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Protein secondary structure prediction for a single-sequence using hidden semi-Markov models

机译:使用隐藏的半马尔可夫模型预测单序列的蛋白质二级结构

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摘要

BackgroundThe accuracy of protein secondary structure prediction has been improving steadily towards the 88% estimated theoretical limit. There are two types of prediction algorithms: Single-sequence prediction algorithms imply that information about other (homologous) proteins is not available, while algorithms of the second type imply that information about homologous proteins is available, and use it intensively. The single-sequence algorithms could make an important contribution to studies of proteins with no detected homologs, however the accuracy of protein secondary structure prediction from a single-sequence is not as high as when the additional evolutionary information is present.
机译:背景技术蛋白质二级结构预测的准确性已朝着估计的88%的理论极限值稳步提高。预测算法有两种类型:单序列预测算法意味着没有其他(同源)蛋白的信息,而第二种算法意味着有关于同源蛋白的信息,并且大量使用它。单序列算法可以为没有检测到同源物的蛋白质的研究做出重要贡献,但是从单序列预测蛋白质二级结构的准确性不如存在其他进化信息时高。

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