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A novel method for finding small highly discriminant gene sets

机译:寻找小的高判别基因集的新方法

摘要

In a normal microarray classification problem there will be many genes, on the order of thousands, and few samples, on the order of tens. This necessitates a massive feature space reduction before classification can take place. While much time and effort has gone into evaluating and comparing the performance of different classifiers, less thought has been spent on the problem of efficient feature space reduction. There are in the microarray classification literature several widely used heuristic feature reduction algorithms that will indeed find small feature subsets to classify over. These methods work in a broad sense but we find that they often require too much computation, find overly large gene sets or are not properly generalizable. Therefore, we believe that a systematic study of feature reduction, as it is related to microarray classification, is in order.In this thesis we review current feature space reduction algorithms and propose a new, mixed model algorithm. This mixed-modified algorithm uses the best aspects of the filter algorithms and the best aspects of the wrapper algorithms to find very small yet highly discriminant gene sets. We also discuss methods to evaluate alternate, ambiguous gene sets. Applying our new mixed model algorithm to several published datasets we find that our new algorithm outperforms current gene finding methods.
机译:在正常的微阵列分类问题中,将有许多基因,成千上万个样本,很少有样本,约数十个。这需要在进行分类之前大量减少特征空间。尽管在评估和比较不同分类器的性能上花费了很多时间和精力,但对于有效减少特征空间的问题却花了很少的精力。在微阵列分类文献中,有几种广泛使用的启发式特征约简算法,这些算法的确会找到小的特征子集进行分类。这些方法在广义上起作用,但是我们发现它们通常需要太多的计算,发现太大的基因集或不能适当地推广。因此,我们认为有必要对与微阵列分类有关的特征约简进行系统的研究。本文对当前的特征空间约简算法进行了综述,提出了一种新的混合模型算法。这种混合修改算法使用过滤器算法的最佳方面和包装器算法的最佳方面来查找非常小但具有高度判别力的基因集。我们还将讨论评估替代的,模糊的基因集的方法。将我们的新混合模型算法应用于几个已发布的数据集,我们发现我们的新算法优于当前的基因发现方法。

著录项

  • 作者

    Gardner Jason H.;

  • 作者单位
  • 年度 2004
  • 总页数
  • 原文格式 PDF
  • 正文语种 en_US
  • 中图分类
  • 入库时间 2022-08-20 19:41:52

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