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Towards automated derivation of biological pathways using high-throughput biological data

机译:使用高通量生物学数据实现生物学途径的自动推导

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Characterizing biological pathways at the genome scale is one of the most important and challenging tasks in the post genomic era. To address this challenge, we have developed a computational method to systematically and automatically derive partial biological pathways in yeast using high-throughput biological data, including yeast two hybrid data, protein complexes identified from mass spectroscopy, genetics interactions, and microarray gene expression data in yeast Saccharomyces cerevisiae. The inputs of the method are the upstream starting protein (e.g., a sensor of a signal) and the downstream terminal protein (e.g., a transcriptional factor that induces genes to respond the signal); the output of the method is the protein interaction chain between the two proteins. The high-throughput data are coded into a graph of interaction network, where each node represents a protein. The weight of an edge between two nodes models the "closeness" of the two represented proteins in the interaction network and it is defined by a rule-based formula according to the high-throughput data and modified by the protein function classification and subcellular localization information. The protein interaction cascade pathway in vivo is predicted as the shortest path identified from the graph of the interaction network using Dijkstra's algorithm. We have also developed a web server of this method (http://compbio.ornl.gov/structure/pathway) for public use. To our knowledge, our method is the first automated method to generally construct partial biological pathways using a suite of high-throughput biological data. This work demonstrates the proof of principle using computational approaches for discoveries of biological pathways with high-throughput data and biological annotation data.
机译:在基因组规模上表征生物途径是后基因组时代最重要和最具挑战性的任务之一。为了应对这一挑战,我们开发了一种计算方法,可利用高通量生物学数据系统化地自动获得酵母中的部分生物学途径,包括酵母的两个杂交数据,通过质谱鉴定的蛋白质复合物,遗传学相互作用和酵母中的微阵列基因表达数据。酵母酿酒酵母。该方法的输入是上游起始蛋白(例如,信号的传感器)和下游末端蛋白(例如,诱导基因响应信号的转录因子);该方法的输出是两种蛋白质之间的蛋白质相互作用链。高通量数据被编码为相互作用网络图,其中每个节点代表一种蛋白质。两个节点之间的边缘权重可模拟相互作用网络中两种代表蛋白质的“紧密度”,并根据高通量数据由基于规则的公式定义,并由蛋白质功能分类和亚细胞定位信息进行修饰。体内蛋白质相互作用的级联途径被预测为使用Dijkstra算法从相互作用网络图中识别出的最短路径。我们还开发了这种方法的Web服务器(http://compbio.ornl.gov/structure/pathway)供公众使用。据我们所知,我们的方法是第一种使用一套高通量生物学数据通常构建部分生物学途径的自动化方法。这项工作演示了使用计算方法发现具有高通量数据和生物注释数据的生物途径的原理证明。

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