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对正常和异常妇科标本群体中筛查前警报的统计分析。

A statistical analysis of prescreening alarms in a population of normal and abnormal gynecologic specimens.

作者信息

Wheeless L L, Robinson R D, Cox C, Berkan T K, Reeder J E

出版信息

Cytometry. 1986 Mar;7(2):205-11. doi: 10.1002/cyto.990070213.

Abstract

A multidimensional slit-scan flow system has been developed to serve as an automated prescreening instrument for gynecological cytology. Specimens are classified abnormal based on the number of cells having elevated nuclear fluorescence (alarms). An alarm region in a bivariate histogram of nuclear fluorescence versus nuclear-to-cell-diameter ratio is defined. Alarm region probability arrays are calculated to estimate the probability that an alarm falling in a particular bin of the alarm region is either from a normal or an abnormal specimen. From these arrays, a weighted alarm index is generated. In addition, summary indices are derived that measure how the distribution of alarms in each specimen compares with the average distributions for the normal and abnormal specimen populations. These indices together with current features are evaluated with respect to their utility in specimen classification using a nonparametric classification technique known as recursive partitioning. Resulting classification trees are presented that suggest information in the distribution of alarms in the bivariate histogram. In addition, they validate the features and rules currently used for specimen classification. Recursive partitioning appears to be useful for multivariate classification and is seen as a promising technique for other applications.

摘要

已开发出一种多维狭缝扫描流动系统,用作妇科细胞学的自动预筛查仪器。根据具有升高核荧光的细胞数量(警报)对标本进行异常分类。在核荧光与核与细胞直径比的双变量直方图中定义一个警报区域。计算警报区域概率阵列,以估计落入警报区域特定区间的警报来自正常或异常标本的概率。根据这些阵列生成加权警报指数。此外,还得出了汇总指数,用于衡量每个标本中警报的分布与正常和异常标本群体的平均分布相比情况。使用一种称为递归划分的非参数分类技术,评估这些指数以及当前特征在标本分类中的效用。给出了由此产生的分类树,这些分类树揭示了双变量直方图中警报分布的信息。此外,它们验证了当前用于标本分类的特征和规则。递归划分似乎对多变量分类有用,并且被视为一种有前途的其他应用技术。

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