Evaluation of protein descriptors in computer-aided rational protein engineering tasks and its application in property prediction in SARS-CoV-2 spike glycoprotein

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dc.contributor.authorH Lim-
dc.contributor.authorH N Jeon-
dc.contributor.authorS Lim-
dc.contributor.authorY Jang-
dc.contributor.authorT Kim-
dc.contributor.authorH Cho-
dc.contributor.authorJae Gu Pan-
dc.contributor.authorK T No-
dc.date.accessioned2022-02-15T15:30:44Z-
dc.date.available2022-02-15T15:30:44Z-
dc.date.issued2022-
dc.identifier.issn2001-0370-
dc.identifier.urihttps://oak.kribb.re.kr/handle/201005/25424-
dc.description.abstractThe importance of protein engineering in the research and development of biopharmaceuticals and biomaterials has increased. Machine learning in computer-aided protein engineering can markedly reduce the experimental effort in identifying optimal sequences that satisfy the desired properties from a large number of possible protein sequences. To develop general protein descriptors for computer-aided protein engineering tasks, we devised new protein descriptors, one sequence-based descriptor (PCgrades), and three structure-based descriptors (PCspairs, 3D-SPIEs_5.4 A, and 3D-SPIEs_8A). While the PCgrades and PCspairs include general and statistical information in physicochemical properties in single and pairwise amino acids respectively, the 3D-SPIEs include specific and quantum?mechanical information with parameterized quantum mechanical calculations (FMO2-DFTB3/D/PCM). To evaluate the protein descriptors, we made prediction models with the new descriptors and previously developed descriptors for diverse protein datasets including protein expression and binding affinity change in SARS-CoV-2 spike glycoprotein. As a result, the newly devised descriptors showed a good performance in diverse datasets, in which the PCspairs showed the best performance (R2=0.783 for protein expression and R2=0.711 for binding affinity). As a result, the newly devised descriptors showed a good performance in diverse datasets, in which the PCspairs showed the best performance. Similar approaches with those descriptors would be promising and useful if the prediction models are trained with sufficient quantitative experimental data from high-throughput assays for industrial enzymes or protein drugs.-
dc.publisherElsevier-
dc.titleEvaluation of protein descriptors in computer-aided rational protein engineering tasks and its application in property prediction in SARS-CoV-2 spike glycoprotein-
dc.title.alternativeEvaluation of protein descriptors in computer-aided rational protein engineering tasks and its application in property prediction in SARS-CoV-2 spike glycoprotein-
dc.typeArticle-
dc.citation.titleComputational and Structural Biotechnology Journal-
dc.citation.number0-
dc.citation.endPage798-
dc.citation.startPage788-
dc.citation.volume20-
dc.contributor.affiliatedAuthorJae Gu Pan-
dc.contributor.alternativeName임호철-
dc.contributor.alternativeName전현내-
dc.contributor.alternativeName임승철-
dc.contributor.alternativeName장유일-
dc.contributor.alternativeName김태희-
dc.contributor.alternativeName조혜인-
dc.contributor.alternativeName반재구-
dc.contributor.alternativeName노경태-
dc.identifier.bibliographicCitationComputational and Structural Biotechnology Journal, vol. 20, pp. 788-798-
dc.identifier.doi10.1016/j.csbj.2022.01.027-
dc.subject.keywordQuantum mechanics-
dc.subject.keywordFragment molecular orbitals-
dc.subject.keywordProtein engineering-
dc.subject.keywordMachine learning-
dc.subject.keywordProtein descriptor-
dc.subject.localQuantum mechanics-
dc.subject.localFragment molecular orbitals-
dc.subject.localProtein engineering-
dc.subject.localprotein engineering-
dc.subject.localProtein Engineering-
dc.subject.localMachine learning-
dc.subject.localmachine learning-
dc.subject.localProtein descriptor-
dc.description.journalClassY-
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