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Model-based method for transcription factor target identification with limited data

机译:基于模型的有限数据转录因子靶标识别方法

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摘要

We present a computational method for identifying potential targets of a transcription factor (TF) using wild-type gene expression time series data. For each putative target gene we fit a simple differential equation model of transcriptional regulation, and the model likelihood serves as a score to rank targets. The expression profile of the TF is modeled as a sample from a Gaussian process prior distribution that is integrated out using a nonparametric Bayesian procedure. This results in a parsimonious model with relatively few parameters that can be applied to short time series datasets without noticeable overfitting. We assess our method using genome-wide chromatin immunoprecipitation (ChIP-chip) and loss-of-function mutant expression data for two TFs, Twist, and Mef2, controlling mesoderm development in Drosophila. Lists of top-ranked genes identified by our method are significantly enriched for genes close to bound regions identified in the ChIP-chip data and for genes that are differentially expressed in loss-of-function mutants. Targets of Twist display diverse expression profiles, and in this case a model-based approach performs significantly better than scoring based on correlation with TF expression. Our approach is found to be comparable or superior to ranking based on mutant differential expression scores. Also, we show how integrating complementary wild-type spatial expression data can further improve target ranking performance.
机译:我们提出了一种使用野生型基因表达时间序列数据来识别转录因子(TF)潜在目标的计算方法。对于每个推定的靶基因,我们拟合一个简单的转录调控微分方程模型,该模型的可能性用作对靶进行排名的得分。 TF的表达谱被建模为高斯过程先验分布的样本,该样本使用非参数贝叶斯过程进行了积分。这导致具有较少参数的简约模型可以应用于短时间序列数据集,而不会出现明显的过拟合。我们使用全基因组染色质免疫沉淀(ChIP芯片)和功能丧失的两个TF,Twist和Mef2 TF的突变表达数据来评估我们的方法,以控制果蝇中胚层的发育。通过我们的方法鉴定出的排名靠前的基因的列表大大丰富了ChIP芯片数据中鉴定的结合区域附近的基因以及在功能丧失突变体中差异表达的基因。 Twist的目标显示不同的表达方式,在这种情况下,基于模型的方法要比基于与TF表达的相关性的评分明显更好。我们的方法被发现与基于突变体差异表达得分的排名相当或更高。此外,我们展示了如何整合互补的野生型空间表达数据可以进一步提高目标排名性能。

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