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Comparative Study on Data Mining Techniques Applied to Breast Cancer Gene Expression Profiles

机译:数据采矿技术对乳腺癌基因表达谱的比较研究

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Breast cancer has the second highest incidence among all cancer types and is the fifth cause of cancer related death among women. In Brazil, breast cancer mortality rates have been rising. Cancer classification is intricate, mainly when differentiating subtypes. In this context, data mining becomes a fundamental tool to analyze genotypic data, improving diagnostics, treatment and patient care. As the data dimensionality is problematic, methods to reduce it must be applied. Hence, the present study aims at the analysis of two data mining methods (i.e., decision trees and artificial neural networks). Weka and MATLAB were used to implement these two methodologies. Decision trees appointed important genes for the classification. Optimal artificial neural network architecture consists of two layers, one with 99 neurons and the other with 5. Both data mining techniques were able to classify data with high accuracy.
机译:乳腺癌在所有癌症类型中具有第二个最高的发病率,是妇女癌症相关死亡的第五原因。在巴西,乳腺癌死亡率一直在上升。癌症分类是复杂的,主要是在区分亚型时。在这种情况下,数据挖掘成为分析基因型数据的基本工具,改善诊断,治疗和患者护理。由于数据维度是有问题的,必须应用减少它的方法。因此,本研究旨在分析两种数据挖掘方法(即决策树和人工神经网络)。 Weka和Matlab用于实施这两种方法。决策树指定了分类的重要基因。最佳的人工神经网络架构由两层组成,一个带有99个神经元,另一层,另一个数据挖掘技术能够以高精度对数据进行分类。

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