首页> 外文会议>EUROCAST 2011;International conference on computer aided systems theory >Analysis of Selected Evolutionary Algorithms in Feature Selection and Parameter Optimization for Data Based Tumor Marker Modeling
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Analysis of Selected Evolutionary Algorithms in Feature Selection and Parameter Optimization for Data Based Tumor Marker Modeling

机译:基于数据的肿瘤标记建模的特征选择和参数优化中的选择进化算法分析

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In this paper we report on the use of evolutionary algorithms for optimizing the identification of classification models for selected tumor markers. Our goal is to identify mathematical models that can be used for classifying tumor marker values as normal or as elevated; evolutionary algorithms are used for optimizing the parameters for learning classification models. The sets of variables used as well as the parameter settings for concrete modeling methods are optimized using evolution strategies and genetic algorithms. The performance of these algorithms is analyzed as well as the population diversity progress. In the empirical part of this paper we document modeling results achieved for tumor markers CA 125 and CYFRA using a medical data base provided by the Central Laboratory of the General Hospital Linz; empirical tests are executed using HeuristicLab.
机译:在本文中,我们报告了进化算法在优化选定肿瘤标志物分类模型识别中的应用。我们的目标是确定可用于将肿瘤标志物值分类为正常或升高的数学模型;进化算法用于优化学习分类模型的参数。使用演化策略和遗传算法优化了用于具体建模方法的变量集以及参数设置。分析了这些算法的性能以及种群多样性的进展。在本文的实证部分中,我们使用林茨综合医院中央实验室提供的医学数据库记录了肿瘤标志物CA 125和CYFRA的建模结果。使用HeuristicLab执行经验测试。

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