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Global analysis of protein folding using massively parallel design synthesis and testing

机译:使用大规模并行设计合成和测试对蛋白质折叠进行全局分析

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摘要

Proteins fold into unique native structures stabilized by thousands of weak interactions that collectively overcome the entropic cost of folding. Though these forces are “encoded” in the thousands of known protein structures, “decoding” them is challenging due to the complexity of natural proteins that have evolved for function, not stability. Here we combine computational protein design, next-generation gene synthesis, and a high-throughput protease susceptibility assay to measure folding and stability for over 15,000 de novo designed miniproteins, 1,000 natural proteins, 10,000 point-mutants, and 30,000 negative control sequences, identifying over 2,500 new stable designed proteins in four basic folds. This scale—three orders of magnitude greater than that of previous studies of design or folding—enabled us to systematically examine how sequence determines folding and stability in uncharted protein space. Iteration between design and experiment increased the design success rate from 6% to 47%, produced stable proteins unlike those found in nature for topologies where design was initially unsuccessful, and revealed subtle contributions to stability as designs became increasingly optimized. Our approach achieves the long-standing goal of a tight feedback cycle between computation and experiment, and promises to transform computational protein design into a data-driven science.
机译:蛋白质折叠成独特的天然结构,这种结构通过成千上万的弱相互作用而稳定下来,共同克服了熵的折叠成本。尽管这些力已“编码”在成千上万种已知的蛋白质结构中,但由于天然蛋白质因功能而不是稳定性而变的复杂性,因此对其进行“解码”具有挑战性。在这里,我们将计算蛋白设计,下一代基因合成和高通量蛋白酶敏感性分析相结合,以测量超过15,000个从头设计的微型蛋白,1,000个天然蛋白,10,000个点突变体和30,000个阴性对照序列的折叠和稳定性,从而确定超过2500种稳定设计的新蛋白质,分为四个基本折叠。这个规模比以前的设计或折叠研究大了三个数量级,使我们能够系统地研究序列如何确定未知蛋白质空间中的折叠和稳定性。设计和实验之间的迭代将设计成功率从6%提高到47%,产生了稳定的蛋白质,这不同于自然界中最初设计失败的拓扑所发现的蛋白质,并且随着设计的不断优化,揭示了对稳定性的微妙贡献。我们的方法实现了长期的目标,即在计算和实验之间形成紧密的反馈循环,并有望将蛋白质的计算设计转变为数据驱动的科学。

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