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Learning to Discover Faulty Spots in cDNA Microarrays

机译:学习发现cDNA微阵列中的缺陷点

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摘要

Gene expression ratios obtained from microarray images are strongly affected by the algorithms used to process them as well as by the quality of the images. Hundreds of spots often suffer from quality problems caused by the manufacturing process and many must be discarded because of lack of reliability. Recently, several computational models have been proposed in the literature to identify defective spots, including the powerful Support Vector Machines (SVMs). In this paper we propose to use different strategies based on aggregation methods to classify the spots according to their quality. On one hand we apply an ensemble of classifiers, in particular three boosting methods, namely Discrete, Real and Gentle AdaBoost. As we use a public dataset which includes the subjective labeling criteria of three human experts, we also evaluate different ways of modeling consensus between the experts. We show that for this problem ensembles achieve improved classification accuracies over alternative state-of-the-art methods.
机译:从微阵列图像获得的基因表达率受到用于处理它们的算法以及图像质量的强烈影响。数以百计的斑点经常遭受由制造过程引起的质量问题,并且由于缺乏可靠性而必须丢弃许多斑点。最近,文献中已经提出了几种计算模型来识别缺陷点,包括功能强大的支持向量机(SVM)。在本文中,我们建议使用基于聚集方法的不同策略根据斑点的质量对其进行分类。一方面,我们应用了一组分类器,特别是三种增强方法,即离散,实数和柔和AdaBoost。当我们使用包含三位人类专家的主观标签标准的公共数据集时,我们还将评估专家之间达成共识的不同建模方法。我们表明,针对该问题,集成体在替代现有技术中具有更好的分类精度。

著录项

  • 来源
  • 会议地点 Bahia Blanca(AR);Bahia Blanca(AR)
  • 作者单位

    CIFASIS, French Argentine International Center for Information and SystemsSciences, UPCAM (France) / UNR-CONICET (Argentina) Bv. 27 de Febrero 210 Bis, 2000, Rosario, Argentina, Lab. for System Dynamics and Signal Proc, FCEIA, Univ. Nacional de Rosario Riobamba 245 Bis, 2000, Rosario, Argentina;

    rnCIFASIS, French Argentine International Center for Information and SystemsSciences, UPCAM (France) / UNR-CONICET (Argentina) Bv. 27 de Febrero 210 Bis, 2000, Rosario, Argentina;

    rnCIFASIS, French Argentine International Center for Information and SystemsSciences, UPCAM (France) / UNR-CONICET (Argentina) Bv. 27 de Febrero 210 Bis, 2000, Rosario, Argentina, Lab. for System Dynamics and Signal Proc, FCEIA, Univ. Nacional de Rosario Riobamba 245 Bis, 2000, Rosario, Argentina;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 人工智能理论;
  • 关键词

    cDNA microarray images; consensus-based prediction; en-semble algorithms; spot quality control; classification of spots;

    机译:cDNA微阵列图像;基于共识的预测;集成算法;现场质量控制;点的分类;

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