Decoys Reveal Multiple Basins of Attraction for Cryo-Electron-Microscopy Flexible Fitting.

Maytha Alshammari, Jing He, Willy Wriggers
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Abstract

This study explored the robustness and uniqueness of the flexible fitting of atomic structures against cryo-electron microscopy (cryo-EM) maps using elastic network motion models. The success of flexible fitting is based on the optimistic expectation of a single optimum fit that can be reached from a wide range of start conformations. We revisited this assumption for four AlphaFold models that deviated from corresponding medium-resolution cryo-EM maps but benefitted from flexible fitting. To test the dependence of the flexible fitting performance on the start structures, we systematically generated decoys using normal modes, offering a broader sampling of the conformational space compared to a single start structure. This strategy allowed exploration of the global properties of the cross-correlation (CC) scoring function landscape. Statistical analysis using multidimensional scaling revealed that the initial decoy ensembles collapsed into multiple basins of attraction in three of the four cases. The results demonstrate that a single start structure can be trapped in the local maxima of the CC during flexible fitting (spurious fits), but the decoys increase the likelihood of finding a correct fit. More precisely, there is a "winning" cluster of closely related structures that exhibit high template modeling (TM)-scores with the known true structures. Comparison of the CC and the TM-scores showed that the winning cluster can be identified by high CC values, further demonstrating the utility of cryo-EM maps as filters for screening candidate structures.

诱饵揭示了低温电子显微镜柔性配件的多个吸引力盆地。
本研究利用弹性网络运动模型探讨了原子结构对低温电子显微镜(cryo-EM)图的柔性拟合的鲁棒性和唯一性。灵活拟合的成功是基于对单一最优拟合的乐观期望,该最优拟合可以从广泛的开始构象中达到。我们对四个AlphaFold模型重新审视了这一假设,这些模型偏离了相应的中分辨率低温电镜图,但受益于灵活的拟合。为了测试柔性拟合性能对启动结构的依赖性,我们使用正常模式系统地生成了诱饵,与单一启动结构相比,提供了更广泛的构象空间样本。该策略允许探索相互关联(CC)评分函数景观的全局属性。多维尺度统计分析显示,在4个案例中,有3个案例的初始诱饵群坍缩成多个吸引盆地。结果表明,在柔性拟合过程中,单个起始结构可能被困在CC的局部最大值中(虚假拟合),但诱饵增加了找到正确拟合的可能性。更准确地说,有一个紧密相关结构的“获胜”集群,与已知的真实结构表现出高模板建模(TM)分数。CC和tm分数的比较表明,获胜的簇可以通过高CC值来识别,进一步证明了低温电镜图作为筛选候选结构的过滤器的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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