首页> 外文期刊>Acta crystallographica. Section D, Structural biology >The X-ray crystallography phase problem solved thanks to AlphaFold and RoseTTAFold models: a case-study report
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The X-ray crystallography phase problem solved thanks to AlphaFold and RoseTTAFold models: a case-study report

机译:x射线晶体学阶段问题解决了由于AlphaFold和RoseTTAFold模型:一个案例研究报告

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The breakthrough recently made in protein structure prediction by deep-learning programs such as AlphaFold and RoseTTAFold will certainly revolutionize biology over the coming decades. The scientific community is only starting to appreciate the various applications, benefits and limitations of these protein models. Yet, after the first thrills due to this revolution, it is important to evaluate the impact of the proposed models and their overall quality to avoid the misinterpretation or overinterpretation of these models by biologists. One of the first applications of these models is in solving the 'phase problem' encountered in X-ray crystallography in calculating electron-density maps from diffraction data. Indeed, the most frequently used technique to derive electron-density maps is molecular replacement. As this technique relies on knowledge of the structure of a protein that shares strong structural similarity with the studied protein, the availability of high-accuracy models is then definitely critical for successful structure solution. After the collection of a 2.45 angstrom resolution data set, we struggled for two years in trying to solve the crystal structure of a protein involved in the nonsense-mediated mRNA decay pathway, an mRNA quality-control pathway dedicated to the elimination of eukaryotic mRNAs harboring premature stop codons. We used different methods (isomorphous replacement, anomalous diffraction and molecular replacement) to determine this structure, but all failed until we straightforwardly succeeded thanks to both AlphaFold and RoseTTAFold models. Here, we describe how these new models helped us to solve this structure and conclude that in our case the AlphaFold model largely outcompetes the other models. We also discuss the importance of search-model generation for successful molecular replacement.
机译:最近突破制造蛋白质结构预测的深度学习项目如AlphaFold和RoseTTAFold肯定会彻底改变生物学在未来的几十年。科学界只是开始欣赏各种各样的应用程序,和好处这些蛋白质模型的局限性。第一个刺激由于这场革命,它是重要的评估建议的影响模型和避免的整体质量误解或overinterpretation这些模型的生物学家。应用这些模型在解决遇到了在x射线相位问题晶体学在计算电子密度从衍射数据地图。常用的技术来获得电子密度地图是分子替换。因为这种技术依赖的知识股强大的蛋白质的结构结构相似性的研究蛋白质,高精度模型的可用性肯定成功的关键结构解决方案。分辨率的数据集,我们奋斗了两年在试图解决的晶体结构蛋白质参与nonsense-mediated信使rna衰变路径,一个信使rna质量控制途径致力于消除真核mrna窝藏过早停止密码子。不同的方法(同形替换,反常衍射和分子替换)确定这个结构,但都失败了,直到我们直截了当的成功多亏了都AlphaFold和RoseTTAFold模型。描述这些新模型帮助我们解决这个结构,得出这样的结论:在我们的例子中AlphaFold模型很大程度上战胜对方模型。搜索模式一代成功的分子更换。

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