TY - JOUR
T1 - Predictive network modeling of the high-resolution dynamic plant transcriptome in response to nitrate
AU - Krouk, Gabriel
AU - Mirowski, Piotr
AU - LeCun, Yann
AU - Shasha, Dennis E.
AU - Coruzzi, Gloria M.
N1 - Funding Information:
The pSPL9:rSPL9 seeds were kindly provided by the Detlef Weigel lab. This work was supported by: NIH Grant GM032877 to GC and DS; a NSF Arabidopsis 2010 grant MCB-0929338 to GC and DS. Modeling tools are developed under NSF DBI-0445666 to GC and DS. GK is supported by a European-FP7-International Outgoing Fellowship (Marie Curie) (AtSYSTM-BIOL; PIOF-GA-2008-220157). DS is also supported by IIS-0414763. YL is supported by a grant NSF ITR-0325463: ITR: New directions in predictive learning. We thank Dr Sandrine Ruffel for her useful comments on the manuscript.
PY - 2010/12/23
Y1 - 2010/12/23
N2 - Background: Nitrate, acting as both a nitrogen source and a signaling molecule, controls many aspects of plant development. However, gene networks involved in plant adaptation to fluctuating nitrate environments have not yet been identified.Results: Here we use time-series transcriptome data to decipher gene relationships and consequently to build core regulatory networks involved in Arabidopsis root adaptation to nitrate provision. The experimental approach has been to monitor genome-wide responses to nitrate at 3, 6, 9, 12, 15 and 20 minutes using Affymetrix ATH1 gene chips. This high-resolution time course analysis demonstrated that the previously known primary nitrate response is actually preceded by a very fast gene expression modulation, involving genes and functions needed to prepare plants to use or reduce nitrate. A state-space model inferred from this microarray time-series data successfully predicts gene behavior in unlearnt conditions.Conclusions: The experiments and methods allow us to propose a temporal working model for nitrate-driven gene networks. This network model is tested both in silico and experimentally. For example, the over-expression of a predicted gene hub encoding a transcription factor induced early in the cascade indeed leads to the modification of the kinetic nitrate response of sentinel genes such as NIR, NIA2, and NRT1.1, and several other transcription factors. The potential nitrate/hormone connections implicated by this time-series data are also evaluated.
AB - Background: Nitrate, acting as both a nitrogen source and a signaling molecule, controls many aspects of plant development. However, gene networks involved in plant adaptation to fluctuating nitrate environments have not yet been identified.Results: Here we use time-series transcriptome data to decipher gene relationships and consequently to build core regulatory networks involved in Arabidopsis root adaptation to nitrate provision. The experimental approach has been to monitor genome-wide responses to nitrate at 3, 6, 9, 12, 15 and 20 minutes using Affymetrix ATH1 gene chips. This high-resolution time course analysis demonstrated that the previously known primary nitrate response is actually preceded by a very fast gene expression modulation, involving genes and functions needed to prepare plants to use or reduce nitrate. A state-space model inferred from this microarray time-series data successfully predicts gene behavior in unlearnt conditions.Conclusions: The experiments and methods allow us to propose a temporal working model for nitrate-driven gene networks. This network model is tested both in silico and experimentally. For example, the over-expression of a predicted gene hub encoding a transcription factor induced early in the cascade indeed leads to the modification of the kinetic nitrate response of sentinel genes such as NIR, NIA2, and NRT1.1, and several other transcription factors. The potential nitrate/hormone connections implicated by this time-series data are also evaluated.
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U2 - 10.1186/gb-2010-11-12-r123
DO - 10.1186/gb-2010-11-12-r123
M3 - Article
C2 - 21182762
AN - SCOPUS:78650335757
SN - 1474-7596
VL - 11
JO - Genome biology
JF - Genome biology
IS - 12
M1 - R123
ER -