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Sequence alignment generation using intermediate sequence search for homology modeling

机译:使用中间序列搜索的序列对准生成同源性建模

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Protein tertiary structure is important information in various areas of biological research, however, the experimental cost associated with structure determination is high, and computational prediction methods have been developed to facilitate a more economical approach. Currently, template-based modeling methods are considered to be the most practical because the resulting predicted structures are often accurate, provided an appropriate template protein is available. During the first stage of template-based modeling, sensitive homology detection is essential for accurate structure prediction. However, sufficient structural models cannot always be obtained due to a lack of quality in the sequence alignment generated by a homology detection program. Therefore, an automated method that detects remote homologs accurately and generates appropriate alignments for accurate structure prediction is needed. In this paper, we propose an algorithm for suitable alignment generation using an intermediate sequence search for use with template-based modeling. We used intermediate sequence search for remote homology detection and intermediate sequences for alignment generation of remote homologs. We then evaluated the proposed method by comparing the sensitivity and selectivity of homology detection. Furthermore, based on the accuracy of the predicted structure model, we verify the accuracy of the alignments generated by our method. We demonstrate that our method generates more appropriate alignments for template-based modeling, especially for remote homologs. All source codes are available at https://github.com/shuichiro-makigaki/agora.
机译:蛋白质三级结构是生物学研究的各种领域的重要信息,然而,与结构测定相关的实验成本高,并且已经开发了计算预测方法以促进更经济的方法。目前,基于模板的建模方法被认为是最实用的,因为所得的预测结构通常是准确的,所以提供了适当的模板蛋白。在基于模板的建模的第一阶段,敏感同源性检测对于精确的结构预测是必不可少的。然而,由于同源检测程序产生的序列对准中的缺乏质量,不能始终获得足够的结构模型。因此,需要一种可准确地检测远程同源物的自动化方法,并为精确结构预测产生适当的对准。在本文中,我们提出了一种使用中间序列搜索与基于模板的建模使用的适当对准生成的算法。我们使用中间序列搜索远程同源性检测和中间序列进行对齐的远程同源物。然后,我们通过比较同源性检测的灵敏度和选择性来评估所提出的方法。此外,基于预测结构模型的准确性,我们验证了我们方法生成的对齐的准确性。我们展示我们的方法为基于模板的建模生成更合适的对齐,特别是对于远程同源物。所有源代码都可以在https://github.com/shuichiro-makigaki/agora获得。

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