Cornish Toby C, Halushka Marc K
Department of Pathology, Johns Hopkins University School of Medicine, Baltimore, Maryland, USA.
Anal Quant Cytol Histol. 2009 Oct;31(5):304-12.
To analyze tissue microarrays (TMAs) using color deconvolution, a method for separating component dyes in digital images, and compare the results to observer scoring.
TMAs were constructed from tissues from 100 adult autopsies and immunohistochemically stained for connective tissue growth factor. A region of interest (ROI) was created for each core image using 3 binary masks-tissue area, inclusion area and exclusion area. The diaminobenzidine (DAB) and hematoxylin signals were deconvolved, and the DAB signal was measured for each ROI. The dorsalis pedis core images were also scored manually.
Seventeen TMAs were annotated, requiring 532 minutes. Of the 1,683 cores, 296 (18%) were excluded because they were not suitable for evaluation. A single TMA required a mean of 31.3 minutes to evaluate; to annotate a single core took a mean of 19 seconds. For the dorsalis pedis, observer score and median DAB intensity correlated strongly (Kendall's = 0.71).
Analysis of TMAs by color deconvolution is efficient and highly correlates to observer scoring.
使用颜色反卷积(一种用于分离数字图像中成分染料的方法)分析组织微阵列(TMA),并将结果与观察者评分进行比较。
TMA由100例成人尸检组织构建,并进行结缔组织生长因子免疫组织化学染色。使用3个二元掩码(组织区域、包含区域和排除区域)为每个核心图像创建感兴趣区域(ROI)。对二氨基联苯胺(DAB)和苏木精信号进行反卷积,并测量每个ROI的DAB信号。还对足背核心图像进行手动评分。
对17个TMA进行注释,需要532分钟。在1683个核心中,296个(18%)因不适合评估而被排除。评估单个TMA平均需要31.3分钟;注释单个核心平均需要19秒。对于足背,观察者评分与DAB强度中位数密切相关(肯德尔系数=0.71)。
通过颜色反卷积分析TMA效率高,且与观察者评分高度相关。