A generalized regression neural network with external feedback was used to predict plasmid production in a fed-batch cultivation of recombinant Escherichia coli. The neural network was built out of the experimental data obtained on a few cultivations, of which the general strategy was based on an initial batch phase followed by an exponential feeding phase. The different cultivation conditions used resulted in significant differences in bacterial growth and plasmid production. The obtained model allows estimation of the experimental outputs (biomass, glucose, acetate and plasmid) based on the bioreactor starting conditions and the following on-line inputs: feeding rate, dissolved oxygen concentration and bioreactor stirring speed. Therefore...
Escherichia coli has been the organism of choice for the production of many recombinant proteins wit...
In this work, Evolutionary Algorithms (EAs) are used to control a recombinant bacterial fed-batch fe...
In this work a hybrid neural modelling methodology, which combines mass balance equations with funct...
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 this work, the biomass growth and the TaqI endonuclease production by recombinant Esherichia coli...
Since artificial neural networks represent a commercially attractive tool for process modelling and ...
Production of recombinant Oryza sativa non-symbiotic hemoglobin 1 (OsHb1) by Escherichia coli was ma...
In this chapter we describe a software tool for modelling fermentation processes, the FerMoANN, whic...
Publicado em "2nd International Workshop on Practical Applications of Computational Biology and Bioi...
Two optimisation techniques for the fed-batch cultivation of high cell density Escherichia coli prod...
An overall model describing the dynamic behavior of fed-batch E. coli processes for protein producti...
Two optimisation techniques for the fed-batch cultivation of high cell density Escherichia coli prod...
This work aimed to compare the predictive capacity of empirical models, based on the uniform design ...
Deep learning enhanced the state-of-the-art methods in genomics allows it to be used in analysing th...
Escherichia coli has been the organism of choice for the production of many recombinant proteins wit...
In this work, Evolutionary Algorithms (EAs) are used to control a recombinant bacterial fed-batch fe...
In this work a hybrid neural modelling methodology, which combines mass balance equations with funct...
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 this work, the biomass growth and the TaqI endonuclease production by recombinant Esherichia coli...
Since artificial neural networks represent a commercially attractive tool for process modelling and ...
Production of recombinant Oryza sativa non-symbiotic hemoglobin 1 (OsHb1) by Escherichia coli was ma...
In this chapter we describe a software tool for modelling fermentation processes, the FerMoANN, whic...
Publicado em "2nd International Workshop on Practical Applications of Computational Biology and Bioi...
Two optimisation techniques for the fed-batch cultivation of high cell density Escherichia coli prod...
An overall model describing the dynamic behavior of fed-batch E. coli processes for protein producti...
Two optimisation techniques for the fed-batch cultivation of high cell density Escherichia coli prod...
This work aimed to compare the predictive capacity of empirical models, based on the uniform design ...
Deep learning enhanced the state-of-the-art methods in genomics allows it to be used in analysing th...
Escherichia coli has been the organism of choice for the production of many recombinant proteins wit...
In this work, Evolutionary Algorithms (EAs) are used to control a recombinant bacterial fed-batch fe...
In this work a hybrid neural modelling methodology, which combines mass balance equations with funct...