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Assessing scoring metrics for <scp>AlphaFold2</scp> and <scp>AlphaFold3</scp> protein complex predictions

Luca R. Genz, Sanjana Nair, Natan Nagar, Maya Topf

2025Protein Science6 citationsDOIOpen Access PDF

Abstract

Recent breakthroughs in AI-driven protein structure prediction have revolutionized structural biology, unlocking new possibilities to model complex biomolecular interactions. We evaluated widely used scoring metrics for assessing models predicted by ColabFold with templates, ColabFold without templates, and AlphaFold3. We benchmarked the optimal cutoffs for these assessment scores using a set of 223 heterodimeric, high-resolution protein structures and their predictions. Our results show that ColabFold with templates and AlphaFold3 perform similarly, and both outperform ColabFold without templates. However, the assessment scores perform best on ColabFold without templates. Furthermore, interface-specific scores are more reliable for evaluating protein complex predictions compared to the corresponding global scores. Notably, ipTM and model confidence achieve the best discrimination between correct and incorrect predictions. Based on our results, we developed a weighted combined score, C2Qscore, to improve model quality assessment. We used C2Qscore to analyze dimers from large assemblies solved by cryoEM, revealing potential limitations of the existing metrics when multiple configurations of heterodimers are possible. This study provides insights into the strengths and weaknesses of current scores and offers guidance for improving protein complex model assessment under realistic use case conditions. C2Qscore has been integrated as a tool into our ChimeraX plug-in PICKLUSTER v.2.0 and is also available as a command-line tool on https://gitlab.com/topf-lab/c2qscore.

Topics & Concepts

Computer scienceSet (abstract data type)Machine learningStrengths and weaknessesData miningProtein structure predictionArtificial intelligenceQuality (philosophy)CASPMultiple ModelsQuality assessmentPredictive modellingTemplateIdentification (biology)Model validationProtein Structure and DynamicsMachine Learning in BioinformaticsRNA and protein synthesis mechanisms