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Identification and prioritization of differentially expressed genes for time-series gene expression data

机译:鉴定序列基因表达数据的差异表达基因并确定其优先级

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Identification of differentially expressed genes (DEGs) in time course studies is very useful for understanding gene function, and can help determine key genes during specific stages of plant development. A few existing methods focus on the detection of DEGs within a single biological group, enabling to study temporal changes in gene expression. To utilize a rapidly increasing amount of single-group time-series expression data, we propose a two-step method that integrates the temporal characteristics of time-series data to obtain a B-spline curve fit. Firstly, a flat gene filter based on the Ljung-Box test is used to filter out flat genes. Then, a B-spline model is used to identify DEGs. For use in biological experiments, these DEGs should be screened, to determine their biological importance. To identify high-confidence promising DEGs for specific biological processes, we propose a novel gene prioritization approach based on the partner evaluation principle. This novel gene prioritization approach utilizes existing co-expression information to rank DEGs that are likely to be involved in a specific biological process/condition. The proposed method is validated on the Arabidopsis thaliana seed germination dataset and on the rice anther development expression dataset.
机译:在时程研究中鉴定差异表达基因(DEG)对于理解基因功能非常有用,并且可以帮助确定植物发育特定阶段的关键基因。现有的几种方法专注于检测单个生物组内的DEG,从而能够研究基因表达的时间变化。为了利用数量迅速增加的单组时间序列表达数据,我们提出了一种两步方法,该方法整合了时间序列数据的时间特征以获得B样条曲线拟合。首先,基于Ljung-Box检验的扁平基因过滤器用于过滤扁平基因。然后,使用B样条模型识别DEG。为了用于生物学实验,应筛选这些DEG,以确定其生物学重要性。为了确定针对特定生物过程的高信度有希望的DEG,我们提出了一种基于伴侣评估原理的新型基因优先排序方法。这种新颖的基因优先排序方法利用现有的共表达信息对可能涉及特定生物学过程/条件的DEG进行排名。在拟南芥种子发芽数据集和水稻花药发育表达数据集上验证了该方法的有效性。

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