4.7 Article

FREEDA: An automated computational pipeline guides experimental testing of protein innovation

Journal

JOURNAL OF CELL BIOLOGY
Volume 222, Issue 9, Pages -

Publisher

ROCKEFELLER UNIV PRESS
DOI: 10.1083/jcb.202212084

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Dudka et al. have developed an automated computational pipeline that can detect statistical signatures of evolutionary innovation in various species. This pipeline can guide hypotheses and experimental design to understand the regulation of protein function. The authors applied this pipeline to centromere proteins and identified positive selection within ancient domains, suggesting functional innovation.
Dudka et al. present a fully automated computational pipeline detecting statistical signatures of evolutionary innovation in rodents, primates, carnivores, birds, and flies. The manuscript provides examples showing how these analyses can guide hypotheses and experimental design to gain insights into the regulation of protein function. Cell biologists typically focus on conserved regions of a protein, overlooking innovations that can shape its function over evolutionary time. Computational analyses can reveal potential innovations by detecting statistical signatures of positive selection that lead to rapid accumulation of beneficial mutations. However, these approaches are not easily accessible to non-specialists, limiting their use in cell biology. Here, we present an automated computational pipeline FREEDA that provides a simple graphical user interface requiring only a gene name; integrates widely used molecular evolution tools to detect positive selection in rodents, primates, carnivores, birds, and flies; and maps results onto protein structures predicted by AlphaFold. Applying FREEDA to >100 centromere proteins, we find statistical evidence of positive selection within loops and turns of ancient domains, suggesting innovation of essential functions. As a proof-of-principle experiment, we show innovation in centromere binding of mouse CENP-O. Overall, we provide an accessible computational tool to guide cell biology research and apply it to experimentally demonstrate functional innovation.

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