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1.
Microbiology (Reading) ; 163(6): 829-839, 2017 06.
Artigo em Inglês | MEDLINE | ID: mdl-28635591

RESUMO

Multiple interacting factors affect the performance of engineered biological systems in synthetic biology projects. The complexity of these biological systems means that experimental design should often be treated as a multiparametric optimization problem. However, the available methodologies are either impractical, due to a combinatorial explosion in the number of experiments to be performed, or are inaccessible to most experimentalists due to the lack of publicly available, user-friendly software. Although evolutionary algorithms may be employed as alternative approaches to optimize experimental design, the lack of simple-to-use software again restricts their use to specialist practitioners. In addition, the lack of subsidiary approaches to further investigate critical factors and their interactions prevents the full analysis and exploitation of the biotechnological system. We have addressed these problems and, here, provide a simple-to-use and freely available graphical user interface to empower a broad range of experimental biologists to employ complex evolutionary algorithms to optimize their experimental designs. Our approach exploits a Genetic Algorithm to discover the subspace containing the optimal combination of parameters, and Symbolic Regression to construct a model to evaluate the sensitivity of the experiment to each parameter under investigation. We demonstrate the utility of this method using an example in which the culture conditions for the microbial production of a bioactive human protein are optimized. CamOptimus is available through: (https://doi.org/10.17863/CAM.10257).


Assuntos
Biologia Computacional/métodos , Muramidase/biossíntese , Pichia/genética , Algoritmos , Evolução Biológica , Biotecnologia , Biologia Computacional/instrumentação , Humanos , Internet , Muramidase/genética , Pichia/metabolismo , Proteínas Recombinantes/biossíntese , Proteínas Recombinantes/genética , Software
3.
PLoS Comput Biol ; 10(2): e1003465, 2014 Feb.
Artigo em Inglês | MEDLINE | ID: mdl-24516375

RESUMO

We introduce a novel computational approach, CoReCo, for comparative metabolic reconstruction and provide genome-scale metabolic network models for 49 important fungal species. Leveraging on the exponential growth in sequenced genome availability, our method reconstructs genome-scale gapless metabolic networks simultaneously for a large number of species by integrating sequence data in a probabilistic framework. High reconstruction accuracy is demonstrated by comparisons to the well-curated Saccharomyces cerevisiae consensus model and large-scale knock-out experiments. Our comparative approach is particularly useful in scenarios where the quality of available sequence data is lacking, and when reconstructing evolutionary distant species. Moreover, the reconstructed networks are fully carbon mapped, allowing their use in 13C flux analysis. We demonstrate the functionality and usability of the reconstructed fungal models with computational steady-state biomass production experiment, as these fungi include some of the most important production organisms in industrial biotechnology. In contrast to many existing reconstruction techniques, only minimal manual effort is required before the reconstructed models are usable in flux balance experiments. CoReCo is available at http://esaskar.github.io/CoReCo/.


Assuntos
Fungos/genética , Fungos/metabolismo , Genoma Fúngico , Redes e Vias Metabólicas , Algoritmos , Biomassa , Biotecnologia , Biologia Computacional , Evolução Molecular , Fungos/classificação , Técnicas de Inativação de Genes , Microbiologia Industrial , Redes e Vias Metabólicas/genética , Modelos Biológicos , Modelos Genéticos , Modelos Estatísticos , Filogenia , Saccharomyces cerevisiae/genética , Saccharomyces cerevisiae/crescimento & desenvolvimento , Saccharomyces cerevisiae/metabolismo , Especificidade da Espécie
4.
PLoS One ; 11(7): e0159302, 2016.
Artigo em Inglês | MEDLINE | ID: mdl-27441920

RESUMO

In this paper we apply machine learning methods for predicting protein interactions in fungal secretion pathways. We assume an inter-species transfer setting, where training data is obtained from a single species and the objective is to predict protein interactions in other, related species. In our methodology, we combine several state of the art machine learning approaches, namely, multiple kernel learning (MKL), pairwise kernels and kernelized structured output prediction in the supervised graph inference framework. For MKL, we apply recently proposed centered kernel alignment and p-norm path following approaches to integrate several feature sets describing the proteins, demonstrating improved performance. For graph inference, we apply input-output kernel regression (IOKR) in supervised and semi-supervised modes as well as output kernel trees (OK3). In our experiments simulating increasing genetic distance, Input-Output Kernel Regression proved to be the most robust prediction approach. We also show that the MKL approaches improve the predictions compared to uniform combination of the kernels. We evaluate the methods on the task of predicting protein-protein-interactions in the secretion pathways in fungi, S.cerevisiae, baker's yeast, being the source, T. reesei being the target of the inter-species transfer learning. We identify completely novel candidate secretion proteins conserved in filamentous fungi. These proteins could contribute to their unique secretion capabilities.


Assuntos
Proteínas Fúngicas/metabolismo , Aprendizado de Máquina , Mapeamento de Interação de Proteínas , Saccharomyces cerevisiae/metabolismo , Via Secretória , Trichoderma/metabolismo , Algoritmos , Sequência de Aminoácidos , Bases de Dados de Proteínas , Evolução Molecular , Proteínas Fúngicas/química , Genoma Fúngico , Mapas de Interação de Proteínas , Curva ROC , Saccharomyces cerevisiae/genética
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