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ProTstab2 for Prediction of Protein Thermal Stabilities
Authors:Yang Yang  Jianjun Zhao  Lianjie Zeng  Mauno Vihinen
Affiliation:1.School of Computer Science and Technology, Soochow University, Suzhou 215006, China;2.Collaborative Innovation Center of Novel Software Technology and Industrialization, Nanjing 210000, China;3.Department of Experimental Medical Science, BMC B13, Lund University, SE-22184 Lund, Sweden
Abstract:The stability of proteins is an essential property that has several biological implications. Knowledge about protein stability is important in many ways, ranging from protein purification and structure determination to stability in cells and biotechnological applications. Experimental determination of thermal stabilities has been tedious and available data have been limited. The introduction of limited proteolysis and mass spectrometry approaches has facilitated more extensive cellular protein stability data production. We collected melting temperature information for 34,913 proteins and developed a machine learning predictor, ProTstab2, by utilizing a gradient boosting algorithm after testing seven algorithms. The method performance was assessed on a blind test data set and showed a Pearson correlation coefficient of 0.753 and root mean square error of 7.005. Comparison to previous methods indicated that ProTstab2 had superior performance. The method is fast, so it was applied to predict and compare the stabilities of all proteins in human, mouse, and zebrafish proteomes for which experimental data were not determined. The tool is freely available.
Keywords:protein cellular stability   stability prediction   protein property   machine learning predictor   artificial intelligence   gradient boosting
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