Loukas Constantinos G, Wilson George D, Vojnovic Borivoj, Linney Alf
Gray Cancer Institute, Mount Vernon Hospital, Northwood, Middlesex, United Kingdom.
Cytometry A. 2003 Sep;55(1):30-42. doi: 10.1002/cyto.a.10060.
Semiquantitative evaluation and manual cell counting are the commonly used procedures to assess positive staining of molecular markers in tissue sections. Manual counting is also a laborious task in which consistent objectivity is difficult to achieve. Recently, image analysis has been explored, but the studies reported were limited to histological images acquired at high magnification and containing uniformly stained cells.
The analyzed material consisted of histological sections from different squamous cell cancers that had stained for proliferation using Ki-67 and cyclin A detection. The first step of the method was based on detecting the overall number of cells irrespective to their stain, using second-order edge detection methodology. Then proliferating cells were located using principal component analysis (PCA) of the color image, combined with histogram thresholding.
The algorithms' performances were validated on tissue section images encountered in routine clinical practice by comparison with objective measures of performance and manual cell identification. The algorithms correlated closely with manual counting of all cells (r(2) = 0.96-0.97) and stained cells (4-7% cell count error).
Cell counting in complex large-scale histological images could be applied in routine practice using edge and color information. The proposed technique provides several benefits, such as speed of analysis, consistency, and automation. Moreover, it is faster than human observation and could replace the laborious task of manual cell counting.
半定量评估和手动细胞计数是评估组织切片中分子标志物阳性染色的常用方法。手动计数也是一项费力的任务,难以实现一致的客观性。最近,人们探索了图像分析,但所报道的研究仅限于在高倍放大下获得的、含有均匀染色细胞的组织学图像。
分析材料包括来自不同鳞状细胞癌的组织切片,这些切片使用Ki-67和细胞周期蛋白A检测进行增殖染色。该方法的第一步基于使用二阶边缘检测方法检测细胞总数,而不考虑其染色情况。然后,通过彩色图像的主成分分析(PCA)结合直方图阈值化来定位增殖细胞。
通过与客观性能指标和手动细胞识别进行比较,在常规临床实践中遇到的组织切片图像上验证了算法的性能。这些算法与所有细胞的手动计数密切相关(r² = 0.96 - 0.97),与染色细胞计数的误差为4 - 7%。
利用边缘和颜色信息,复杂大规模组织学图像中的细胞计数可应用于常规实践。所提出的技术具有多种优势,如分析速度、一致性和自动化。此外,它比人工观察更快,可取代费力的手动细胞计数任务。