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      Network-based prediction of human tissue-specific metabolism.

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          Abstract

          Direct in vivo investigation of mammalian metabolism is complicated by the distinct metabolic functions of different tissues. We present a computational method that successfully describes the tissue specificity of human metabolism on a large scale. By integrating tissue-specific gene- and protein-expression data with an existing comprehensive reconstruction of the global human metabolic network, we predict tissue-specific metabolic activity in ten human tissues. This reveals a central role for post-transcriptional regulation in shaping tissue-specific metabolic activity profiles. The predicted tissue specificity of genes responsible for metabolic diseases and tissue-specific differences in metabolite exchange with biofluids extend markedly beyond tissue-specific differences manifest in enzyme-expression data, and are validated by large-scale mining of tissue-specificity data. Our results establish a computational basis for the genome-wide study of normal and abnormal human metabolism in a tissue-specific manner.

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          Author and article information

          Journal
          Nat Biotechnol
          Nature biotechnology
          Springer Science and Business Media LLC
          1546-1696
          1087-0156
          Sep 2008
          : 26
          : 9
          Affiliations
          [1 ] School of Computer Science, Tel-Aviv University, Tel-Aviv 69978, Israel. shlomito@post.tau.ac.il
          Article
          nbt.1487
          10.1038/nbt.1487
          18711341
          5d4cf28a-9850-483c-865f-741aca2345d2
          History

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