Automated Detection of Connective Tissue by Tissue Counter Analysis and Classification and Regression Trees

J. Smolle, P. Kahofer
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引用次数: 4

Abstract

Objective: To evaluate the feasibility of the CART (Classification and Regression Tree) procedure for the recognition of microscopic structures in tissue counter analysis. Methods: Digital microscopic images of H&E stained slides of normal human skin and of primary malignant melanoma were overlayed with regularly distributed square measuring masks (elements) and grey value, texture and colour features within each mask were recorded. In the learning set, elements were interactively labeled as representing either connective tissue of the reticular dermis, other tissue components or background. Subsequently, CART models were based on these data sets. Results: Implementation of the CART classification rules into the image analysis program showed that in an independent test set 94.1% of elements classified as connective tissue of the reticular dermis were correctly labeled. Automated measurements of the total amount of tissue and of the amount of connective tissue within a slide showed high reproducibility (r=0.97 and r=0.94, respectively; p < 0.001). Conclusions: CART procedure in tissue counter analysis yields simple and reproducible classification rules for tissue elements.
利用组织计数器分析、分类和回归树自动检测结缔组织
目的:评价CART(分类与回归树)方法在组织计数分析中显微结构识别的可行性。方法:将正常皮肤H&E染色玻片和原发性恶性黑色素瘤玻片的数字显微图像与规则分布的方形测量掩模(单元)叠加,记录每个掩模内的灰度值、纹理和颜色特征。在学习集中,元素被交互标记为代表网状真皮层的结缔组织,其他组织成分或背景。随后,基于这些数据集建立CART模型。结果:将CART分类规则应用到图像分析程序中,在一个独立的测试集中,被分类为网状真皮层结缔组织的元素被正确标记的比例为94.1%。切片内组织总量和结缔组织数量的自动测量显示出高重复性(r=0.97和r=0.94);P < 0.001)。结论:CART方法对组织元素的分类规则简单、可重复性好。
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