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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >Translation initiation sites prediction with mixture Gaussian models in human cDNA sequences
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Translation initiation sites prediction with mixture Gaussian models in human cDNA sequences

机译:高斯模型在人类cDNA序列中的翻译起始位点预测

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摘要

Translation initiation sites (TISs) are important signals in cDNA sequences. Many research efforts have tried to predict TISs in cDNA sequences. In this paper, we propose to use mixture Gaussian models for TIS prediction. Using both local features and some features generated from global measures, the proposed method predicts TISs with a sensitivity of 98 percent and a specificity of 93.6 percent. Our method outperforms many other existing methods in sensitivity while keeping specificity high. We attribute the improvement in sensitivity to the nature of the global features and the mixture Gaussian models.
机译:翻译起始位点(TIS)是cDNA序列中的重要信号。许多研究工作已尝试预测cDNA序列中的TIS。在本文中,我们建议使用混合高斯模型进行TIS预测。通过使用局部特征和从全局度量中生成的某些特征,该方法可以预测TIS的敏感性为98%,特异性为93.6%。在保持高特异性的同时,我们的方法在灵敏度方面优于许多其他现有方法。我们将灵敏度的提高归因于全局特征和混合高斯模型的性质。

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