Understanding large scale sequencing datasets through changes to protein folding

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Abstract

The expansion of high-quality, low-cost sequencing has created an enormous opportunity to understand how genetic variants alter cellular behaviour in disease. The high diversity of mutations observed has however drawn a spotlight onto the need for predictive modelling of mutational effects on phenotype from variants of uncertain significance. This is particularly important in the clinic due to the potential value in guiding clinical diagnosis and patient treatment. Recent computational modelling has highlighted the importance of mutation induced protein misfolding as a common mechanism for loss of protein or domain function, aided by developments in methods that make large computational screens tractable. Here we review recent applications of this approach to different genes, and how they have enabled and supported subsequent studies. We further discuss developments in the approach and the role for the approach in light of increasingly high throughput experimental approaches.

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Shorthouse, D., Lister, H., Freeman, G. S., & Hall, B. A. (2024, September 1). Understanding large scale sequencing datasets through changes to protein folding. Briefings in Functional Genomics. Oxford University Press. https://doi.org/10.1093/bfgp/elae007

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