Abstract In microbial manufacturing, yeast extract is an important component of the growth media. The production of heterologous proteins often varies because of the yeast extract composition. To identify why this reduces protein production, the effects of yeast extract composition on the growth and green fluorescent protein (GFP) production of engineered Escherichia coli were investigated using a deep neural network (DNN)‐mediated metabolomics approach. We observed 205 peaks from the various yeast extracts using gas chromatography‐mass spectrometry. Principal component analyses of the peaks identified at least three different clusters. Using 20 different compositions of yeast extract in M9 media, the yields of cells and GFP in the yeast ex...
Facing boosting ability to construct combinatorial metabolic pathways, how to search the metabolic s...
The use of yeast starter cultures consisting of a blend of Saccharomyces cerevisiae and non-Saccharo...
Metabolic modeling and machine learning are key components in the emerging next generation of system...
Natural media are often used for various commercial bioprocesses by manufacturers to cut raw materia...
In this work, the biomass growth and the TaqI endonuclease production by recombinant Esherichia coli...
Metabolic models can estimate intrinsic product yields for microbial factories, but such frameworks ...
Deep learning enhanced the state-of-the-art methods in genomics allows it to be used in analysing th...
Metabolic models can estimate intrinsic product yields for microbial factories, but such frameworks ...
Knowledge mining from synthetic biology journal articles for machine learning (ML) applications is a...
Thesis (Master's)--University of Washington, 2020Protein engineering has unlocked potential for the ...
Deep learning enhanced the state-of-the-art methods in genomics allows it to be used in analysing th...
In combination with advanced mechanistic modeling and the generation of high-quality multi-dimension...
Genome scale modeling (GSM) predicts the performance of microbial workhorses and helps identify bene...
An Artificial Neural Network (ANN) was engaged to optimize the effect of β-Cyclodextrin on the produ...
Abstract:-. Present work is oriented to study of processes of microbial ecology by developing and im...
Facing boosting ability to construct combinatorial metabolic pathways, how to search the metabolic s...
The use of yeast starter cultures consisting of a blend of Saccharomyces cerevisiae and non-Saccharo...
Metabolic modeling and machine learning are key components in the emerging next generation of system...
Natural media are often used for various commercial bioprocesses by manufacturers to cut raw materia...
In this work, the biomass growth and the TaqI endonuclease production by recombinant Esherichia coli...
Metabolic models can estimate intrinsic product yields for microbial factories, but such frameworks ...
Deep learning enhanced the state-of-the-art methods in genomics allows it to be used in analysing th...
Metabolic models can estimate intrinsic product yields for microbial factories, but such frameworks ...
Knowledge mining from synthetic biology journal articles for machine learning (ML) applications is a...
Thesis (Master's)--University of Washington, 2020Protein engineering has unlocked potential for the ...
Deep learning enhanced the state-of-the-art methods in genomics allows it to be used in analysing th...
In combination with advanced mechanistic modeling and the generation of high-quality multi-dimension...
Genome scale modeling (GSM) predicts the performance of microbial workhorses and helps identify bene...
An Artificial Neural Network (ANN) was engaged to optimize the effect of β-Cyclodextrin on the produ...
Abstract:-. Present work is oriented to study of processes of microbial ecology by developing and im...
Facing boosting ability to construct combinatorial metabolic pathways, how to search the metabolic s...
The use of yeast starter cultures consisting of a blend of Saccharomyces cerevisiae and non-Saccharo...
Metabolic modeling and machine learning are key components in the emerging next generation of system...