4.8 Article

Genetic dissection of the biotic stress response using a genome-scale gene network for rice

Publisher

NATL ACAD SCIENCES
DOI: 10.1073/pnas.1110384108

Keywords

systems biology; plant genetics; gene-trait associations

Funding

  1. US Department of Energy, Office of Science, Office of Biological and Environmental Research [DE-AC02-05CH11231]
  2. National Research Foundation of Korea
  3. Korean government Ministry of Education, Science, and Technology [2010-0017649, 2010-0001818]
  4. POSCO TJ Park
  5. National Science Foundation
  6. National Institutes of Health (NIH) [GM 55962]
  7. Welch Foundation [F1515]
  8. Packard Foundation
  9. National Research Foundation of Korea [2008-0062292] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

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Rice is a staple food for one-half the world's population and a model for other monocotyledonous species. Thus, efficient approaches for identifying key genes controlling simple or complex traits in rice have important biological, agricultural, and economic consequences. Here, we report on the construction of RiceNet, an experimentally tested genome-scale gene network for a monocotyledonous species. Many different datasets, derived from five different organisms including plants, animals, yeast, and humans, were evaluated, and 24 of the most useful were integrated into a statistical framework that allowed for the prediction of functional linkages between pairs of genes. Genes could be linked to traits by using guilt-by-association, predicting gene attributes on the basis of network neighbors. We applied RiceNet to an important agronomic trait, the biotic stress response. Using network guilt-by-association followed by focused protein-protein interaction assays, we identified and validated, in planta, two positive regulators, LOC_Os01g70580 (now Regulator of XA21; ROX1) and LOC_Os02g21510 (ROX2), and one negative regulator, LOC_Os06g12530 (ROX3). These proteins control resistance mediated by rice XA21, a pattern recognition receptor. We also showed that RiceNet can accurately predict gene function in another major monocotyledonous crop species, maize. RiceNet thus enables the identification of genes regulating important crop traits, facilitating engineering of pathways critical to crop productivity.

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