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Statistical Classification of Multivariate Flow Cytometry Data Analyzed by Manual Gating: Stem Progenitor and Epithelial Marker Expression in Nonsmall Cell Lung Cancer and Normal Lung

机译:用手动门控分析的多变量流式细胞术数据的统计分类:Nonsmall细胞肺癌和正常肺中的茎祖细胞和上皮标志物表达

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摘要

The use of supervised classification to extract markers from primary flow cytometry data is an emerging field that has made significant progress, spurred by the growing complexity of multidimensional flow cytometry. Whether the markers are extracted without supervision or by conventional gate and region methods, the number of candidate variables identified is typically larger than the number of specimens (p < n) and many variables are highly intercorrelated. Thus, comparison across groups or treatments to determine which markers are significant is challenging. Here, we utilized a data set in which 86 variables were created by conventional manual analysis of individual listmode data files, and compared the application of five multivariate classification methods to discern subtle differences between the stem/progenitor content of 35 non-small cell lung cancer and adjacent normal lung specimens. The methods compared include elastic-net, lasso, random forest, diagonal linear discriminant analysis, and best single variable (best-1). We described a broadly applicable methodology consisting of: (1) variable transformation and standardization; (2) visualization and assessment of correlation between variables; (3) selection of significant variables and modeling; and (4) characterization of the quality and stability of the model. The analysis yielded both validating results (tumors are aneuploid and have higher light scatter properties than normal lung), as well as leads that require followup: Cytokeratin+ CD133+ progenitors are present in normal lung but reduced in lung cancer; diploid (or pseudo-diploid) CD117+CD44+ cells are more prevalent in tumor. We anticipate that the methods described here will be broadly applicable to a variety of multidimensional cytometry problems.
机译:在多维流式细胞术日益复杂化的推动下,使用监督分类从一级流式细胞术数据中提取标记是一个新兴的领域,并取得了重大进展。不管是在没有监督的情况下还是通过常规的门和区域方法提取标记,识别出的候选变量的数量通常都大于样本数量(p

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