Computational optimization of cell culture media for cultured meat production
One of the biggest challenges in making cultured meat accessible is reducing the cost of culture media. This project outlines two methods of reducing cost of media: 1) optimisation of concentration of components and 2) discovery of alternative components. Optimisation of culture media components wa...
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sg-ntu-dr.10356-1664332023-05-12T02:41:11Z Computational optimization of cell culture media for cultured meat production Reji, Rinta Pullamkottu - School of Biological Sciences Bioinformatics Institute Chiam Keng Hwee chiamkh@bii.a-star.edu.sg Science::Biological sciences One of the biggest challenges in making cultured meat accessible is reducing the cost of culture media. This project outlines two methods of reducing cost of media: 1) optimisation of concentration of components and 2) discovery of alternative components. Optimisation of culture media components was modelled as a blackbox optimisation problem with test functions to replace in vitro optimisation. A comparison of algorithmic methods for media optimisation was done at low, medium and high dimension and found that the best performing method was surrogate-based optimisation with truncated differential evolution as the acquisition method. This method is currently under-utilised and thus could improve media optimisation. Protein hydrolysates are viable substitutes for serum in culture media. To classify potentially useful hydrolysates, a structure-based prediction graph convolutional network (GCN) was trained on predicted structural information from AlphaFold2. ESM-2 was trained on amino acid sequences for masked residue prediction in order to extract residue-level features to be embedded into the graphical input. Even though the GCN (without residue-level features) did not perform the classification task well, ESM-2 was able to achieve a phenomenal performance with ROC-AUC of 0.94. ESM-2 is deep enough to capture protein function and can be used to classify serum-equivalent hydrolysates. Bachelor of Science in Biomedical Sciences 2023-04-28T07:12:45Z 2023-04-28T07:12:45Z 2023 Final Year Project (FYP) Reji, R. P. (2023). Computational optimization of cell culture media for cultured meat production. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/166433 https://hdl.handle.net/10356/166433 en application/pdf Nanyang Technological University |
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Science::Biological sciences Reji, Rinta Pullamkottu Computational optimization of cell culture media for cultured meat production |
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One of the biggest challenges in making cultured meat accessible is reducing the cost of culture media. This project outlines two methods of reducing cost of media: 1) optimisation of concentration of components and 2) discovery of alternative components.
Optimisation of culture media components was modelled as a blackbox optimisation problem with test functions to replace in vitro optimisation. A comparison of algorithmic methods for media optimisation was done at low, medium and high dimension and found that the best performing method was surrogate-based optimisation with truncated differential evolution as the acquisition method. This method is currently under-utilised and thus could improve media optimisation.
Protein hydrolysates are viable substitutes for serum in culture media. To classify potentially useful hydrolysates, a structure-based prediction graph convolutional network (GCN) was trained on predicted structural information from AlphaFold2. ESM-2 was trained on amino acid sequences for masked residue prediction in order to extract residue-level features to be embedded into the graphical input. Even though the GCN (without residue-level features) did not perform the classification task well, ESM-2 was able to achieve a phenomenal performance with ROC-AUC of 0.94. ESM-2 is deep enough to capture protein function and can be used to classify serum-equivalent hydrolysates. |
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- Reji, Rinta Pullamkottu |
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Final Year Project |
author |
Reji, Rinta Pullamkottu |
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Reji, Rinta Pullamkottu |
title |
Computational optimization of cell culture media for cultured meat production |
title_short |
Computational optimization of cell culture media for cultured meat production |
title_full |
Computational optimization of cell culture media for cultured meat production |
title_fullStr |
Computational optimization of cell culture media for cultured meat production |
title_full_unstemmed |
Computational optimization of cell culture media for cultured meat production |
title_sort |
computational optimization of cell culture media for cultured meat production |
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Nanyang Technological University |
publishDate |
2023 |
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https://hdl.handle.net/10356/166433 |
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