Metal ions are vital components in many proteins for the inference and engineering of protein function, with coordination complexity linked to structural (4-residue predominate), catalytic (3-residue predominate), or regulatory (2-residue predominate) roles. Computational tools for modeling metal ions in protein structures, especially for transient, reversible, and concentration-dependent regulatory sites, remain immature. We present PinMyMetal (PMM), a sophisticated hybrid machine learning system for predicting zinc ion localization and environment in macromolecular structures. Compared to other predictors, PMM excels in predicting regulatory sites (median deviation of 0.34 Ã ), demonstrating superior accuracy in locating catalytic sites (median deviation of 0.27 Ã ) and structural sites (median deviation of 0.14 Ã ). PMM assigns a certainty score to each predicted site based on local structural and physicochemical features independent of homolog presence. Interactive validation through our server, CheckMyMetal, expands PMM's scope, enabling it to pinpoint and validates diverse functional zinc sites from different structure sources (predicted structures, cryo-EM and crystallography). This facilitates residue-wise assessment and robust metal binding site design. The lightweight PMM system demands minimal computing resources and is available at https://PMM.biocloud.top. While currently trained on zinc, the PMM workflow can easily adapt to other metals through expanded training data.
PinMyMetal: A hybrid learning system to accurately model metal binding sites in macromolecules.
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作者:Zheng Heping, Zhang Huihui, Zhong Juanhong, Gucwa Michal, Zhang Yishuai, Ma Haojie, Deng Lei, Mao Longfei, Minor Wladek, Wang Nasui
| 期刊: | Res Sq | 影响因子: | 0.000 |
| 时间: | 2024 | 起止号: | 2024 Feb 21 |
| doi: | 10.21203/rs.3.rs-3908734/v1 | ||
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