首页> 外文会议>Pacific Symposium on Biocomputing(PSB); 20050104-08; Hawaii,HI(US) >GENOME-SCALE PROTEIN FUNCTION PREDICTION IN YEAST SACCHAROMYCES CEREVISIAE THROUGH INTEGRATING MULTIPLE SOURCES OF HIGH-THROUGHPUT DATA
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GENOME-SCALE PROTEIN FUNCTION PREDICTION IN YEAST SACCHAROMYCES CEREVISIAE THROUGH INTEGRATING MULTIPLE SOURCES OF HIGH-THROUGHPUT DATA

机译:酵母糖酵母基因组中的大规模蛋白质功能预测通过整合多种来源的高纯度数据

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As we are moving into the post genome-sequencing era, various high-throughput experimental techniques have been developed to characterize biological systems at the genome scale. Discovering new biological knowledge from high-throughput biological data is a major challenge for bioinformatics today. To address this challenge, we developed a Bayesian statistical method together with Boltzmann machine and simulated annealing for protein function prediction in the yeast Saccharomyces cerevisiae through integrating various high-throughput biological data, including protein binary interactions, protein complexes and microarray gene expression profiles. In our approach, we quantified the relationship between functional similarity and high-throughput data. Based on our method, 1802 out of 2280 unannotated proteins in the yeast were assigned functions systematically. The related computer package is available upon request.
机译:随着我们进入后基因组测序时代,已开发出各种高通量实验技术来表征基因组规模的生物系统。从高通量生物学数据中发现新的生物学知识是当今生物信息学的主要挑战。为了解决这一挑战,我们通过结合各种高通量生物学数据(包括蛋白质二进制相互作用,蛋白质复合物和微阵列基因表达谱),开发了一种贝叶斯统计方法以及Boltzmann机器,并通过模拟退火对酿酒酵母中的蛋白质功能进行了预测。在我们的方法中,我们量化了功能相似性和高通量数据之间的关系。根据我们的方法,系统地分配了酵母中2280个未注释蛋白中的1802个。相关计算机软件包可应要求提供。

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