Laurinaviciene Aida, Plancoulaine Benoit, Baltrusaityte Indra, Meskauskas Raimundas, Besusparis Justinas, Lesciute-Krilaviciene Daiva, Raudeliunas Darius, Iqbal Yasir, Herlin Paulette, Laurinavicius Arvydas
Diagn Pathol. 2014;9 Suppl 1(Suppl 1):S10. doi: 10.1186/1746-1596-9-S1-S10. Epub 2014 Dec 19.
Digital immunohistochemistry (IHC) is one of the most promising applications brought by new generation image analysis (IA). While conventional IHC staining quality is monitored by semi-quantitative visual evaluation of tissue controls, IA may require more sensitive measurement. We designed an automated system to digitally monitor IHC multi-tissue controls, based on SQL-level integration of laboratory information system with image and statistical analysis tools.
Consecutive sections of TMA containing 10 cores of breast cancer tissue were used as tissue controls in routine Ki67 IHC testing. Ventana slide label barcode ID was sent to the LIS to register the serial section sequence. The slides were stained and scanned (Aperio ScanScope XT), IA was performed by the Aperio/Leica Colocalization and Genie Classifier/Nuclear algorithms. SQL-based integration ensured automated statistical analysis of the IA data by the SAS Enterprise Guide project. Factor analysis and plot visualizations were performed to explore slide-to-slide variation of the Ki67 IHC staining results in the control tissue.
Slide-to-slide intra-core IHC staining analysis revealed rather significant variation of the variables reflecting the sample size, while Brown and Blue Intensity were relatively stable. To further investigate this variation, the IA results from the 10 cores were aggregated to minimize tissue-related variance. Factor analysis revealed association between the variables reflecting the sample size detected by IA and Blue Intensity. Since the main feature to be extracted from the tissue controls was staining intensity, we further explored the variation of the intensity variables in the individual cores. MeanBrownBlue Intensity ((Brown+Blue)/2) and DiffBrownBlue Intensity (Brown-Blue) were introduced to better contrast the absolute intensity and the colour balance variation in each core; relevant factor scores were extracted. Finally, tissue-related factors of IHC staining variance were explored in the individual tissue cores.
Our solution enabled to monitor staining of IHC multi-tissue controls by the means of IA, followed by automated statistical analysis, integrated into the laboratory workflow. We found that, even in consecutive serial tissue sections, tissue-related factors affected the IHC IA results; meanwhile, less intense blue counterstain was associated with less amount of tissue, detected by the IA tools.
数字免疫组织化学(IHC)是新一代图像分析(IA)带来的最具前景的应用之一。虽然传统免疫组化染色质量通过对组织对照进行半定量视觉评估来监测,但图像分析可能需要更灵敏的测量方法。我们基于实验室信息系统与图像及统计分析工具的SQL级集成,设计了一个自动系统来对免疫组化多组织对照进行数字监测。
在常规Ki67免疫组化检测中,将含有10个乳腺癌组织芯块的组织微阵列(TMA)连续切片用作组织对照。将Ventana载玻片标签条形码ID发送到实验室信息系统(LIS)以记录连续切片序列。对载玻片进行染色和扫描(Aperio ScanScope XT),通过Aperio/徕卡共定位和精灵分类器/核算法进行图像分析。基于SQL的集成确保了通过SAS企业指南项目对图像分析数据进行自动统计分析。进行因子分析和绘图可视化,以探索对照组织中Ki67免疫组化染色结果的片间差异。
片间芯内免疫组化染色分析显示反映样本大小的变量存在相当大的差异,而棕色和蓝色强度相对稳定。为了进一步研究这种差异,将10个芯块的图像分析结果汇总以最小化组织相关方差。因子分析揭示了图像分析检测到的反映样本大小的变量与蓝色强度之间的关联。由于要从组织对照中提取的主要特征是染色强度,我们进一步探索了各个芯块中强度变量的差异。引入平均棕蓝强度((棕色+蓝色)/2)和差异棕蓝强度(棕色-蓝色)以更好地对比每个芯块中的绝对强度和颜色平衡差异;提取相关因子得分。最后,在各个组织芯块中探索免疫组化染色差异的组织相关因素。
我们的解决方案能够通过图像分析手段监测免疫组化多组织对照的染色情况,随后进行自动统计分析,并集成到实验室工作流程中。我们发现,即使在连续的系列组织切片中,组织相关因素也会影响免疫组化图像分析结果;同时,图像分析工具检测到,蓝色复染强度较低与组织量较少有关。