TY - JOUR T1 - Functional pathways for metabolic network-based data analysis: the MetPath algorithm JF - bioRxiv DO - 10.1101/202226 SP - 202226 AU - Gianluca Mattei AU - Daniel C. Zielinski AU - Zhuohui Gan AU - Matteo Ramazzotti AU - Bernhard O. Palsson Y1 - 2017/01/01 UR - http://biorxiv.org/content/early/2017/10/12/202226.abstract N2 - Analyzing biological data using pathways helps identify trends in data tied to the function of a network. A large number of pathway-based analysis tools have been developed toward this goal. These pathways are often manually curated and thus associations are subject to the biases of the curator. A potentially attractive alternative is to define pathways based on the inherent functionality and connectivity of the network itself. Within metabolism, functionality is defined by the production and consumption of metabolites, and connectivity by metabolites participating in reactions through common enzymes. In this work, we present an algorithm, termed MetPath, that calculates pathways for production and consumption of metabolites. We show how these pathways have attractive properties, such as the ability to integrate multiple data types and weight contribution of genes within the pathway by their functional contribution to metabolite production/consumption. Pathways calculated in this manner are condition-specific and thus are custom tailored to the system of interest, in contrast to curated pathways. We find that these pathways predict gene expression correlation better compared to manually-curated pathways. Additionally, we find that these pathways can be used to understand gene expression changes between growth conditions and between cell types. This work serves to better understand the functional pathway structure underlying cell metabolism and helps to enable systems analyses of high-throughput data. ER -