Deep learning enhanced the state-of-the-art methods in genomics allows it to be used in analysing the biological data with high prediction. The training process of neural network with several hidden layers which has been facilitated by deep learning has been subjected into increased interest in achieving remarkable results in various fields. Thus, the extraction of bioprocess production can be implemented by pathway prediction in genomic metabolic network in eschericia coli. As metabolic engineering involves the manipulation of genes which have the potential to increase the yield of metabolite production. A mathematical model of this network is the foundation for the development of computational procedure that directs genetic manipulations ...
A generalized regression neural network with external feedback was used to predict plasmid productio...
A generalized regression neural network with external feedback was used to predict plasmid productio...
In bioprocess development, the need for optimization is to achieve improvements in the productivity ...
Deep learning enhanced the state-of-the-art methods in genomics allows it to be used in analysing th...
Exploiting the natural metabolic abilities of microorganisms for the production of bioactive compoun...
Since artificial neural networks represent a commercially attractive tool for process modelling and ...
Abstract In microbial manufacturing, yeast extract is an important component of the growth media. Th...
Metabolic models can estimate intrinsic product yields for microbial factories, but such frameworks ...
Machine learning through artificial neural networks have emerged as vital tools to predict chemical ...
In this work, the biomass growth and the TaqI endonuclease production by recombinant Esherichia coli...
Celem pracy była próba zastosowanie sieci neuronowych o konstrukcji wielowarstwowej do predykcji opt...
Metabolic models can estimate intrinsic product yields for microbial factories, but such frameworks ...
In industrial bioprocesses, microbial metabolism dictates the product yields, and therefore, our cap...
Artículo de publicación ISIThe production of 75% of the current drug molecules and 35% of all chemic...
Abstract The adoption of deep learning techniques in genomics has been hindered by the difficulty of...
A generalized regression neural network with external feedback was used to predict plasmid productio...
A generalized regression neural network with external feedback was used to predict plasmid productio...
In bioprocess development, the need for optimization is to achieve improvements in the productivity ...
Deep learning enhanced the state-of-the-art methods in genomics allows it to be used in analysing th...
Exploiting the natural metabolic abilities of microorganisms for the production of bioactive compoun...
Since artificial neural networks represent a commercially attractive tool for process modelling and ...
Abstract In microbial manufacturing, yeast extract is an important component of the growth media. Th...
Metabolic models can estimate intrinsic product yields for microbial factories, but such frameworks ...
Machine learning through artificial neural networks have emerged as vital tools to predict chemical ...
In this work, the biomass growth and the TaqI endonuclease production by recombinant Esherichia coli...
Celem pracy była próba zastosowanie sieci neuronowych o konstrukcji wielowarstwowej do predykcji opt...
Metabolic models can estimate intrinsic product yields for microbial factories, but such frameworks ...
In industrial bioprocesses, microbial metabolism dictates the product yields, and therefore, our cap...
Artículo de publicación ISIThe production of 75% of the current drug molecules and 35% of all chemic...
Abstract The adoption of deep learning techniques in genomics has been hindered by the difficulty of...
A generalized regression neural network with external feedback was used to predict plasmid productio...
A generalized regression neural network with external feedback was used to predict plasmid productio...
In bioprocess development, the need for optimization is to achieve improvements in the productivity ...