TY - JOUR
T1 - Network topology and parameter estimation
T2 - From experimental design methods to gene regulatory network kinetics using a community based approach
AU - Meyer, Pablo
AU - Cokelaer, Thomas
AU - Chandran, Deepak
AU - Kim, Kyung H.
AU - Loh, Po Ru
AU - Tucker, George
AU - Lipson, Mark
AU - Berger, Bonnie
AU - Kreutz, Clemens
AU - Raue, Andreas
AU - Steiert, Bernhard
AU - Timmer, Jens
AU - Bilal, Erhan
AU - Sauro, Herbert M.
AU - Stolovitzky, Gustavo
AU - Saez-Rodriguez, Julio
N1 - Funding Information:
We acknowledge the financial aid received from the EU through project “BioPreDyn” (ECFP7-KBBE-2011-5 Grant number 289434). HS, KK and DC acknowledge support from the National Institute of General Medical Science of the National Institutes of Health under award number R01GM081070 NSF support (0827592) in Theoretical Biology (MCB) and NSF support (1158573) EF. Thanks to Michael Menden for useful comments on the manuscript and the analysis. PL and GT acknowledge support from Defense NDSEG graduate fellowships. PL and ML acknowledge support from NSF graduate fellowships. AR, BS, CK are funded by German Federal Ministry of Education and Research [Virtual Liver (Grant No. 0315766) and LungSys II (Grant No. 0316042G)].
PY - 2014/2/7
Y1 - 2014/2/7
N2 - Background: Accurate estimation of parameters of biochemical models is required to characterize the dynamics of molecular processes. This problem is intimately linked to identifying the most informative experiments for accomplishing such tasks. While significant progress has been made, effective experimental strategies for parameter identification and for distinguishing among alternative network topologies remain unclear. We approached these questions in an unbiased manner using a unique community-based approach in the context of the DREAM initiative (Dialogue for Reverse Engineering Assessment of Methods). We created an in silico test framework under which participants could probe a network with hidden parameters by requesting a range of experimental assays; results of these experiments were simulated according to a model of network dynamics only partially revealed to participants. Results: We proposed two challenges; in the first, participants were given the topology and underlying biochemical structure of a 9-gene regulatory network and were asked to determine its parameter values. In the second challenge, participants were given an incomplete topology with 11 genes and asked to find three missing links in the model. In both challenges, a budget was provided to buy experimental data generated in silico with the model and mimicking the features of different common experimental techniques, such as microarrays and fluorescence microscopy. Data could be bought at any stage, allowing participants to implement an iterative loop of experiments and computation. Conclusions: A total of 19 teams participated in this competition. The results suggest that the combination of state-of-the-art parameter estimation and a varied set of experimental methods using a few datasets, mostly fluorescence imaging data, can accurately determine parameters of biochemical models of gene regulation. However, the task is considerably more difficult if the gene network topology is not completely defined, as in challenge 2. Importantly, we found that aggregating independent parameter predictions and network topology across submissions creates a solution that can be better than the one from the best-performing submission.
AB - Background: Accurate estimation of parameters of biochemical models is required to characterize the dynamics of molecular processes. This problem is intimately linked to identifying the most informative experiments for accomplishing such tasks. While significant progress has been made, effective experimental strategies for parameter identification and for distinguishing among alternative network topologies remain unclear. We approached these questions in an unbiased manner using a unique community-based approach in the context of the DREAM initiative (Dialogue for Reverse Engineering Assessment of Methods). We created an in silico test framework under which participants could probe a network with hidden parameters by requesting a range of experimental assays; results of these experiments were simulated according to a model of network dynamics only partially revealed to participants. Results: We proposed two challenges; in the first, participants were given the topology and underlying biochemical structure of a 9-gene regulatory network and were asked to determine its parameter values. In the second challenge, participants were given an incomplete topology with 11 genes and asked to find three missing links in the model. In both challenges, a budget was provided to buy experimental data generated in silico with the model and mimicking the features of different common experimental techniques, such as microarrays and fluorescence microscopy. Data could be bought at any stage, allowing participants to implement an iterative loop of experiments and computation. Conclusions: A total of 19 teams participated in this competition. The results suggest that the combination of state-of-the-art parameter estimation and a varied set of experimental methods using a few datasets, mostly fluorescence imaging data, can accurately determine parameters of biochemical models of gene regulation. However, the task is considerably more difficult if the gene network topology is not completely defined, as in challenge 2. Importantly, we found that aggregating independent parameter predictions and network topology across submissions creates a solution that can be better than the one from the best-performing submission.
UR - https://www.scopus.com/pages/publications/84893710009
U2 - 10.1186/1752-0509-8-13
DO - 10.1186/1752-0509-8-13
M3 - Article
C2 - 24507381
AN - SCOPUS:84893710009
SN - 1752-0509
VL - 8
JO - BMC Systems Biology
JF - BMC Systems Biology
IS - 1
M1 - 13
ER -