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Towards automatic analysis of DNA microarrays

机译:致力于DNA微阵列的自动分析

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In this paper we present a computational framework that provides the automatic analysis of spotted DNA microarray image data. The challenges are in providing an accurate representation of microarray hybridization observations while minimizing user interaction. To obtain this, we need to segment the observation data and subsequent correction for true hybridization level measurements must be accomplished against the backdrop of signal noise, background signal variation, and spatial non-uniformity in the array layout. With the requirements of automation and accuracy, an approach based on data-driven denoising, array addressing, background estimation, and spot segmentation was developed We proceeded to validate our approach on synthetic data as well as the publicly available raw and analyzed microarray data from the published Stanford yeast cell cycle analysis project. Spot mean and total intensities were examined as well as spot background estimates. By minimizing the user role, a main bottleneck in microarray data analysis is removed, allowing for more immediate analysis of large observation data sets. Our implementation has proven to be relatively fast, and the results of our approach have been encouraging.
机译:在本文中,我们介绍了一种计算框架,其提供了斑点DNA微阵列图像数据的自动分析。挑战在提供微阵列杂交观察的准确表示,同时最小化用户交互。为了获得这一点,我们需要分段观察数据,并且对于真正的杂交级别测量的后续校正必须通过阵列布局中的信号噪声,背景信号变化和空间不均匀性来完成。通过自动化和准确性的要求,开发了一种基于数据驱动的去噪,阵列寻址,背景估计和点分割的方法,我们继续验证我们对合成数据以及公开可用的原始和分析的微阵列数据的方法公布的斯坦福酵母细胞周期分析项目。检查均值和总强度以及现货背景估计。通过最小化用户角色,去除微阵列数据分析中的主要瓶颈,允许更直接地分析大观察数据集。我们的实施已经证明是相对速度的,我们的方法的结果一直在鼓励。

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