Kamel El Omari,Ismay Forsyth,Ramona Duman,Christian M Orr,Vitaliy Mykhaylyk,Erika J Mancini,Armin Wagner
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引用次数: 0
摘要
AlphaFold2 预测蛋白质结构的准确性无与伦比,彻底改变了结构生物学。确定蛋白质结构的传统方法,如 X 射线晶体学和低温电子显微镜,往往耗费大量时间和资源。AlphaFold2 提供的模型对分子置换、帮助建立模型和对接电子密度图或电位图非常有价值。然而,尽管 AlphaFold2 模型功能强大,但其准确性并不能始终与实验测定的结构相匹配,需要通过实验验证,而且目前还遗漏了一些关键信息,如翻译后修饰、配体和结合离子。本文探讨了收集 X 射线反常数据以识别金属离子等化学元素的优势,这些元素是了解蛋白质某些结构和功能的关键。这是通过计算异常差分傅立叶图或完善异常散射因子 f'' 的虚分量等方法实现的。反常数据可以作为 AlphaFold2 模型所提供信息的宝贵补充,这对于阐明金属离子的作用尤为重要。
Utilizing anomalous signals for element identification in macromolecular crystallography.
AlphaFold2 has revolutionized structural biology by offering unparalleled accuracy in predicting protein structures. Traditional methods for determining protein structures, such as X-ray crystallography and cryo-electron microscopy, are often time-consuming and resource-intensive. AlphaFold2 provides models that are valuable for molecular replacement, aiding in model building and docking into electron density or potential maps. However, despite its capabilities, models from AlphaFold2 do not consistently match the accuracy of experimentally determined structures, need to be validated experimentally and currently miss some crucial information, such as post-translational modifications, ligands and bound ions. In this paper, the advantages are explored of collecting X-ray anomalous data to identify chemical elements, such as metal ions, which are key to understanding certain structures and functions of proteins. This is achieved through methods such as calculating anomalous difference Fourier maps or refining the imaginary component of the anomalous scattering factor f''. Anomalous data can serve as a valuable complement to the information provided by AlphaFold2 models and this is particularly significant in elucidating the roles of metal ions.