Predicting malaria interactome classifications from time-course transcriptomic data along the intraerythrocytic developmental cycle

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ObjectiveEven though a vaccine for malaria infections has been under intense study for many years, it has resisted several different lines of attack attempted by biologists. More than half of Plasmodium proteins still remain uncharacterized and therefore cannot be used in clinical trials. The task is further complicated by the metamorphic life-cycle of the parasite, which allows for rapid evolutionary changes and diversity among related strains, thus making precise targeting of the appropriate proteins for vaccination a technical challenge. We propose an automated method for predicting functions for the malaria parasite, which capitalizes on the importance of the intraerythrocytic developmental cycle data and expression changes during its five phases, as determined computationally by our segmentation algorithm.

论文关键词:Protein function prediction,Bayesian probabilistic approach,Plasmodium falciparum,Time-course gene expression data,Intraerythrocytic developmental cycle,Red blood cell membrane proteins,N-terminal host targeting motif,Pexel

论文评审过程:Received 15 March 2009, Revised 28 March 2010, Accepted 29 March 2010, Available online 1 July 2010.

论文官网地址:https://doi.org/10.1016/j.artmed.2010.04.013