A Modular Workflow for Model Building, Analysis, and Parameter Estimation in Systems Biology and Neuroscience
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Published:2021-10-28
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Volume:
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ISSN:1539-2791
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Container-title:Neuroinformatics
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language:en
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Short-container-title:Neuroinform
Author:
Santos João P. G.ORCID, Pajo KadriORCID, Trpevski DanielORCID, Stepaniuk AndreyORCID, Eriksson OliviaORCID, Nair Anu G.ORCID, Keller DanielORCID, Hellgren Kotaleski JeanetteORCID, Kramer AndreiORCID
Abstract
AbstractNeuroscience incorporates knowledge from a range of scales, from single molecules to brain wide neural networks. Modeling is a valuable tool in understanding processes at a single scale or the interactions between two adjacent scales and researchers use a variety of different software tools in the model building and analysis process. Here we focus on the scale of biochemical pathways, which is one of the main objects of study in systems biology. While systems biology is among the more standardized fields, conversion between different model formats and interoperability between various tools is still somewhat problematic. To offer our take on tackling these shortcomings and by keeping in mind the FAIR (findability, accessibility, interoperability, reusability) data principles, we have developed a workflow for building and analyzing biochemical pathway models, using pre-existing tools that could be utilized for the storage and refinement of models in all phases of development. We have chosen the SBtab format which allows the storage of biochemical models and associated data in a single file and provides a human readable set of syntax rules. Next, we implemented custom-made MATLAB® scripts to perform parameter estimation and global sensitivity analysis used in model refinement. Additionally, we have developed a web-based application for biochemical models that allows simulations with either a network free solver or stochastic solvers and incorporating geometry. Finally, we illustrate convertibility and use of a biochemical model in a biophysically detailed single neuron model by running multiscale simulations in NEURON. Using this workflow, we can simulate the same model in three different simulators, with a smooth conversion between the different model formats, enhancing the characterization of different aspects of the model.
Funder
Royal Institute of Technology
Publisher
Springer Science and Business Media LLC
Subject
Information Systems,General Neuroscience,Software
Reference57 articles.
1. Afgan, E., Baker, D., van den Beek, M., Blankenberg, D., Bouvier, D., Čech, M., Chilton, J., Clements, D., Coraor, N., Eberhard, C., Grüning, B., Guerler, A., Hillman-Jackson, J., Von Kuster, G., Rasche, E., Soranzo, N., Turaga, N., Taylor, J., Nekrutenko, A., & Goecks, J. (2016). The Galaxy platform for accessible, reproducible and collaborative biomedical analyses: 2016 update. Nucleic Acids Research., 44(W1), W3–W10. 2. Akar, N. A., Cumming, B., Karakasis, V., Küsters, A., Klijn, W., Peyser, A., & Yates, S. (2019). Arbor – A morphologically-detailed neural network simulation library for contemporary high-performance computing architectures. 27th Euromicro International Conference on Parallel, Distributed and Network-Based Processing (PDP), Pavia, Italy, pp. 274–282. 3. Amsalem, O., Eyal, G., Rogozinski, N., Gevaert, M., Kumbhar, P., Schürmann, F., & Segev, I. (2020). An efficient analytical reduction of detailed nonlinear neuron models. Nature Communications, 11(1), 288. 4. Amstutz, P., Crusoe, M., Tijanić, N., Chapman, B., Chilton, J., Heuer, M., Kartashov, A., Leehr, D., Ménager, H., Nedeljkovich, M., Scales, M., Soiland-Reyes, S., & Stojanovic, L. (2016): Common Workflow Language, v1.0. Specification, Common Workflow Language working group. https://w3id.org/cwl/v1.0/ 5. Bhalla, U. S., & Iyengar, R. (1999). Emergent properties of networks of biological signaling pathways. Science, 283(5400), 381–387.
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