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Karyometry detects subvisual differences in chromatin organisation state between non-recurrent and recurrent papillary urothelial neoplasms of low malignant potential

机译:Karyometry检测低恶性潜能的非复发性和复发性乳头状尿路上皮肿瘤之间染色质组织状态的视觉下差异

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摘要

>Aim: To analyse nuclear chromatin texture in non-recurrent and recurrent papillary urothelial neoplasms of low malignant potential (PUNLMPs).>Materials: Ninety three karyometric features were analysed on haematoxylin and eosin stained sections from 20 PUNLMP cases: 10 from patients with a solitary PUNLMP lesion, who were disease free during at least eight years’ follow up, and 10 from patients with unifocal PUNLMP, one or more recurrences being seen during follow up.>Results: Kruskal-Wallis analysis was used to search for features showing significant differences between recurrent and non-recurrent cases. Significance was better than p<0.005 for more than 20 features. Based on significance, six texture features were selected for discriminant analysis. Stepwise linear discriminant analysis reduced Wilk’s λ to 0.87, indicating a highly significant difference between the two multivariate data sets, but only modest ability to discriminate (70% correct case classification). A box sequential classifier was used based on data derived from discriminant analysis. The classifier took three classification steps and classified 19 of the 20 cases correctly (95% correct case classification). To determine whether significant case grouping could also be obtained based on an objective criterion, the merged data sets of non-recurrent and recurrent cases were submitted to the unsupervised learning algorithm P-index. Two clusters were formed with significant differences. The subsequent application of a Cooley/Lohnes classifier resulted in an overall correct case classification rate of 85%.>Conclusions: Karyometry and multivariate analyses detect subvisual differences in chromatin organisation state between non-recurrent and recurrent PUNLMPs, thus allowing identification of lesions that do or do not recur.
机译:>目的:分析低恶性潜能(PUNLMPs)的非复发性和复发性乳头状尿路上皮肿瘤的核染色质质地。>材料:分析了苏木精和曙红的九十三个量角特征20例PUNLMP病例的染色切片:10例来自单个PUNLMP病变的患者,至少在八年的随访中没有疾病,10例来自单灶性PUNLMP的患者,在随访期间发现了一次或多次复发。>结果:使用Kruskal-Wallis分析来搜索显示复发和非复发病例之间显着差异的特征。对于20多个特征,显着性优于p <0.005。基于显着性,选择了六个纹理特征进行判别分析。逐步线性判别分析将Wilk的λ降低至0.87,这表明两个多元数据集之间存在显着差异,但仅有中等的辨别能力(70%正确的案例分类)。基于判别分析得出的数据使用盒式顺序分类器。分类器采取了三个分类步骤,并正确地对20个案例中的19个进行了分类(正确案例分类的95%)。为了确定是否还可以基于客观标准来获得重大案例分组,将非重复案例和重复案例的合并数据集提交给无监督学习算法P-index。形成了两个具有明显差异的簇。随后使用Cooley / Lohnes分类器,结果总的正确病例分类率为85%。>结论:定量分析和多变量分析可检测非复发性PUNLMP和复发性PUNLMP之间的染色质组织状态的亚视觉差异,因此可以识别是否复发的病变。

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