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A study and benchmark of DNcon: a method for protein residue-residue contact prediction using deep networks

机译:DNcon的研究和基准:使用深度网络进行蛋白质残基-残基接触预测的方法

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摘要

BackgroundIn recent years, the use and importance of predicted protein residue-residue contacts has grown considerably with demonstrated applications such as drug design, protein tertiary structure prediction and model quality assessment. Nevertheless, reported accuracies in the range of 25-35% stubbornly remain the norm for sequence based, long range contact predictions on hard targets. This is in spite of a prolonged effort on behalf of the community to improve the performance of residue-residue contact prediction. A thorough study of the quality of current residue-residue contact predictions and the evaluation metrics used as well as an analysis of current methods is needed to stimulate further advancement in contact prediction and its application. Such a study will better explain the quality and nature of residue-residue contact predictions generated by current methods and as a result lead to better use of this contact information.
机译:背景技术近年来,随着诸如药物设计,蛋白质三级结构预测和模型质量评估等已证明的应用,预测的蛋白质残基-残基接触的用途和重要性已大大提高。尽管如此,据报道,准确度在25%至35%之间仍然是对硬目标进行基于序列的远程接触预测的标准。尽管代表社区做出了长期努力,以改善残留物-残留物接触预测的性能。需要彻底研究当前残留物-残留物接触预测的质量和所使用的评估指标,以及对当前方法的分析,以刺激接触物预测及其应用的进一步发展。这样的研究将更好地解释当前方法生成的残渣-残渣接触预测的质量和性质,从而更好地利用此接触信息。

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