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JacLy: a Jacobian-based method for the inference of metabolic interactions from the covariance of steady-state metabolome data.


ABSTRACT: Reverse engineering metabolome data to infer metabolic interactions is a challenging research topic. Here we introduce JacLy, a Jacobian-based method to infer metabolic interactions of small networks (<20 metabolites) from the covariance of steady-state metabolome data. The approach was applied to two different in silico small-scale metabolome datasets. The power of JacLy lies on the use of steady-state metabolome data to predict the Jacobian matrix of the system, which is a source of information on structure and dynamic characteristics of the system. Besides its advantage of inferring directed interactions, its superiority over correlation-based network inference was especially clear in terms of the required number of replicates and the effect of the use of priori knowledge in the inference. Additionally, we showed the use of standard deviation of the replicate data as a suitable approximation for the magnitudes of metabolite fluctuations inherent in the system.

SUBMITTER: Khatibipour MJ 

PROVIDER: S-EPMC6286809 | biostudies-literature | 2018

REPOSITORIES: biostudies-literature

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JacLy: a Jacobian-based method for the inference of metabolic interactions from the covariance of steady-state metabolome data.

Khatibipour Mohammad Jafar MJ   Kurtoğlu Furkan F   Çakır Tunahan T  

PeerJ 20181206


Reverse engineering metabolome data to infer metabolic interactions is a challenging research topic. Here we introduce JacLy, a Jacobian-based method to infer metabolic interactions of small networks (<20 metabolites) from the covariance of steady-state metabolome data. The approach was applied to two different <i>in silico</i> small-scale metabolome datasets. The power of JacLy lies on the use of steady-state metabolome data to predict the Jacobian matrix of the system, which is a source of inf  ...[more]

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