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Data Mining Approaches to Diffuse Large B-Cell Lymphoma Gene Expression Data Interpretation

机译:弥散性大B细胞淋巴瘤基因表达数据解释的数据挖掘方法

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This paper presents a comprehensive study of gene expression patterns originating from a diffuse large B-cell lymphoma (DLBCL) database. It focuses on the implementation of feature selection and classification techniques. Thus, it firstly tackles the identification of relevant genes for the prediction of DLBCL types. It also allows the determination of key biomarkers to differentiate two subtypes of DLBCL samples: Activated B-Like and Germinal Centre B-Like DLBCL. Decision trees provide knowledge-based models to predict types and subtypes of DLBCL. This research suggests that the data may be insufficient to accurately predict DLBCL types or even detect functionally relevant genes. However, these methods represent reliable and understandable tools to start thinking about possible interesting non—linear interdependencies.
机译:本文对源自弥漫性大B细胞淋巴瘤(DLBCL)数据库的基因表达模式进行了全面研究。它着重于特征选择和分类技术的实现。因此,它首先解决了有关预测DLBCL类型的相关基因的鉴定。它还可以确定关键的生物标志物,以区分DLBCL样品的两种亚型:活化的B类和生发中心B类DLBCL。决策树提供了基于知识的模型来预测DLBCL的类型和子类型。这项研究表明,该数据可能不足以准确预测DLBCL类型,甚至无法检测功能相关的基因。但是,这些方法代表了可靠且易于理解的工具,可以开始考虑可能存在的有趣的非线性相互依赖性。

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