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On Finding and Interpreting Patterns in Gene Expression Data from Time Course Experiments

机译:从时程实验中寻找和解释基因表达数据的模式

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Microarrays are being widely used for studying gene activity throughout a cell cycle. A common aim is to find those genes that are expressed during specific phases in the cycle. The challenges lie in the extremely large number of genes being measured simultaneously, the relatively short length of the time course studied and the high level of noise in the data. Using a well-known yeast cell cycle data set, wo compare a method being used for finding genes following a periodic time series pattern with a method for finding genes having a different phase pattern during the cell cycle. Application of two visualisation tools gives insight into the interpretation of the patterns for the genes selected by the two approaches. It is recommended that (i) more than a single approach be used for finding patterns in gene expression data from time course experiments, and (ii) visualisation be used simultaneously with computational and statistical methods to interpret as well as display these patterns.
机译:微阵列被广泛用于研究整个细胞周期的基因活性。一个共同的目标是找到在周期的特定阶段表达的那些基因。面临的挑战在于,同时测量的基因数量非常庞大,研究的时间长度较短,数据中的噪声水平很高。使用众所周知的酵母细胞周期数据集,将用于寻找遵循周期性时间序列模式的基因的方法与用于发现细胞周期中具有不同相位模式的基因的方法进行比较。两种可视化工具的应用可以深入了解两种方法选择的基因的模式。建议(i)使用多种方法从时程实验中寻找基因表达数据中的模式,并且(ii)可视化与计算和统计方法同时使用以解释和显示这些模式。

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