Petabase-Scale Homology Search for Structure Prediction.

IF 6.9 2区 生物学 Q1 CELL BIOLOGY
Sewon Lee, Gyuri Kim, Eli Levy Karin, Milot Mirdita, Sukhwan Park, Rayan Chikhi, Artem Babaian, Andriy Kryshtafovych, Martin Steinegger
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引用次数: 0

Abstract

The recent CASP15 competition highlighted the critical role of multiple sequence alignments (MSAs) in protein structure prediction, as demonstrated by the success of the top AlphaFold2-based prediction methods. To push the boundaries of MSA utilization, we conducted a petabase-scale search of the Sequence Read Archive (SRA), resulting in gigabytes of aligned homologs for CASP15 targets. These were merged with default MSAs produced by ColabFold-search and provided to ColabFold-predict. By using SRA data, we achieved highly accurate predictions (GDT_TS > 70) for 66% of the non-easy targets, whereas using ColabFold-search default MSAs scored highly in only 52%. Next, we tested the effect of deep homology search and ColabFold's advanced features, such as more recycles, on prediction accuracy. While SRA homologs were most significant for improving ColabFold's CASP15 ranking from 11th to 3rd place, other strategies contributed too. We analyze these in the context of existing strategies to improve prediction.

用于结构预测的 Petabase 级同源搜索。
最近举行的 CASP15 竞赛强调了多序列比对(MSA)在蛋白质结构预测中的关键作用,基于 AlphaFold2 的顶级预测方法的成功证明了这一点。为了提高 MSA 的利用率,我们对序列读取档案(SRA)进行了千万亿次规模的搜索,从而获得了数千兆字节的 CASP15 目标同源物配对。这些数据与 ColabFold-search 生成的默认 MSA 合并后提供给 ColabFold-predict。通过使用 SRA 数据,我们对 66% 的非简单靶标进行了高精度预测(GDT_TS > 70),而使用 ColabFold-search 的默认 MSAs 仅对 52% 的靶标进行了高精度预测。接下来,我们测试了深度同源搜索和 ColabFold 高级功能(如更多循环)对预测准确率的影响。虽然SRA同源对ColabFold的CASP15排名从第11位提升到第3位的作用最大,但其他策略也有贡献。我们结合现有的改进预测策略对这些策略进行了分析。
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来源期刊
CiteScore
15.00
自引率
1.40%
发文量
56
审稿时长
3-8 weeks
期刊介绍: Cold Spring Harbor Perspectives in Biology offers a comprehensive platform in the molecular life sciences, featuring reviews that span molecular, cell, and developmental biology, genetics, neuroscience, immunology, cancer biology, and molecular pathology. This online publication provides in-depth insights into various topics, making it a valuable resource for those engaged in diverse aspects of biological research.
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