Yeh Fang-Cheng, Ye Qing, Hitchens T Kevin, Wu Yijen L, Parwani Anil V, Ho Chien
Department of Biomedical Engineering, Pittsburgh, Pennsylvania, USA ; Department of Biological Science, Pittsburgh NMR Center for Biomedical Research, Carnegie Mellon University, Pittsburgh, Pennsylvania, USA.
Department of Biological Science, Pittsburgh NMR Center for Biomedical Research, Carnegie Mellon University, Pittsburgh, Pennsylvania, USA.
J Pathol Inform. 2014 Jan 31;5(1):1. doi: 10.4103/2153-3539.126140. eCollection 2014.
Whole slide imaging (WSI) offers a novel approach to digitize and review pathology slides, but the voluminous data generated by this technology demand new computational methods for image analysis.
In this study, we report a method that recognizes stains in WSI data and uses kernel density estimator to calculate the stain density across the digitized pathology slides. The validation study was conducted using a rat model of acute cardiac allograft rejection and another rat model of heart ischemia/reperfusion injury. Immunohistochemistry (IHC) was conducted to label ED1(+) macrophages in the tissue sections and the stained slides were digitized by a whole slide scanner. The whole slide images were tessellated to enable parallel processing. Pixel-wise stain classification was conducted to classify the IHC stains from those of the background and the density distribution of the identified IHC stains was then calculated by the kernel density estimator.
The regression analysis showed a correlation coefficient of 0.8961 between the number of IHC stains counted by our stain recognition algorithm and that by the manual counting, suggesting that our stain recognition algorithm was in good agreement with the manual counting. The density distribution of the IHC stains showed a consistent pattern with those of the cellular magnetic resonance (MR) images that detected macrophages labeled by ultrasmall superparamagnetic iron-oxide or micron-sized iron-oxide particles.
Our method provides a new imaging modality to facilitate clinical diagnosis. It also provides a way to validate/correlate cellular MRI data used for tracking immune-cell infiltration in cardiac transplant rejection and cardiac ischemic injury.
全玻片成像(WSI)为病理玻片的数字化和复查提供了一种新方法,但该技术产生的大量数据需要新的图像分析计算方法。
在本研究中,我们报告了一种识别WSI数据中染色并使用核密度估计器计算数字化病理玻片上染色密度的方法。使用急性心脏移植排斥反应大鼠模型和另一种心脏缺血/再灌注损伤大鼠模型进行验证研究。进行免疫组织化学(IHC)以标记组织切片中的ED1(+)巨噬细胞,并用全玻片扫描仪将染色玻片数字化。对全玻片图像进行网格化以实现并行处理。进行逐像素染色分类以将IHC染色与背景染色区分开来,然后通过核密度估计器计算已识别的IHC染色的密度分布。
回归分析显示,我们的染色识别算法计数的IHC染色数量与手动计数的数量之间的相关系数为0.8961,这表明我们的染色识别算法与手动计数结果高度一致。IHC染色的密度分布与检测到用超小超顺磁性氧化铁或微米级氧化铁颗粒标记的巨噬细胞的细胞磁共振(MR)图像的密度分布一致。
我们的方法提供了一种新的成像模式以促进临床诊断。它还提供了一种验证/关联用于跟踪心脏移植排斥反应和心脏缺血性损伤中免疫细胞浸润的细胞MRI数据的方法。