Please use this identifier to cite or link to this item: https://doi.org/10.1186/1471-2105-7-S5-S13
Title: Prediction of the functional class of metal-binding proteins from sequence derived physicochemical properties by support vector machine approach
Authors: Lin, H.H.
Han, L.Y. 
Zhang, H.L.
Zheng, C.J. 
Xie, B.
Cao, Z.W.
Chen, Y.Z. 
Issue Date: 18-Dec-2006
Citation: Lin, H.H., Han, L.Y., Zhang, H.L., Zheng, C.J., Xie, B., Cao, Z.W., Chen, Y.Z. (2006-12-18). Prediction of the functional class of metal-binding proteins from sequence derived physicochemical properties by support vector machine approach. BMC Bioinformatics 7 (SUPPL.5) : -. ScholarBank@NUS Repository. https://doi.org/10.1186/1471-2105-7-S5-S13
Abstract: Metal-binding proteins play important roles in structural stability, signaling, regulation, transport, immune response, metabolism control, and metal homeostasis. Because of their functional and sequence diversity, it is desirable to explore additional methods for predicting metal-binding proteins irrespective of sequence similarity. This work explores support vector machines (SVM) as such a method. SVM prediction systems were developed by using 53,333 metal-binding and 147,347 non-metal-binding proteins, and evaluated by an independent set of 31,448 metal-binding and 79,051 non-metal-binding proteins. The computed prediction accuracy is 86.3%, 81.6%, 83.5%, 94.0%, 81.2%, 85.4%, 77.6%, 90.4%, 90.9%, 74.9% and 78.1% for calcium-binding, cobalt-binding, copper-binding, iron-binding, magnesium-binding, manganese-binding, nickel-binding, potassiumbinding, sodium-binding, zinc-binding, and all metal-binding proteins respectively. The accuracy for the non-member proteins of each class is 88.2%, 99.9%, 98.1%, 91.4%, 87.9%, 94.5%, 99.2%, 99.9%, 99.9%, 98.0%, and 88.0% respectively. Comparable accuracies were obtained by using a different SVM kernel function. Our method predicts 67% of the 87 metal-binding proteins non-homologous to any protein in the Swissprot database and 85.3% of the 333 proteins of known metal-binding domains as metal-binding. These suggest the usefulness of SVM for facilitating the prediction of metal-binding proteins. Our software can be accessed at the SVMProt server http://jing.cz3.nus.edu.sg/cgi-bin/svmprot.cgi. © 2006 Lin et al; licensee BioMed Central Ltd.
Source Title: BMC Bioinformatics
URI: http://scholarbank.nus.edu.sg/handle/10635/106246
ISSN: 14712105
DOI: 10.1186/1471-2105-7-S5-S13
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