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Promoter2.0: for the recognition of PolII promoter sequences.

机译:Promoter2.0:用于识别PolII启动子序列。

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MOTIVATION: A new approach to the prediction of eukaryotic PolII promoters from DNA sequence takes advantage of a combination of elements similar to neural networks and genetic algorithms to recognize a set of discrete subpatterns with variable separation as one pattern: a promoter. The neural networks use as input a small window of DNA sequence, as well as the output of other neural networks. Through the use of genetic algorithms, the weights in the neural networks are optimized to discriminate maximally between promoters and non-promoters. RESULTS: After several thousand generations of optimization, the algorithm was able to discriminate between vertebrate promoter and non-promoter sequences in a test set with a correlation coefficient of 0.63. In addition, all five known transcription start sites on the plus strand of the complete adenovirus genome were within 161 bp of 35 predicted transcription start sites. On standardized test sets consisting of human genomic DNA, the performance of Promoter2.0 compares well with other software developed for the same purpose. AVAILABILITY: Promoter2.0 is available as a Web server at http://www.cbs.dtu. dk/services/promoter/
机译:动机:一种从DNA序列预测真核PolII启动子的新方法,利用类似于神经网络和遗传算法的元素组合,将一组具有可变分离的离散子模式识别为一个模式:启动子。神经网络使用DNA序列的小窗口以及其他神经网络的输出作为输入。通过使用遗传算法,优化了神经网络中的权重,以最大程度区分启动子和非启动子。结果:经过几千代的优化,该算法能够在相关系数为0.63的测试集中区分脊椎动物启动子和非启动子序列。此外,完整腺病毒基因组正链上的所有五个已知转录起始位点均在35个预测的转录起始位点的161 bp之内。在由人类基因组DNA组成的标准化测试集上,Promoter2.0的性能与为相同目的开发的其他软件相比非常好。可用性:Promoter2.0可作为Web服务器在http://www.cbs.dtu上获得。 dk /服务/促销/

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