Chung Gina G, Zerkowski Maciej P, Ghosh Sriparna, Camp Robert L, Rimm David L
Medical Oncology, Yale Cancer Center, New Haven, CT 06520, USA.
Lab Invest. 2007 Jul;87(7):662-9. doi: 10.1038/labinvest.3700543. Epub 2007 Mar 5.
Immunohistochemical analyses (IHC) of biomarkers are extensively used for tumor characterization and as prognostic and predictive measures. The current standard of single slide analysis assumes that one 5 microM section is representative of the entire tumor. We used our automated image analysis technology (AQUA) using a modified IHC technique with fluorophores to compare estrogen receptor (ER) expression in multiple blocks/slides from cases of primary breast cancer with the objective of quantifying tumor heterogeneity within sections and between blocks. To normalize our ER scores and allow slide-to-slide comparisons, 0.6 microm histospots of representative breast cancer cases with known ER scores were assembled into a 'gold standard array' (GSA) and placed adjacently to each whole section. Overall, there was excellent correlation between AQUA scores and the pathologist's scores and reproducibility of GSA scores (mean linear regression R value 0.8903). Twenty-nine slides from 11 surgical cases were then analyzed totaling over 2000 AQUA images. Using standard binary assignments of AQUA (>10) and pathologist's (>10%) scores as being positive, there was fair concordancy between AQUA and pathologist scores (73%) and between slides from different blocks from the same cases (75%). However using continuous AQUA scores, agreement between AQUA and pathologist was far lower and between slides from different blocks from the same cases only 19%. Within individual slides there was also significant heterogeneity in a scattered pattern, most notably for slides with the highest AQUA scores. In sum, using a quantitative measure of ER expression, significant block-to-block heterogeneity was found in 81% of cases. These results most likely reflect both laboratory-based variability due to lack of standardization of immunohistochemistry and true biological heterogeneity. It is also likely to be dependent on the biomarker analyzed and suggests further studies should be carried out to determine how these findings may affect clinical decision-making processes.
生物标志物的免疫组织化学分析(IHC)被广泛用于肿瘤特征描述以及作为预后和预测指标。当前单张切片分析的标准假设一个5微米厚的切片代表整个肿瘤。我们使用自动化图像分析技术(AQUA),采用一种带有荧光团的改良IHC技术,比较原发性乳腺癌病例多个组织块/切片中的雌激素受体(ER)表达,目的是量化切片内和组织块间的肿瘤异质性。为了使我们的ER评分标准化并实现切片间比较,将具有已知ER评分的代表性乳腺癌病例的0.6微米组织斑点组装成一个“金标准阵列”(GSA),并与每个完整切片相邻放置。总体而言,AQUA评分与病理学家评分之间具有极好的相关性,且GSA评分具有可重复性(平均线性回归R值为0.8903)。然后分析了11例手术病例的29张切片,共获得2000多张AQUA图像。将AQUA(>10)和病理学家(>10%)评分的标准二元赋值定义为阳性,AQUA与病理学家评分之间的一致性尚可(73%),同一病例不同组织块的切片之间一致性为75%。然而,使用连续的AQUA评分时,AQUA与病理学家之间的一致性要低得多,同一病例不同组织块的切片之间仅为19%。在单个切片内也存在散在模式的显著异质性,最明显的是AQUA评分最高的切片。总之,使用ER表达的定量测量方法,在81%的病例中发现了显著的组织块间异质性。这些结果很可能既反映了由于免疫组织化学缺乏标准化导致的基于实验室的变异性,也反映了真正的生物学异质性。这也可能取决于所分析的生物标志物,并表明应进一步开展研究以确定这些发现如何影响临床决策过程。