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Sparse graphical Gaussian modeling of the isoprenoid gene network in Arabidopsis thaliana.
Wille A, Zimmermann P, Vranová E, Fürholz A, Laule O, Bleuler S, Hennig L, Prelic A, von Rohr P, Thiele L, Zitzler E, Gruissem W, Bühlmann P.
Genome Biol. 2004;5(11):R92. Epub 2004 Oct 25.
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