Inference of annealed protein fitness landscapes with AnnealDCA.

Journal: PLoS computational biology
Published Date:

Abstract

The design of proteins with specific tasks is a major challenge in molecular biology with important diagnostic and therapeutic applications. High-throughput screening methods have been developed to systematically evaluate protein activity, but only a small fraction of possible protein variants can be tested using these techniques. Computational models that explore the sequence space in-silico to identify the fittest molecules for a given function are needed to overcome this limitation. In this article, we propose AnnealDCA, a machine-learning framework to learn the protein fitness landscape from sequencing data derived from a broad range of experiments that use selection and sequencing to quantify protein activity. We demonstrate the effectiveness of our method by applying it to antibody Rep-Seq data of immunized mice and screening experiments, assessing the quality of the fitness landscape reconstructions. Our method can be applied to several experimental cases where a population of protein variants undergoes various rounds of selection and sequencing, without relying on the computation of variants enrichment ratios, and thus can be used even in cases of disjoint sequence samples.

Authors

  • Luca Sesta
    Department of Applied Science and Technology, Politecnico di Torino, Torino, Italy.
  • Andrea Pagnani
    Statistical Inference and Biological Modeling Group, Italian Institute for Genomic Medicine, Candiolo, Italy.
  • Jorge Fernandez-de-Cossio-Diaz
    Laboratory of Physics of the Ecole Normale Supérieure, CNRS UMR 8023 & PSL Research, Sorbonne Université, Paris, France.
  • Guido Uguzzoni
    Institut Curie, PSL Research University, CNRS UMR168.