保持它在家族中:使用蛋白质家族模板来拯救低信心的AlphaFold2模型。

IF 2.4 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY Bioinformatics advances Pub Date : 2024-11-25 eCollection Date: 2024-01-01 DOI:10.1093/bioadv/vbae188
Francesco Costa, Matthias Blum, Alex Bateman
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引用次数: 0

摘要

动机:高置信度的结构预测模型已经可以用于几乎所有的蛋白质序列。目前有超过2亿个AlphaFold2模型可供公开使用。我们观察到,通过一个蛋白质家族的plDDT评分来判断,预测置信度可能存在显著的可变性。我们已经探索了是否可以通过使用来自家族的较高plDDT模板作为AlphaFold2中的模板结构来改善家族中较低plDDT的预测。结果:我们的工作表明,大约三分之一的低plDDT的时间结构可以被“拯救”,从低到合理的置信度。我们还发现,在许多情况下,当我们关闭AlphaFold2中的多序列比对(MSA)选项并完全依赖于高质量模板时,我们会得到更高的plDDT模型。然而,我们发现最好的整体策略是在有和没有MSA信息的情况下进行预测,并选择平均plDDT最高的模型。我们还发现,使用高plDDT模型作为模板可以提高在ColabFold中实现的AlphaFold2的速度。此外,我们试图证明,随着总体plDDT的增加,通过两个度量来判断,模型可能具有更高质量的结构。可用性和实现:我们已经在NextFlow中实现了我们的管道,它可以在GitHub中使用:https://github.com/FranceCosta/AF2Fix。
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Keeping it in the family: using protein family templates to rescue low confidence AlphaFold2 models.

Motivation: High confidence structure prediction models have become available for nearly all protein sequences. More than 200 million AlphaFold2 models are now publicly available. We observe that there can be significant variability in the prediction confidence as judged by plDDT scores across a protein family. We have explored whether the predictions with lower plDDT in a family can be improved by the use of higher plDDT templates from the family as template structures in AlphaFold2.

Results: Our work shows that about one-third of the time structures with a low plDDT can be "rescued," moved from low to reasonable confidence. We also find that surprisingly in many cases we get a higher plDDT model when we switch off the multiple sequence alignment (MSA) option in AlphaFold2 and solely rely on a high-quality template. However, we find the best overall strategy is to make predictions both with and without the MSA information and select the model with the highest average plDDT. We also find that using high plDDT models as templates can increase the speed of AlphaFold2 as implemented in ColabFold. Additionally, we try to demonstrate that as well as having increased overall plDDT, the models are likely to have higher quality structures as judged by two metrics.

Availability and implementation: We have implemented our pipeline in NextFlow and it is available in GitHub: https://github.com/FranceCosta/AF2Fix.

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