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Image-based promoter prediction: a promoter prediction method based on evolutionarily generated patterns

机译:基于图像的启动子预测:基于进化生成模式的启动子预测方法

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Prediction of promoter regions is crucial for studying gene function and regulation. The well-accepted position weight matrix method for this purpose relies on predefined motifs, which would hinder application across different species. Here, we introduce image-based promoter prediction (IBPP) as a method that creates an “image” from training promoter sequences using an evolutionary approach and predicts promoters by matching with the “image”. We used Escherichia coli σ70 promoter sequences to test the performance of IBPP and the combination of IBPP and a support vector machine algorithm (IBPP-SVM). The “images” generated with IBPP could effectively distinguish promoter from non-promoter sequences. Compared with IBPP, IBPP-SVM showed a substantial improvement in sensitivity. Furthermore, both methods showed good performance for sequences of up to 2,000 nt in length. The performances of IBPP and IBPP-SVM were largely affected by the threshold and dimension of vectors, respectively. The source code and documentation are freely available at .
机译:启动子区域的预测对于研究基因功能和调控至关重要。为此目的,公认的位置权重矩阵方法依赖于预定义的图案,这会妨碍在不同物种中的应用。在这里,我们介绍基于图像的启动子预测(IBPP)作为一种方法,该方法使用进化方法从训练启动子序列创建“图像”,并通过与“图像”匹配来预测启动子。我们使用大肠杆菌σ70启动子序列来测试IBPP的性能以及IBPP和支持向量机算法(IBPP-SVM)的组合。 IBPP产生的“图像”可以有效地区分启动子和非启动子序列。与IBPP相比,IBPP-SVM的灵敏度有了显着提高。此外,这两种方法均显示出对长达2,000 nt的序列具有良好的性能。 IBPP和IBPP-SVM的性能分别受到向量阈值和维数的很大影响。可以从以下位置免费获得源代码和文档。

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