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Spot defects detection in cDNA microarray images

机译:cDNA微阵列图像中的斑点缺陷检测

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Bad quality spots should be filtered out at early steps in microarray analysis to avoid noisy data. In this paper we implement quality control of individual spots from real microarray images. First of all, we consider the binary classification problem of detecting bad quality spots. We propose the use of ensemble algorithms to perform detection and obtain improved accuracies over previous studies in the literature. Next, we analyze the untackled problem of identifying specific spot defects. One spot may have several faults simultaneously (or none of them) yielding a multi-label classification problem. We propose several extra features in addition to those used for binary classification, and we use three different methods to perform the classification task: five independent binary classifiers, the recent Convex Multi-task Feature Learning (CMFL) algorithm and Convex Multi-task Independent Learning (CMIL). We analyze the Hamming loss and areas under the receiver operating characteristic (ROC) curves to quantify the accuracies of the methods. We find that the three strategies achieve similar results leading to a successful identification of particular defects. Also, using a Random forest-based analysis we show that the newly introduced features are highly relevant for this task.
机译:质量差的斑点应在微阵列分析的早期步骤中滤除,以避免产生嘈杂的数据。在本文中,我们对真正的微阵列图像中的单个斑点进行质量控制。首先,我们考虑检测劣质斑点的二进制分类问题。我们建议使用集成算法来执行检测并获得比文献中先前研究更高的准确性。接下来,我们分析识别特定斑点缺陷的未解决问题。一个斑点可能同时存在多个故障(或全无),从而产生多标签分类问题。除了用于二进制分类的功能外,我们还提出了其他一些功能,并且我们使用三种不同的方法来执行分类任务:五个独立的二进制分类器,最新的凸多任务特征学习(CMFL)算法和凸多任务独立学习(CMIL)。我们分析了汉明损耗和接收机工作特性(ROC)曲线下的面积,以量化该方法的准确性。我们发现这三种策略取得了相似的结果,从而成功地识别了特定的缺陷。此外,使用基于森林的随机分析,我们证明了新引入的功能与此任务高度相关。

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