Abstract

Temperature-sensitive (TS) mutants are powerful tools to study gene function in vivo. These mutants exhibit wild-type activity at permissive temperatures and reduced activity at restrictive temperatures. Although random mutagenesis can be used to generate TS mutants, the procedure is laborious and unfeasible in multicellular organisms. Further, the underlying molecular mechanisms of the TS phenotype are poorly understood. To elucidate TS mechanisms, we used a machine learning method–logistic regression–to investigate a large number of sequence and structure features. We developed and tested 133 features, describing properties of either the mutation site or the mutation site neighborhood. We defined three types of neighborhood using sequence distance, Euclidean distance, and topological distance. We discovered that neighborhood features outperformed mutation site features in predicting TS mutations. The most predictive features suggest that TS mutations tend to occur at buried and rigid residues, and are located at conserved protein domains. The environment of a buried residue often determines the overall structural stability of a protein, thus may lead to reversible activity change upon temperature switch. We developed TS prediction models based on logistic regression and the Lasso regularized procedure. Through a ten-fold cross-validation, we obtained the area under the curve of 0.91 for the model using both sequence and structure features. Testing on independent datasets suggested that the model predicted TS mutations with a 50% precision. In summary, our study elucidated the molecular basis of TS mutants and suggested the importance of neighborhood properties in determining TS mutations. We further developed models to predict TS mutations derived from single amino acid substitutions. In this way, TS mutants can be efficiently obtained through experimentally introducing the predicted mutations.

Highlights

  • Temperature-sensitive (TS) mutants are fully active at permissive temperatures and less active at restrictive temperatures [1]

  • Dataset of TS mutations Most TS mutants used in genetic studies are heat-sensitive

  • Features predictive for TS mutations The main goal of this study is to elucidate the molecular basis of TS mutations

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Summary

Introduction

Temperature-sensitive (TS) mutants are fully active at permissive temperatures and less active at restrictive temperatures [1]. There are two types of TS mutants, heat-sensitive and coldsensitive, depending on whether the permissive temperature is lower or higher than the restrictive temperature. TS mutants offer a powerful tool for in vivo investigation of gene function. A simple temperature shift can control gene activity and be executed in any cell type. TS mutants have been used to investigate gene function in many organisms, including viruses, bacteria, yeast, Drosophila, C. elegans, and mammalian cell cultures [2,3,4,5,6]. Genetic analyses of yeast essential genes have been conducted primarily with TS mutants [7]

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