Cargando…

A modeling study by response surface methodology and artificial neural network on culture parameters optimization for thermostable lipase production from a newly isolated thermophilic Geobacillus sp. strain ARM

BACKGROUND: Thermostable bacterial lipases occupy a place of prominence among biocatalysts owing to their novel, multifold applications and resistance to high temperature and other operational conditions. The capability of lipases to catalyze a variety of novel reactions in both aqueous and nonaqueo...

Descripción completa

Detalles Bibliográficos
Autores principales: Ebrahimpour, Afshin, Rahman, Raja Noor Zaliha Raja Abd, Ean Ch'ng, Diana Hooi, Basri, Mahiran, Salleh, Abu Bakar
Formato: Texto
Lenguaje:English
Publicado: BioMed Central 2008
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2637859/
https://www.ncbi.nlm.nih.gov/pubmed/19105837
http://dx.doi.org/10.1186/1472-6750-8-96
_version_ 1782164371368050688
author Ebrahimpour, Afshin
Rahman, Raja Noor Zaliha Raja Abd
Ean Ch'ng, Diana Hooi
Basri, Mahiran
Salleh, Abu Bakar
author_facet Ebrahimpour, Afshin
Rahman, Raja Noor Zaliha Raja Abd
Ean Ch'ng, Diana Hooi
Basri, Mahiran
Salleh, Abu Bakar
author_sort Ebrahimpour, Afshin
collection PubMed
description BACKGROUND: Thermostable bacterial lipases occupy a place of prominence among biocatalysts owing to their novel, multifold applications and resistance to high temperature and other operational conditions. The capability of lipases to catalyze a variety of novel reactions in both aqueous and nonaqueous media presents a fascinating field for research, creating interest to isolate novel lipase producers and optimize lipase production. The most important stages in a biological process are modeling and optimization to improve a system and increase the efficiency of the process without increasing the cost. RESULTS: Different production media were tested for lipase production by a newly isolated thermophilic Geobacillus sp. strain ARM (DSM 21496 = NCIMB 41583). The maximum production was obtained in the presence of peptone and yeast extract as organic nitrogen sources, olive oil as carbon source and lipase production inducer, sodium and calcium as metal ions, and gum arabic as emulsifier and lipase production inducer. The best models for optimization of culture parameters were achieved by multilayer full feedforward incremental back propagation network and modified response surface model using backward elimination, where the optimum condition was: growth temperature (52.3°C), medium volume (50 ml), inoculum size (1%), agitation rate (static condition), incubation period (24 h) and initial pH (5.8). The experimental lipase activity was 0.47 Uml(-1 )at optimum condition (4.7-fold increase), which compared well to the maximum predicted values by ANN (0.47 Uml(-1)) and RSM (0.476 Uml(-1)), whereas R(2 )and AAD were determined as 0.989 and 0.059% for ANN, and 0.95 and 0.078% for RSM respectively. CONCLUSION: Lipase production is the result of a synergistic combination of effective parameters interactions. These parameters are in equilibrium and the change of one parameter can be compensated by changes of other parameters to give the same results. Though both RSM and ANN models provided good quality predictions in this study, yet the ANN showed a clear superiority over RSM for both data fitting and estimation capabilities. On the other hand, ANN has the disadvantage of requiring large amounts of training data in comparison with RSM. This problem was solved by using statistical experimental design, to reduce the number of experiments.
format Text
id pubmed-2637859
institution National Center for Biotechnology Information
language English
publishDate 2008
publisher BioMed Central
record_format MEDLINE/PubMed
spelling pubmed-26378592009-02-10 A modeling study by response surface methodology and artificial neural network on culture parameters optimization for thermostable lipase production from a newly isolated thermophilic Geobacillus sp. strain ARM Ebrahimpour, Afshin Rahman, Raja Noor Zaliha Raja Abd Ean Ch'ng, Diana Hooi Basri, Mahiran Salleh, Abu Bakar BMC Biotechnol Research Article BACKGROUND: Thermostable bacterial lipases occupy a place of prominence among biocatalysts owing to their novel, multifold applications and resistance to high temperature and other operational conditions. The capability of lipases to catalyze a variety of novel reactions in both aqueous and nonaqueous media presents a fascinating field for research, creating interest to isolate novel lipase producers and optimize lipase production. The most important stages in a biological process are modeling and optimization to improve a system and increase the efficiency of the process without increasing the cost. RESULTS: Different production media were tested for lipase production by a newly isolated thermophilic Geobacillus sp. strain ARM (DSM 21496 = NCIMB 41583). The maximum production was obtained in the presence of peptone and yeast extract as organic nitrogen sources, olive oil as carbon source and lipase production inducer, sodium and calcium as metal ions, and gum arabic as emulsifier and lipase production inducer. The best models for optimization of culture parameters were achieved by multilayer full feedforward incremental back propagation network and modified response surface model using backward elimination, where the optimum condition was: growth temperature (52.3°C), medium volume (50 ml), inoculum size (1%), agitation rate (static condition), incubation period (24 h) and initial pH (5.8). The experimental lipase activity was 0.47 Uml(-1 )at optimum condition (4.7-fold increase), which compared well to the maximum predicted values by ANN (0.47 Uml(-1)) and RSM (0.476 Uml(-1)), whereas R(2 )and AAD were determined as 0.989 and 0.059% for ANN, and 0.95 and 0.078% for RSM respectively. CONCLUSION: Lipase production is the result of a synergistic combination of effective parameters interactions. These parameters are in equilibrium and the change of one parameter can be compensated by changes of other parameters to give the same results. Though both RSM and ANN models provided good quality predictions in this study, yet the ANN showed a clear superiority over RSM for both data fitting and estimation capabilities. On the other hand, ANN has the disadvantage of requiring large amounts of training data in comparison with RSM. This problem was solved by using statistical experimental design, to reduce the number of experiments. BioMed Central 2008-12-23 /pmc/articles/PMC2637859/ /pubmed/19105837 http://dx.doi.org/10.1186/1472-6750-8-96 Text en Copyright © 2008 Ebrahimpour et al; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License ( (http://creativecommons.org/licenses/by/2.0) ), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Ebrahimpour, Afshin
Rahman, Raja Noor Zaliha Raja Abd
Ean Ch'ng, Diana Hooi
Basri, Mahiran
Salleh, Abu Bakar
A modeling study by response surface methodology and artificial neural network on culture parameters optimization for thermostable lipase production from a newly isolated thermophilic Geobacillus sp. strain ARM
title A modeling study by response surface methodology and artificial neural network on culture parameters optimization for thermostable lipase production from a newly isolated thermophilic Geobacillus sp. strain ARM
title_full A modeling study by response surface methodology and artificial neural network on culture parameters optimization for thermostable lipase production from a newly isolated thermophilic Geobacillus sp. strain ARM
title_fullStr A modeling study by response surface methodology and artificial neural network on culture parameters optimization for thermostable lipase production from a newly isolated thermophilic Geobacillus sp. strain ARM
title_full_unstemmed A modeling study by response surface methodology and artificial neural network on culture parameters optimization for thermostable lipase production from a newly isolated thermophilic Geobacillus sp. strain ARM
title_short A modeling study by response surface methodology and artificial neural network on culture parameters optimization for thermostable lipase production from a newly isolated thermophilic Geobacillus sp. strain ARM
title_sort modeling study by response surface methodology and artificial neural network on culture parameters optimization for thermostable lipase production from a newly isolated thermophilic geobacillus sp. strain arm
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2637859/
https://www.ncbi.nlm.nih.gov/pubmed/19105837
http://dx.doi.org/10.1186/1472-6750-8-96
work_keys_str_mv AT ebrahimpourafshin amodelingstudybyresponsesurfacemethodologyandartificialneuralnetworkoncultureparametersoptimizationforthermostablelipaseproductionfromanewlyisolatedthermophilicgeobacillusspstrainarm
AT rahmanrajanoorzaliharajaabd amodelingstudybyresponsesurfacemethodologyandartificialneuralnetworkoncultureparametersoptimizationforthermostablelipaseproductionfromanewlyisolatedthermophilicgeobacillusspstrainarm
AT eanchngdianahooi amodelingstudybyresponsesurfacemethodologyandartificialneuralnetworkoncultureparametersoptimizationforthermostablelipaseproductionfromanewlyisolatedthermophilicgeobacillusspstrainarm
AT basrimahiran amodelingstudybyresponsesurfacemethodologyandartificialneuralnetworkoncultureparametersoptimizationforthermostablelipaseproductionfromanewlyisolatedthermophilicgeobacillusspstrainarm
AT sallehabubakar amodelingstudybyresponsesurfacemethodologyandartificialneuralnetworkoncultureparametersoptimizationforthermostablelipaseproductionfromanewlyisolatedthermophilicgeobacillusspstrainarm
AT ebrahimpourafshin modelingstudybyresponsesurfacemethodologyandartificialneuralnetworkoncultureparametersoptimizationforthermostablelipaseproductionfromanewlyisolatedthermophilicgeobacillusspstrainarm
AT rahmanrajanoorzaliharajaabd modelingstudybyresponsesurfacemethodologyandartificialneuralnetworkoncultureparametersoptimizationforthermostablelipaseproductionfromanewlyisolatedthermophilicgeobacillusspstrainarm
AT eanchngdianahooi modelingstudybyresponsesurfacemethodologyandartificialneuralnetworkoncultureparametersoptimizationforthermostablelipaseproductionfromanewlyisolatedthermophilicgeobacillusspstrainarm
AT basrimahiran modelingstudybyresponsesurfacemethodologyandartificialneuralnetworkoncultureparametersoptimizationforthermostablelipaseproductionfromanewlyisolatedthermophilicgeobacillusspstrainarm
AT sallehabubakar modelingstudybyresponsesurfacemethodologyandartificialneuralnetworkoncultureparametersoptimizationforthermostablelipaseproductionfromanewlyisolatedthermophilicgeobacillusspstrainarm