Faratian Dana, Christiansen Jason, Gustavson Mark, Jones Christine, Scott Christopher, Um InHwa, Harrison David J
Division of Pathology, University of Edinburgh.
J Vis Exp. 2011 Oct 25(56):e3334. doi: 10.3791/3334.
Morphologic heterogeneity within an individual tumor is well-recognized by histopathologists in surgical practice. While this often takes the form of areas of distinct differentiation into recognized histological subtypes, or different pathological grade, often there are more subtle differences in phenotype which defy accurate classification (Figure 1). Ultimately, since morphology is dictated by the underlying molecular phenotype, areas with visible differences are likely to be accompanied by differences in the expression of proteins which orchestrate cellular function and behavior, and therefore, appearance. The significance of visible and invisible (molecular) heterogeneity for prognosis is unknown, but recent evidence suggests that, at least at the genetic level, heterogeneity exists in the primary tumor(1,2), and some of these sub-clones give rise to metastatic (and therefore lethal) disease. Moreover, some proteins are measured as biomarkers because they are the targets of therapy (for instance ER and HER2 for tamoxifen and trastuzumab (Herceptin), respectively). If these proteins show variable expression within a tumor then therapeutic responses may also be variable. The widely used histopathologic scoring schemes for immunohistochemistry either ignore, or numerically homogenize the quantification of protein expression. Similarly, in destructive techniques, where the tumor samples are homogenized (such as gene expression profiling), quantitative information can be elucidated, but spatial information is lost. Genetic heterogeneity mapping approaches in pancreatic cancer have relied either on generation of a single cell suspension(3), or on macrodissection(4). A recent study has used quantum dots in order to map morphologic and molecular heterogeneity in prostate cancer tissue(5), providing proof of principle that morphology and molecular mapping is feasible, but falling short of quantifying the heterogeneity. Since immunohistochemistry is, at best, only semi-quantitative and subject to intra- and inter-observer bias, more sensitive and quantitative methodologies are required in order to accurately map and quantify tissue heterogeneity in situ. We have developed and applied an experimental and statistical methodology in order to systematically quantify the heterogeneity of protein expression in whole tissue sections of tumors, based on the Automated QUantitative Analysis (AQUA) system(6). Tissue sections are labeled with specific antibodies directed against cytokeratins and targets of interest, coupled to fluorophore-labeled secondary antibodies. Slides are imaged using a whole-slide fluorescence scanner. Images are subdivided into hundreds to thousands of tiles, and each tile is then assigned an AQUA score which is a measure of protein concentration within the epithelial (tumor) component of the tissue. Heatmaps are generated to represent tissue expression of the proteins and a heterogeneity score assigned, using a statistical measure of heterogeneity originally used in ecology, based on the Simpson's biodiversity index(7). To date there have been no attempts to systematically map and quantify this variability in tandem with protein expression, in histological preparations. Here, we illustrate the first use of the method applied to ER and HER2 biomarker expression in ovarian cancer. Using this method paves the way for analyzing heterogeneity as an independent variable in studies of biomarker expression in translational studies, in order to establish the significance of heterogeneity in prognosis and prediction of responses to therapy.
在外科实践中,组织病理学家充分认识到单个肿瘤内存在形态学异质性。虽然这通常表现为肿瘤分化为不同公认组织学亚型区域或不同病理分级区域,但通常在表型上存在更细微的差异,难以进行准确分类(图1)。最终,由于形态学由潜在的分子表型决定,具有明显差异的区域可能伴随着协调细胞功能和行为(进而影响外观)的蛋白质表达差异。可见和不可见(分子)异质性对预后的意义尚不清楚,但最近的证据表明,至少在基因水平上,原发性肿瘤中存在异质性(1,2),其中一些亚克隆会引发转移性(因此是致命的)疾病。此外,一些蛋白质因其是治疗靶点而被用作生物标志物(例如,雌激素受体(ER)和人表皮生长因子受体2(HER2)分别是他莫昔芬和曲妥珠单抗(赫赛汀)的靶点)。如果这些蛋白质在肿瘤内表达可变,那么治疗反应也可能不同。广泛使用的免疫组织化学组织病理学评分方案要么忽略蛋白质表达的量化,要么在数值上对其进行同质化处理。同样,在破坏性技术中,肿瘤样本被均质化(如基因表达谱分析),虽然可以阐明定量信息,但空间信息会丢失。胰腺癌的基因异质性图谱绘制方法要么依赖于生成单细胞悬液(3),要么依赖于宏观解剖(4)。最近一项研究使用量子点来绘制前列腺癌组织中的形态学和分子异质性图谱(5),提供了形态学和分子图谱绘制可行的原理证明,但未能对异质性进行量化。由于免疫组织化学充其量只是半定量的,且存在观察者内和观察者间偏差,因此需要更灵敏和定量的方法来准确地原位绘制和量化组织异质性。我们基于自动定量分析(AQUA)系统(6)开发并应用了一种实验和统计方法,以系统地量化肿瘤全组织切片中蛋白质表达的异质性。用针对细胞角蛋白和感兴趣靶点的特异性抗体标记组织切片,并与荧光团标记的二抗偶联。使用全玻片荧光扫描仪对玻片进行成像。图像被细分为数百到数千个小图块,然后为每个小图块分配一个AQUA分数,该分数衡量组织上皮(肿瘤)成分内的蛋白质浓度。生成热图以表示蛋白质的组织表达,并使用最初用于生态学的基于辛普森生物多样性指数(7)的异质性统计量来分配异质性分数。迄今为止,尚未有人尝试在组织学制剂中系统地绘制和量化这种与蛋白质表达相关的变异性。在此,我们展示了该方法首次应用于卵巢癌中ER和HER2生物标志物的表达。使用这种方法为在转化研究中分析作为生物标志物表达研究中独立变量的异质性铺平了道路,以便确定异质性在预后和治疗反应预测中的意义。