Inferring dynamic architecture of cellular networks using time series of gene expression, protein and metabolite data
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Eduardo D. Sontag | Boris N. Kholodenko | Anatoly Kiyatkin | Eduardo Sontag | B. Kholodenko | A. Kiyatkin
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