Comparing Supervised
Learning and Rigorous Approach
for Predicting Protein Stability upon Point Mutations in Difficult
Targets
Posted on 2023-10-28 - 18:34
Accurate
prediction of protein stability upon a point mutation
has important applications in drug discovery and personalized medicine.
It remains a challenging issue in computational biology. Existing
computational prediction methods, which range from mechanistic to
supervised learning approaches, have experienced limited progress
over the last few decades. This stagnation is largely due to their
heavy reliance on both the quantity and quality of the training data.
This is evident in recent state-of-the-art methods that continue to
yield substantial errors on two challenging blind test sets: frataxin
and p53, with average root-mean-square errors exceeding 3 and 1.5
kcal/mol, respectively, which is still above the theoretical 1 kcal/mol
prediction barrier. Rigorous approaches, on the other hand, offer
greater potential for accuracy without relying on training data but
are computationally demanding and require both wild-type and mutant
structure information. Although they showed high accuracy for conserving
mutations, their performance is still limited for charge-changing
mutation cases. This might be due to the lack of an available mutant
structure, often represented by a simplified capped peptide. The recent
advances in protein structure prediction methods now make it possible
to obtain structures comparable to experimental ones, including complete
mutant structure information. In this work, we compare the performance
of supervised learning-based methods and rigorous approaches for predicting
protein stability on point mutations in difficult targets: frataxin
and p53. The rigorous alchemical method significantly surpasses state-of-the-art
techniques in terms of both the root-mean-squared error and Pearson
correlation coefficient in these two challenging blind test sets.
Additionally, we propose an improved alchemical method that employs
the pmx double-system/single-box approach to accurately
predict the folding free energy change upon both conserving and charge-changing
mutations. The enhanced protocol can accurately predict both types
of mutations, thereby outperforming existing state-of-the-art methods
in overall performance.
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Kurniawan, Jason; Ishida, Takashi (2023). Comparing Supervised
Learning and Rigorous Approach
for Predicting Protein Stability upon Point Mutations in Difficult
Targets. ACS Publications. Collection. https://doi.org/10.1021/acs.jcim.3c00750Â