu-cibility of percentage nuclear volume was also significant (f< 0.001) across 3 serial sections. We then quantified compartment-specific expression of 5 biomarkers in 3 cancer types for association with outcome: estrogen receptor (nuclear), progesterone receptor (nuclear), HER2 (membrane/cytoplasm), ERCC1 (nuclear), and PTEN (cytoplasm). All 5 markers showed an expected and significant (P < 0.05) association with survival. This new clustering algorithm thus produces accurate and precise compartmentalization for assessment of target gene expression, and will enhance the efficiency and objectivity of the current Automated Quantitative Analysis and other image analysis platform.
机译:大多数组织图像分析例程固有的是用户定义的步骤,其中必须手动设置特定的像素强度阈值,以将背景图像与多个图像中信号特定的像素区分开。为了减少操作员时间,消除操作员与操作员之间的差异,并为每个图像获得客观和最佳的像素分离,我们开发了一种基于像素的无监督聚类算法,可以对信号与背景进行客观和无监督的区分,以及特定于隔室的像素(逐个图像)。我们使用了自动定量分析(AQUA)平台,这是一种建立完善的基于荧光的自动化免疫组织化学图像分析平台,用于量化特定细胞区室中的蛋白质表达,以证明该方法的实用性。作为细胞区室化的一项指标,我们检查了一大批侵入性乳腺癌样本(n = 669)的3个连续切片中核体积百分比与组织学等级的相关性。我们观察到低度和高度肿瘤之间的平均核体积百分比存在显着(P = 0.002、0.006和0.08)差异。在3个连续切片中,核体积百分比的重现性也很显着(f <0.001)。然后,我们量化了与结局相关的3种癌症类型中5种生物标记物的区室特异性表达:雌激素受体(核),孕激素受体(核),HER2(膜/细胞质),ERCC1(核)和PTEN(细胞质)。所有5个标记均显示出预期的和显着的(P <0.05)与存活率相关性。因此,这种新的聚类算法可产生准确而精确的分区,以评估目标基因的表达,并将提高当前“自动定量分析”和其他图像分析平台的效率和客观性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号