Metalloproteins play crucial physiological roles across all domains of life, relying on metal ions for structural stability and catalytic activity. In recent years, computational approaches have emerged as powerful and increasingly reliable tools for predicting metal-binding sites in metalloproteins, enabling their application in the challenging field of metalloproteomics. Given the growing number of available tools, it is timely to design a reproducible approach to characterize their performance in specific usage scenarios. Thus, in this study, we selected some state-of-the-art structure-based predictors for zinc-binding sites and evaluated their performance on two data sets: experimental apoprotein structures and structural models generated by AlphaFold. Our results indicate that apoprotein structures pose significant challenges for predicting metal-binding sites. For these systems, the predictors achieved lower-than-expected performance due to the structural rearrangements occurring upon metalation. Conversely, predictions based on AlphaFold models yielded significantly better results, suggesting that they more closely resemble the holo forms of metalloproteins. Our findings highlight the great potential of metal-binding site predictions for advancing research in the field of metalloproteomics.
Benchmarking Zinc-Binding Site Predictors: A Comparative Analysis of Structure-Based Approaches / Ciofalo, Cosimo; Laveglia, Vincenzo; Andreini, Claudia; Rosato, Antonio. - In: JOURNAL OF CHEMICAL INFORMATION AND MODELING. - ISSN 1549-9596. - STAMPA. - 65:(2025), pp. 5205-5215. [10.1021/acs.jcim.5c00549]
Benchmarking Zinc-Binding Site Predictors: A Comparative Analysis of Structure-Based Approaches
Ciofalo, Cosimo;Laveglia, Vincenzo;Andreini, Claudia;Rosato, Antonio
2025
Abstract
Metalloproteins play crucial physiological roles across all domains of life, relying on metal ions for structural stability and catalytic activity. In recent years, computational approaches have emerged as powerful and increasingly reliable tools for predicting metal-binding sites in metalloproteins, enabling their application in the challenging field of metalloproteomics. Given the growing number of available tools, it is timely to design a reproducible approach to characterize their performance in specific usage scenarios. Thus, in this study, we selected some state-of-the-art structure-based predictors for zinc-binding sites and evaluated their performance on two data sets: experimental apoprotein structures and structural models generated by AlphaFold. Our results indicate that apoprotein structures pose significant challenges for predicting metal-binding sites. For these systems, the predictors achieved lower-than-expected performance due to the structural rearrangements occurring upon metalation. Conversely, predictions based on AlphaFold models yielded significantly better results, suggesting that they more closely resemble the holo forms of metalloproteins. Our findings highlight the great potential of metal-binding site predictions for advancing research in the field of metalloproteomics.File | Dimensione | Formato | |
---|---|---|---|
JCIM_2025-benchmarking-zinc-binding-site-predictors-a-comparative-analysis-of-structure-based-approaches.pdf
accesso aperto
Tipologia:
Pdf editoriale (Version of record)
Licenza:
Creative commons
Dimensione
3.25 MB
Formato
Adobe PDF
|
3.25 MB | Adobe PDF |
I documenti in FLORE sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.