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Comparison of the estimation capabilities of response surface methodology and artificial neural network for the optimization of recombinant lipase production by E. coli BL21

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논문

Comparison of the estimation capabilities of response surface methodology and artificial neural network for the optimization of recombinant lipase production by E. coli BL21

학술지

Journal of industrial microbiology & biotechnology

저자명

Nelofer, Rubina; Ramanan, Ramakrishnan Nagasundara; Rahman, Raja Noor Zaliha Raja Abd; Basri, Mahiran; Ariff, Arbakariya B

초록

<P><B>Abstract</B><P>Response surface methodology (RSM) and artificial neural network (ANN) were used to optimize the effect of four independent variables, viz. glucose, sodium chloride (NaCl), temperature and induction time, on lipase production by a recombinant Escherichia coli BL21. The optimization and prediction capabilities of RSM and ANN were then compared. RSM predicted the dependent variable with a good coefficient of correlation determination (R2) and adjusted R2 values for the model. Although the R2 value showed a good fit, absolute average deviation (AAD) and root mean square error (RMSE) values did not support the accuracy of the model and this was due to the inferiority in predicting the values towards the edges of the design points. On the other hand, ANN-predicted values were closer to the observed values with better R2, adjusted R2, AAD and RMSE values and this was due to the capability of predicting the values throughout the selected range of the design points. Similar to RSM, ANN could also be used to rank the effect of variables. However, ANN could not predict the interactive effect between the variables as performed by RSM. The optimum levels for glucose, NaCl, temperature and induction time predicted by RSM are 32 g/L, 5 g/L, 32&deg;C and 2.12 h, and those by ANN are 25 g/L, 3 g/L, 30&deg;C and 2 h, respectively. The ANN-predicted optimal levels gave higher lipase activity (55.8 IU/mL) as compared to RSM-predicted levels (50.2 IU/mL) and the predicted lipase activity was also closer to the observed data at these levels, suggesting that ANN is a better optimization method than RSM for lipase production by the recombinant strain.</P></P>

발행연도

2012

발행기관

Oxford University Press

ISSN

1367-5435

ISSN

1476-5535

39

2

페이지

pp.243-254

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1 2023-12-11

논문; 2012-12-31

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