| Literature DB >> 26058944 |
Xue He1, Ke Han1, Jun Hu1, Hui Yan1, Jing-Yu Yang1, Hong-Bin Shen2, Dong-Jun Yu3,4.
Abstract
Antifreeze proteins (AFPs) are indispensable for living organisms to survive in an extremely cold environment and have a variety of potential biotechnological applications. The accurate prediction of antifreeze proteins has become an important issue and is urgently needed. Although considerable progress has been made, AFP prediction is still a challenging problem due to the diversity of species. In this study, we proposed a new sequence-based AFP predictor, called TargetFreeze. TargetFreeze utilizes an enhanced feature representation method that weightedly combines multiple protein features and takes the powerful support vector machine as the prediction engine. Computer experiments on benchmark datasets demonstrate the superiority of the proposed TargetFreeze over most recently released AFP predictors. We also implemented a user-friendly web server, which is openly accessible for academic use and is available at http://csbio.njust.edu.cn/bioinf/TargetFreeze. TargetFreeze supplements existing AFP predictors and will have potential applications in AFP-related biotechnology fields.Entities:
Keywords: Antifreeze protein prediction; Machine learning; Multi-view protein features; Support vector machine
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Year: 2015 PMID: 26058944 DOI: 10.1007/s00232-015-9811-z
Source DB: PubMed Journal: J Membr Biol ISSN: 0022-2631 Impact factor: 1.843