Machine learning aided experimental approach for evaluating the growth kinetics of Candida antarctica for lipase production

Lipase derived from Candida antractica is the most widely used enzyme for catalyzing various reactions. This paper reports the growth and enzyme kinetics of Candida antarctica MTCC-2706 for lipase production, which is one of the fundamental steps in bioprocess design, optimization, and scale-up stud...

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Main Authors: Sarmah, Nipon, Mehtab, Vazida, Bugata, Pratyusha, Tardio, James, Bhargava, Suresh, Parthasarathy, Rajarathinam, Chenna, Sumana
Format: Other/Unknown Material
Language:unknown
Published: Authorea, Inc. 2024
Subjects:
Online Access:http://dx.doi.org/10.22541/au.170670211.12836928/v1
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spelling crwinnower:10.22541/au.170670211.12836928/v1 2024-06-02T07:56:22+00:00 Machine learning aided experimental approach for evaluating the growth kinetics of Candida antarctica for lipase production Sarmah, Nipon Mehtab, Vazida Bugata, Pratyusha Tardio, James Bhargava, Suresh Parthasarathy, Rajarathinam Chenna, Sumana 2024 http://dx.doi.org/10.22541/au.170670211.12836928/v1 unknown Authorea, Inc. posted-content 2024 crwinnower https://doi.org/10.22541/au.170670211.12836928/v1 2024-05-07T14:19:16Z Lipase derived from Candida antractica is the most widely used enzyme for catalyzing various reactions. This paper reports the growth and enzyme kinetics of Candida antarctica MTCC-2706 for lipase production, which is one of the fundamental steps in bioprocess design, optimization, and scale-up studies. A hybrid machine learning (ML) aided experimental approach is proposed here to evaluate growth kinetics in which, different ML models were built to predict the growth curves at various substrate concentrations using a substantially smaller set of experimental samples. Comparative assessment of model performances revealed the superiority of gradient boosting regression (GBR) in predicting the growth curves. GBR-based growth kinetics was found to be fitted well with Monod’s model. Further, the activity and enzyme kinetics of lipase produced was investigated by considering the hydrolysis of p-nitrophenyl butyrate. The maximum lipase activity resulted was 24.07 U at 44 hrs. The deviation and R2 values of Monod’s and Michaelis-Menten’s models were 1.4% and 2.25%, and 0.96 and 0.99, respectively. The proposed ML-based approach is found to be efficient in predicting the growth kinetics with reduced experimental effort, time and resources (~50%) as compared to conventional method and its application can be extended to any other microbial processes. Other/Unknown Material Antarc* Antarctica The Winnower
institution Open Polar
collection The Winnower
op_collection_id crwinnower
language unknown
description Lipase derived from Candida antractica is the most widely used enzyme for catalyzing various reactions. This paper reports the growth and enzyme kinetics of Candida antarctica MTCC-2706 for lipase production, which is one of the fundamental steps in bioprocess design, optimization, and scale-up studies. A hybrid machine learning (ML) aided experimental approach is proposed here to evaluate growth kinetics in which, different ML models were built to predict the growth curves at various substrate concentrations using a substantially smaller set of experimental samples. Comparative assessment of model performances revealed the superiority of gradient boosting regression (GBR) in predicting the growth curves. GBR-based growth kinetics was found to be fitted well with Monod’s model. Further, the activity and enzyme kinetics of lipase produced was investigated by considering the hydrolysis of p-nitrophenyl butyrate. The maximum lipase activity resulted was 24.07 U at 44 hrs. The deviation and R2 values of Monod’s and Michaelis-Menten’s models were 1.4% and 2.25%, and 0.96 and 0.99, respectively. The proposed ML-based approach is found to be efficient in predicting the growth kinetics with reduced experimental effort, time and resources (~50%) as compared to conventional method and its application can be extended to any other microbial processes.
format Other/Unknown Material
author Sarmah, Nipon
Mehtab, Vazida
Bugata, Pratyusha
Tardio, James
Bhargava, Suresh
Parthasarathy, Rajarathinam
Chenna, Sumana
spellingShingle Sarmah, Nipon
Mehtab, Vazida
Bugata, Pratyusha
Tardio, James
Bhargava, Suresh
Parthasarathy, Rajarathinam
Chenna, Sumana
Machine learning aided experimental approach for evaluating the growth kinetics of Candida antarctica for lipase production
author_facet Sarmah, Nipon
Mehtab, Vazida
Bugata, Pratyusha
Tardio, James
Bhargava, Suresh
Parthasarathy, Rajarathinam
Chenna, Sumana
author_sort Sarmah, Nipon
title Machine learning aided experimental approach for evaluating the growth kinetics of Candida antarctica for lipase production
title_short Machine learning aided experimental approach for evaluating the growth kinetics of Candida antarctica for lipase production
title_full Machine learning aided experimental approach for evaluating the growth kinetics of Candida antarctica for lipase production
title_fullStr Machine learning aided experimental approach for evaluating the growth kinetics of Candida antarctica for lipase production
title_full_unstemmed Machine learning aided experimental approach for evaluating the growth kinetics of Candida antarctica for lipase production
title_sort machine learning aided experimental approach for evaluating the growth kinetics of candida antarctica for lipase production
publisher Authorea, Inc.
publishDate 2024
url http://dx.doi.org/10.22541/au.170670211.12836928/v1
genre Antarc*
Antarctica
genre_facet Antarc*
Antarctica
op_doi https://doi.org/10.22541/au.170670211.12836928/v1
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