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A Function-Centric Approach to the Biological Interpretation of Microarray Time-Series

机译:微阵列时间序列的生物解释的一种以函数为中心的方法

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The interpretation of microarray experiments is commonly addressed by means a two-step approach in which the relevant genes are firstly selected uniquely on the basis of their experimental values (ignoring their coordinate behaviors) and in a second step their functional properties are studied to hypothesize about the biological roles they are fulfilling in the cell. Recently, different methods (e.g. GSEA or Fati Scan) have been proposed to study the coordinate behavior of blocks of functionally-related genes. These methods study the distribution of functional information across lists of genes ranked according their different experimental values in a static situation, such as the comparison between two classes (e.g. healthy controls versus diseased cases). Nevertheless there is no an equivalent way of studying a dynamic situation from a functional point of view.We present a method for the functional analysis of microarrays series in which the experiments display autocorrelation between successive points (e.g. time series, dose-response experiments, etc.) The method allows to recover the dynamics of the molecular roles fulfilled by the genes along the series which provides a novel approach to functional interpretation of such experiments. The method finds blocks of functionally-related genes which are significantly and coordinately over-expressed at different points of the series. This method draws inspiration from systems biology given that the analysis does not focus on individual properties of genes but on collective behaving blocks of functionally-related genes.The Fati Scan algorithm used in the method proposed is available at: http: //f atiscan. bioinf o. cipf.es, or within the Babelomics suite: http://www.babelomics.org. Additional material is available at: http: //bioinf o . cipf . es/data/plasmodium
机译:常规地解决了微阵列实验的解释是指通过其实验值(忽略其坐标行为)首先选择相关基因的两步方法,并且在第二步中,研究其功能性质以假设它们在细胞中实现的生物学作用。最近,已经提出了不同的方法(例如GSEA或FATI扫描)来研究功能依用基因块的坐标行为。这些方法研究了在静态情况下根据其不同实验值排序的基因列表的功能信息分布,例如两类比较(例如健康对照与病例)的比较。尽管如此,从功能的角度来看,没有一种等效的方法来从功能的角度来研究动态情况.WE呈现了微阵列系列的功能分析的方法,其中实验在连续点(例如时间序列,剂量 - 响应实验等)之间显示自相关。)该方法允许沿着该系列沿着该系列恢复满足的分子作用的动态,这提供了一种新的功能解释这种实验的方法。该方法发现功能相关的基因块,这些基因在该系列的不同点显着且协调。此方法鉴于分析不关注基因的个性特性,而是对功能相关基因的集体表现块来汲取灵感。所提出的方法中使用的FATI扫描算法可用于:http:// f atiscan。 Bioinf o。 CIPF.ES,或Babelomics套房内:http://www.babelomics.org。附加材料可用于:http:// bioinf o。 CIPF。 ES /数据/疟原虫

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