On the effects of alternative optima in context-specific metabolic model predictions.

The integration of experimental data into genome-scale metabolic models can greatly improve flux predictions. This is achieved by restricting predictions to a more realistic context-specific domain, like a particular cell or tissue type. Several computational approaches to integrate data have been p...

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Main Authors: Semidán Robaina-Estévez, Zoran Nikoloski
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-05-01
Series:PLoS Computational Biology
Online Access:https://doi.org/10.1371/journal.pcbi.1005568
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spelling doaj-e46667f4d86e4811aa749972d5f741332021-04-21T15:02:02ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582017-05-01135e100556810.1371/journal.pcbi.1005568On the effects of alternative optima in context-specific metabolic model predictions.Semidán Robaina-EstévezZoran NikoloskiThe integration of experimental data into genome-scale metabolic models can greatly improve flux predictions. This is achieved by restricting predictions to a more realistic context-specific domain, like a particular cell or tissue type. Several computational approaches to integrate data have been proposed-generally obtaining context-specific (sub)models or flux distributions. However, these approaches may lead to a multitude of equally valid but potentially different models or flux distributions, due to possible alternative optima in the underlying optimization problems. Although this issue introduces ambiguity in context-specific predictions, it has not been generally recognized, especially in the case of model reconstructions. In this study, we analyze the impact of alternative optima in four state-of-the-art context-specific data integration approaches, providing both flux distributions and/or metabolic models. To this end, we present three computational methods and apply them to two particular case studies: leaf-specific predictions from the integration of gene expression data in a metabolic model of Arabidopsis thaliana, and liver-specific reconstructions derived from a human model with various experimental data sources. The application of these methods allows us to obtain the following results: (i) we sample the space of alternative flux distributions in the leaf- and the liver-specific case and quantify the ambiguity of the predictions. In addition, we show how the inclusion of ℓ1-regularization during data integration reduces the ambiguity in both cases. (ii) We generate sets of alternative leaf- and liver-specific models that are optimal to each one of the evaluated model reconstruction approaches. We demonstrate that alternative models of the same context contain a marked fraction of disparate reactions. Further, we show that a careful balance between model sparsity and metabolic functionality helps in reducing the discrepancies between alternative models. Finally, our findings indicate that alternative optima must be taken into account for rendering the context-specific metabolic model predictions less ambiguous.https://doi.org/10.1371/journal.pcbi.1005568
collection DOAJ
language English
format Article
sources DOAJ
author Semidán Robaina-Estévez
Zoran Nikoloski
spellingShingle Semidán Robaina-Estévez
Zoran Nikoloski
On the effects of alternative optima in context-specific metabolic model predictions.
PLoS Computational Biology
author_facet Semidán Robaina-Estévez
Zoran Nikoloski
author_sort Semidán Robaina-Estévez
title On the effects of alternative optima in context-specific metabolic model predictions.
title_short On the effects of alternative optima in context-specific metabolic model predictions.
title_full On the effects of alternative optima in context-specific metabolic model predictions.
title_fullStr On the effects of alternative optima in context-specific metabolic model predictions.
title_full_unstemmed On the effects of alternative optima in context-specific metabolic model predictions.
title_sort on the effects of alternative optima in context-specific metabolic model predictions.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2017-05-01
description The integration of experimental data into genome-scale metabolic models can greatly improve flux predictions. This is achieved by restricting predictions to a more realistic context-specific domain, like a particular cell or tissue type. Several computational approaches to integrate data have been proposed-generally obtaining context-specific (sub)models or flux distributions. However, these approaches may lead to a multitude of equally valid but potentially different models or flux distributions, due to possible alternative optima in the underlying optimization problems. Although this issue introduces ambiguity in context-specific predictions, it has not been generally recognized, especially in the case of model reconstructions. In this study, we analyze the impact of alternative optima in four state-of-the-art context-specific data integration approaches, providing both flux distributions and/or metabolic models. To this end, we present three computational methods and apply them to two particular case studies: leaf-specific predictions from the integration of gene expression data in a metabolic model of Arabidopsis thaliana, and liver-specific reconstructions derived from a human model with various experimental data sources. The application of these methods allows us to obtain the following results: (i) we sample the space of alternative flux distributions in the leaf- and the liver-specific case and quantify the ambiguity of the predictions. In addition, we show how the inclusion of ℓ1-regularization during data integration reduces the ambiguity in both cases. (ii) We generate sets of alternative leaf- and liver-specific models that are optimal to each one of the evaluated model reconstruction approaches. We demonstrate that alternative models of the same context contain a marked fraction of disparate reactions. Further, we show that a careful balance between model sparsity and metabolic functionality helps in reducing the discrepancies between alternative models. Finally, our findings indicate that alternative optima must be taken into account for rendering the context-specific metabolic model predictions less ambiguous.
url https://doi.org/10.1371/journal.pcbi.1005568
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