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Classification of incidental carcinoma of the prostate using learning vector quantization and support vector machines.

机译:使用学习向量量化和支持向量机对前列腺偶发癌进行分类。

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The subclassification of incidental prostatic carcinoma into the categories T1a and T1b is of major prognostic and therapeutic relevance. In this paper an attempt was made to find out which properties mainly predispose to these two tumor categories, and whether it is possible to predict the category from a battery of clinical and histopathological variables using newer methods of multivariate data analysis. The incidental prostatic carcinomas of the decade 1990-99 diagnosed at our department were reexamined. Besides acquisition of routine clinical and pathological data, the tumours were scored by immunohistochemistry for proliferative activity and p53-overexpression. Tumour vascularization (angiogenesis) and epithelial texture were investigated by quantitative stereology. Learning vector quantization (LVQ) and support vector machines (SVM) were used for the purpose of prediction of tumour category from a set of 10 input variables (age, Gleason score, preoperative PSA value, immunohistochemical scores for proliferation and p53-overexpression, 3 stereological parameters of angiogenesis, 2 stereological parameters of epithelial texture). In a stepwise logistic regression analysis with the tumour categories T1a and T1b as dependent variables, only the Gleason score and the volume fraction of epithelial cells proved to be significant as independent predictor variables of the tumour category. Using LVQ and SVM with the information from all 10 input variables, more than 80 of the cases could be correctly predicted as T1a or T1b category with specificity, sensitivity, negative and positive predictive value from 74-92%. Using only the two significant input variables Gleason score and epithelial volume fraction, the accuracy of prediction was not worse. Thus, descriptive and quantitative texture parameters of tumour cells are of major importance for the extent of propagation in the prostate gland in incidental prostatic adenocarcinomas. Classical statistical tools and neuronal approaches led to consistent conclusions.
机译:偶然将前列腺癌分为T1a和T1b类具有重要的预后和治疗意义。在本文中,人们试图找出哪些特性主要倾向于这两个肿瘤类别,以及是否有可能使用更新的多元数据分析方法从一系列临床和组织病理学变量中预测该类别。在我们部门诊断的1990-99年代的偶然前列腺癌被重新检查。除了获得常规的临床和病理数据外,还通过免疫组织化学对肿瘤的增殖活性和p53过表达进行评分。通过定量立体学研究了肿瘤血管形成(血管生成)和上皮纹理。为了从一组10个输入变量(年龄,格里森评分,术前PSA值,增殖和p53过表达的免疫组化评分3)预测肿瘤类别,使用了学习向量量化(LVQ)和支持向量机(SVM)的目的。血管生成的立体参数,上皮纹理的2个立体参数)。在以肿瘤类别T1a和T1b为因变量的逐步logistic回归分析中,只有格里森评分和上皮细胞体积分数被证明是重要的肿瘤类别独立预测变量。将LVQ和SVM与来自所有10个输入变量的信息一起使用,可以正确地将80多种病例预测为T1a或T1b类别,其特异性,敏感性,阴性和阳性预测值在74-92%之间。仅使用两个重要的输入变量格里森评分和上皮体积分数,预测的准确性并不差。因此,肿瘤细胞的描述性和定量质地参数对于偶然的前列腺腺癌在前列腺中的扩散程度至关重要。经典的统计工具和神经元方法得出了一致的结论。

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