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Predicting strength and function for promoters of the Escherichia coli alternative sigma factor, δ~E

机译:预测大肠杆菌替代Sigma因子δ〜E启动子的强度和功能

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Sequenced bacterial genomes provide a wealth of information but little understanding of transcriptional regulatory circuits largely because accurate prediction of promoters is difficult. We examined two important issues for accurate promoter prediction: (1) the ability to predict promoter strength and (2) the sequence properties that distinguish between active and weak/inactive promoters. We addressed promoter prediction using natural core promoters recognized by the well-studied alternative sigma factor, Escherichia coli δ~E, as a representative of group 4 δs, the largest δ group. To evaluate the contribution of sequence to promoter strength and function, we used modular position weight matrix models comprised of each promoter motif and a penalty score for suboptimal motif location. We find that a combination of select modules is moderately predictive of promoter strength and that imposing minimal motif scores distinguished active from weak/inactive promoters. The combined -35/-10 score is the most important predictor of activity. Our models also identified key sequence features associated with active promoters. A conserved "AAC" motif in the -35 region is likely to be a general predictor of function for promoters recognized by group 4 δs. These results provide valuable insights into sequences that govern promoter strength, distinguish active and inactive promoters for the first time, and are applicable to both in vivo and in vitro measures of promoter strength.
机译:测序的细菌基因组提供了大量信息,但对转录调控电路了解甚少,主要是因为难以准确预测启动子。我们检查了两个重要的问题,以进行准确的启动子预测:(1)预测启动子强度的能力;(2)区分活跃和弱/非活跃启动子的序列特性。我们使用了经过充分研究的另类sigma因子大肠杆菌δ〜E识别的天然核心启动子作为启动子预测,它代表最大的δ组4δs。为了评估序列对启动子强度和功能的贡献,我们使用了模块化位置权重矩阵模型,该模型包括每个启动子基序和次优基序位置的罚分。我们发现,选择模块的组合适度地预测了启动子的强度,并施加了最小的基序得分,从而区分了弱弱启动子和无效启动子。综合得分-35 / -10是活动的最重要预测因子。我们的模型还确定了与活性启动子相关的关键序列特征。在-35区域中保守的“ AAC”基序可能是由4δs识别的启动子功能的一般预测因子。这些结果为控制启动子强度的序列提供了有价值的见解,首次区分了有活性和无活性的启动子,可用于体内和体外测量启动子强度。

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