標題: Protein subcellular localization prediction of eukaryotes using a knowledge-based approach
作者: Lin, Hsin-Nan
Chen, Ching-Tai
Sung, Ting-Yi
Ho, Shinn-Ying
Hsu, Wen-Lian
生物資訊及系統生物研究所
Institude of Bioinformatics and Systems Biology
公開日期: 2009
摘要: Background: The study of protein subcellular localization (PSL) is important for elucidating protein functions involved in various cellular processes. However, determining the localization sites of a protein through wet-lab experiments can be time-consuming and labor-intensive. Thus, computational approaches become highly desirable. Most of the PSL prediction systems are established for single-localized proteins. However, a significant number of eukaryotic proteins are known to be localized into multiple subcellular organelles. Many studies have shown that proteins may simultaneously locate or move between different cellular compartments and be involved in different biological processes with different roles. Results: In this study, we propose a knowledge based method, called KnowPredsite, to predict the localization site(s) of both single-localized and multi-localized proteins. Based on the local similarity, we can identify the " related sequences" for prediction. We construct a knowledge base to record the possible sequence variations for protein sequences. When predicting the localization annotation of a query protein, we search against the knowledge base and used a scoring mechanism to determine the predicted sites. We downloaded the dataset from ngLOC, which consisted of ten distinct subcellular organelles from 1923 species, and performed ten-fold cross validation experiments to evaluate KnowPred(site)'s performance. The experiment results show that KnowPred(site) achieves higher prediction accuracy than ngLOC and Blast-hit method. For single-localized proteins, the overall accuracy of KnowPred(site) is 91.7%. For multi-localized proteins, the overall accuracy of KnowPred(site) is 72.1%, which is significantly higher than that of ngLOC by 12.4%. Notably, half of the proteins in the dataset that cannot find any Blast hit sequence above a specified threshold can still be correctly predicted by KnowPred(site). Conclusion: KnowPred(site) demonstrates the power of identifying related sequences in the knowledge base. The experiment results show that even though the sequence similarity is low, the local similarity is effective for prediction. Experiment results show that KnowPred(site) is a highly accurate prediction method for both single- and multi-localized proteins. It is worth-mentioning the prediction process of KnowPred(site) is transparent and biologically interpretable and it shows a set of template sequences to generate the prediction result. The KnowPred(site) prediction server is available at http://bio-cluster.iis.sinica.edu.tw/kbloc/.
URI: http://hdl.handle.net/11536/16105
http://dx.doi.org/10.1186/1471-2105-10-S15-S8
ISSN: 1471-2105
DOI: 10.1186/1471-2105-10-S15-S8
期刊: BMC BIOINFORMATICS
Volume: 10
顯示於類別:會議論文


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