4.6 Article

DDGun: an untrained method for the prediction of protein stability changes upon single and multiple point variations

Journal

BMC BIOINFORMATICS
Volume 20, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s12859-019-2923-1

Keywords

Unfolding free energy change; Multiple site variation; Protein stability; Protein variant

Funding

  1. EBA-PRISM project as a scientific track of Israel-Italy cooperation agreement
  2. Israel Ministry of Science and Technology
  3. Abraham E. Kazan Chair in Structural Biology, Tel Aviv University
  4. FFABR funds from the Italian Ministry of Education, Research and Universities
  5. Italian Ministry for Education, University and Research under the programme Dipartimenti di Eccellenza 2018 - 2022 [D15D18000410001]

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Background: Predicting the effect of single point variations on protein stability constitutes a crucial step toward understanding the relationship between protein structure and function. To this end, several methods have been developed to predict changes in the Gibbs free energy of unfolding (G) between wild type and variant proteins, using sequence and structure information. Most of the available methods however do not exhibit the anti-symmetric prediction property, which guarantees that the predicted G value for a variation is the exact opposite of that predicted for the reverse variation, i.e., Delta Delta G(A -> B)=-Delta Delta G(B -> A), where A and B are amino acids. Results: Here we introduce simple anti-symmetric features, based on evolutionary information, which are combined to define an untrained method, DDGun (DDG untrained). DDGun is a simple approach based on evolutionary information that predicts the G for single and multiple variations from sequence and structure information (DDGun3D). Our method achieves remarkable performance without any training on the experimental datasets, reaching Pearson correlation coefficients between predicted and measured Delta Delta G values of similar to 0.5 and similar to 0.4 for single and multiple site variations, respectively. Surprisingly, DDGun performances are comparable with those of state of the art methods. DDGun also naturally predicts multiple site variations, thereby defining a benchmark method for both single site and multiple site predictors. DDGun is anti-symmetric by construction predicting the value of the Delta Delta G of a reciprocal variation as almost equal (depending on the sequence profile) to -Delta Delta G of the direct variation. This is a valuable property that is missing in the majority of the methods. Conclusions: Evolutionary information alone combined in an untrained method can achieve remarkably high performances in the prediction of Delta Delta G upon protein mutation. Non-trained approaches like DDGun represent a valid benchmark both for scoring the predictive power of the individual features and for assessing the learning capability of supervised methods.

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