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Generation of patterns from gene expression data by assigning confidence to differentially expressed genes.

机译:通过将信度分配给差异表达的基因,从基因表达数据生成模式。

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MOTIVATION: A protocol is described to attach expression patterns to genes represented in a collection of hybridization array experiments. Discrete values are used to provide an easily interpretable description of differential expression. Binning cutoffs for each sample type are chosen automatically, depending on the desired false-positive rate for the predictions of differential expression. Confidence levels are derived for the statement that changes in observed levels represent true changes in expression. We have a novel method for calculating this confidence, which gives better results than the standard methods. Our method reflects the broader change of focus in the field from studying a few genes with many replicates to studying many (possibly thousands) of genes simultaneously, but with relatively few replicates. Our approach differs from standard methods in that it exploits the fact that there are many genes on the arrays. These are used to estimate for each sample type an appropriate distribution that is employed to control the false-positive rate of the predictions made. Satisfactory results can be obtained using this method with as few as two replicates. RESULTS: The method is illustrated through applications to macroarray and microarray datasets. The first is an erythroid development dataset that we have generated using nylon filter arrays. Clones for genes whose expression is known in these cells were assigned expression patterns which are in accordance with what was expected and which are not picked up by the standards methods. Moreover, genes differentially expressed between normal and leukemic cells were identified. These included genes whose expression was altered upon induction of the leukemic cells to differentiate. The second application is to the microarray data by Alizadeh et al. (2000). Our results are in accordance with their major findings and offer confidence measures for the predictions made. They also provide new insights for further analysis.
机译:动机:描述了一种协议,用于将表达模式附加到杂交阵列实验集合中表示的基因上。离散值用于提供对差异表达的易于理解的描述。根据用于差异表达预测的期望假阳性率,自动选择每种样品类型的分级截止值。为观察水平的变化代表表达的真实变化的陈述得出了置信度水平。我们有一种新颖的方法来计算此置信度,它比标准方法提供更好的结果。我们的方法反映了该领域关注点的广泛变化,从研究具有很多重复的几个基因到同时研究许多(可能是数千个)但有很少重复的基因。我们的方法与标准方法的不同之处在于,它利用了阵列上有许多基因的事实。这些用于估计每种样本类型的适当分布,该分布用于控制所作预测的假阳性率。使用此方法,只需进行两次重复,即可获得令人满意的结果。结果:通过应用到大阵列和微阵列数据集说明了该方法。第一个是我们使用尼龙过滤器阵列生成的红系发育数据集。在这些细胞中表达已知的基因的克隆被赋予了表达模式,该表达模式与预期的一致,并且没有被标准方法挑选。此外,鉴定了正常细胞与白血病细胞之间差异表达的基因。这些包括其表达在诱导白血病细胞分化后发生改变的基因。第二个应用是Alizadeh等人的微阵列数据。 (2000)。我们的结果与他们的主要发现相符,并为所作的预测提供了置信度。他们还提供了新的见解,以供进一步分析。

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