GENERALIST: An efficient generative model for protein sequence families

Author:

Akl HodaORCID,Emison Brooke,Zhao Xiaochuan,Mondal Arup,Perez Alberto,Dixit Purushottam D.ORCID

Abstract

AbstractGenerative models of protein sequence families are an important tool in the repertoire of protein scientists and engineers alike. However, state-of-the-art generative approaches face inference, accuracy, and overfitting-related obstacles when modeling moderately sized to large proteins and/or protein families with low sequence coverage. To that end, we present a simple to learn, tunable, and accurate generative model, GENERALIST:GENERAtive nonLInear tenSor-factorizaTionfor protein sequences. Compared to state-of-the-art methods, GENERALIST accurately captures several high order summary statistics of amino acid covariation. GENERALIST also predicts conservative local optimal sequences which are likely to fold in stable 3D structure. Importantly, unlike other methods, the density of sequences in GENERALIST-modeled sequence ensembles closely resembles the corresponding natural ensembles. GENERALIST will be an important tool to study protein sequence variability.

Publisher

Cold Spring Harbor Laboratory

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