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An Integrated Clustering and Classification Approach for the Analysis of Tumor Patient Data

机译:用于肿瘤患者数据分析的集成聚类和分类方法

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Standard patient parameters, tumor markers, and tumor diagnosis records are used for identifying prediction models for tumor markers as well as cancer diagnosis predictions. In this paper we present a hybrid clustering and classification approach that first identifies data clusters (using standard patient data and tumor markers) and then learns prediction models on the basis of these data clusters. The so formed clusters are analyzed and their homogeneity is calculated; the models learned on the basis of these clusters are tested and compared to each other with respect to classification accuracy and variable impacts.
机译:标准患者参数,肿瘤标志物和肿瘤诊断记录用于识别肿瘤标志物的预测模型以及癌症诊断预测。在本文中,我们提出了一种混合聚类和分类方法,该方法首先识别数据聚类(使用标准的患者数据和肿瘤标记物),然后在这些数据聚类的基础上学习预测模型。分析这样形成的簇,并计算它们的同质性;在分类的准确性和可变影响方面,对在这些聚类基础上学习的模型进行了测试并相互比较。

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