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Institute of Biomedical Sciences, Academia Sinica, Taipei, Taiwan

机译:台湾台北学术研究科学研究所

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Consensus-based protein structure prediction methods have been proved to be successful in recent CASPs (Critical Assessment of Structure Prediction). By combining several weaker individual servers, a meta server tends to generate better predictions than any individual server In this paper, we present a Support Vector Machines (SVM) regression-based consensus method for protein fold recognition, which is a key component for high-throughput protein structure prediction and protein functional annotation Our SVM model extracts the features from a predicted structural model by comparing it to other models generated by all the individual servers and then predicts the quality of this model Experimental results on several LiveBench data sets show that our consensus method consistently performs better than individual servers Based on this approach, we have developed a meta server, Alignment by Consensus Estimator (ACE), which is participating in CASP6 and CAFASP4 (Fourth Critical Assessment of Fully Automated Structure Prediction). ACE is available at http://www cs uwaterloocaTByu/consensus htm.
机译:基于共有的蛋白质结构预测方法已被证明在最近的患者中成功(结构预测的批判性评估)。通过组合几个较弱的单独服务器,元服务器倾向于在本文中的任何单个服务器产生更好的预测,我们介绍了一种用于蛋白质折叠识别的支持向量机(SVM)回归的共识方法,这是高度的关键部件吞吐量蛋白质结构预测和蛋白质功能注释我们的SVM模型通过将其与由所有单独的服务器产生的其他模型进行比较,从而提取预测的结构模型的特征,然后预测该模型实验结果对多个Livebenh数据集的质量表明我们的共识显示了我们的共识方法始终如于基于这种方法更好地表现优于各个服务器,我们开发了一个元服务器,通过共识估计(ACE)对齐,该估计器(ACE)参与Casp6和Cafasp4(完全自动化结构预测的第四次批判性评估)。 ACE可在http:// www cs uwaterloocatbyu / consensus htm提供。

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