Comparative Performance of High-Throughput Methods for Protein p Predictions.

J Chem Inf Model

Human Health Therapeutics Research Centre, National Research Council Canada, 6100 Royalmount Avenue, Montreal, Quebec H4P 2R2, Canada.

Published: August 2023

The medically relevant field of protein-based therapeutics has triggered a demand for protein engineering in different pH environments of biological relevance. engineering workflows typically employ high-throughput screening campaigns that require evaluating large sets of protein residues and point mutations by fast yet accurate computational algorithms. While several high-throughput p prediction methods exist, their accuracies are unclear due to the lack of a current comprehensive benchmarking. Here, seven fast, efficient, and accessible approaches including PROPKA3, DeepKa, PKAI, PKAI+, DelPhiPKa, MCCE2, and H++ were systematically tested on a nonredundant subset of 408 measured protein residue p shifts from the p database (PKAD). While no method outperformed the null hypotheses with confidence, as illustrated by statistical bootstrapping, DeepKa, PKAI+, PROPKA3, and H++ had utility. More specifically, DeepKa consistently performed well in tests across multiple and individual amino acid residue types, as reflected by lower errors, higher correlations, and improved classifications. Arithmetic averaging of the best empirical predictors into simple consensuses improved overall transferability and accuracy up to a root-mean-square error of 0.76 p units and a correlation coefficient () of 0.45 to experimental p shifts. This analysis should provide a basis for further methodological developments and guide future applications, which require embedding of computationally inexpensive p prediction methods, such as the optimization of antibodies for pH-dependent antigen binding.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10466379PMC
http://dx.doi.org/10.1021/acs.jcim.3c00165DOI Listing

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