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Buccaneer model building with neural network fragment selection

机译:使用神经网络片段选择构建海盗模型

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Tracing the backbone is a critical step in protein model building, as incorrect tracing leads to poor protein models. Here, a neural network trained to identify unfavourable fragments and remove them from the model-building process in order to improve backbone tracing is presented. Moreover, a decision tree was trained to select an optimal threshold to eliminate unfavourable fragments. The neural network was tested on experimental phasing data sets from the Joint Center for Structural Genomics (JCSG), recently deposited experimental phasing data sets (from 2015 to 2021) and molecular-replacement data sets. The experimental results show that using the neural network in the Buccaneer protein-model-building software can produce significantly more complete protein models than those built using Buccaneer alone. In particular, Buccaneer with the neural network built protein models with a completeness that was at least 5% higher for 25% and 50% of the original and truncated resolution JCSG experimental phasing data sets, respectively, for 28% of the recently collected experimental phasing data sets and for 43% of the molecularreplacement data sets.
机译:追踪骨架是蛋白质模型构建的关键步骤,因为不正确的追踪会导致糟糕的蛋白质模型。在这里,提出了一个经过训练的神经网络,用于识别不利的片段并将其从模型构建过程中删除,以改进主干跟踪。此外,还训练了决策树来选择最佳阈值来消除不利片段。神经网络在结构基因组学联合中心 (JCSG) 的实验相位数据集、最近存放的实验相位数据集(2015 年至 2021 年)和分子替换数据集上进行了测试。实验结果表明,在Buccaneer蛋白质模型构建软件中使用神经网络可以产生比单独使用Buccaneer构建的蛋白质模型更完整的蛋白质模型。特别是,对于最近收集的 28% 的实验阶段数据集和 43% 的分子替换数据集,Buccaneer 使用神经网络构建的蛋白质模型的完整性分别提高了 5% 和 50% 的原始和截断分辨率 JCSG 实验阶段数据集。

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