Correlation between response surface methodology and artificial neural network in the prediction of bioactive compounds of unripe Musa acuminata peel

The objective of this research is to study the correlation between response surface methodology (RSM) and artificial neural network (ANN) on the antioxidant activity and phenolic compound extracted from unripe Musa acuminata peel waste by microwave-assisted extraction (MAE). Distilled water was used...

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Main Authors: Farhan, Mohd Said, Gan, Jye Yi, Junaida, Sulaiman
Format: Article
Language:English
Published: Elsevier Ltd 2020
Subjects:
Online Access:https://umpir.ump.edu.my/id/eprint/29229/
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author Farhan, Mohd Said
Gan, Jye Yi
Junaida, Sulaiman
author_facet Farhan, Mohd Said
Gan, Jye Yi
Junaida, Sulaiman
author_sort Farhan, Mohd Said
building UMP Institutional Repository
collection Online Access
description The objective of this research is to study the correlation between response surface methodology (RSM) and artificial neural network (ANN) on the antioxidant activity and phenolic compound extracted from unripe Musa acuminata peel waste by microwave-assisted extraction (MAE). Distilled water was used as a substitute for organic solvents throughout the extraction process to obtain toxic-free polar bioactive compounds. DPPH free radical assay and Folin–Ciocalteu methods were used to measure the antioxidant activity and the total phenolic compounds (TPC), respectively. The optimal conditions were obtained at 650 W of microwave power, 110 s of extraction time, and 0.06 g/ml of solid-to-solvent ratio. The optimized MAE extraction yielded 76.81% and 418.46 mg GA/100 g extract of antioxidants and TPC, respectively. Overall, the solid-to-solvent ratio is the most significant variable, followed by the extraction time. Both the RSM and ANN models have delivered good quality prediction for antioxidants and TPC. Nonetheless, the ANN model showed higher predictive potential due to its higher coefficient of determination (R2ANNantioxidant = 0.9803, R2RSMantioxidant = 0.9742), lower root-mean-square error (RMSEANNantioxidant = 2.69, RMSERSMantioxidant = 3.07), and lower absolute average deviation (AADANNantioxidant = 3.38%, AADRSMantioxidant = 5.64%) for both the antioxidants and the TPC. The incorporation of ANN into the RSM model in this study has successfully countered the drawbacks of RSM
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spelling ump-292292025-09-26T03:36:21Z https://umpir.ump.edu.my/id/eprint/29229/ Correlation between response surface methodology and artificial neural network in the prediction of bioactive compounds of unripe Musa acuminata peel Farhan, Mohd Said Gan, Jye Yi Junaida, Sulaiman QA75 Electronic computers. Computer science TP Chemical technology The objective of this research is to study the correlation between response surface methodology (RSM) and artificial neural network (ANN) on the antioxidant activity and phenolic compound extracted from unripe Musa acuminata peel waste by microwave-assisted extraction (MAE). Distilled water was used as a substitute for organic solvents throughout the extraction process to obtain toxic-free polar bioactive compounds. DPPH free radical assay and Folin–Ciocalteu methods were used to measure the antioxidant activity and the total phenolic compounds (TPC), respectively. The optimal conditions were obtained at 650 W of microwave power, 110 s of extraction time, and 0.06 g/ml of solid-to-solvent ratio. The optimized MAE extraction yielded 76.81% and 418.46 mg GA/100 g extract of antioxidants and TPC, respectively. Overall, the solid-to-solvent ratio is the most significant variable, followed by the extraction time. Both the RSM and ANN models have delivered good quality prediction for antioxidants and TPC. Nonetheless, the ANN model showed higher predictive potential due to its higher coefficient of determination (R2ANNantioxidant = 0.9803, R2RSMantioxidant = 0.9742), lower root-mean-square error (RMSEANNantioxidant = 2.69, RMSERSMantioxidant = 3.07), and lower absolute average deviation (AADANNantioxidant = 3.38%, AADRSMantioxidant = 5.64%) for both the antioxidants and the TPC. The incorporation of ANN into the RSM model in this study has successfully countered the drawbacks of RSM Elsevier Ltd 2020 Article PeerReviewed pdf en cc_by_nc_nd_4 https://umpir.ump.edu.my/id/eprint/29229/1/5.%20Correlation%20between%20response%20surface%20methodology%20and%20artificial%20neural%20network.pdf Farhan, Mohd Said and Gan, Jye Yi and Junaida, Sulaiman (2020) Correlation between response surface methodology and artificial neural network in the prediction of bioactive compounds of unripe Musa acuminata peel. International Journal of Engineering Science and Technology, 23 (4). pp. 781-787. ISSN 2215-0986. (Published) https://doi.org/10.1016/j.jestch.2019.12.005 DOI: https://doi.org/10.1016/j.jestch.2019.12.005 DOI: https://doi.org/10.1016/j.jestch.2019.12.005
spellingShingle QA75 Electronic computers. Computer science
TP Chemical technology
Farhan, Mohd Said
Gan, Jye Yi
Junaida, Sulaiman
Correlation between response surface methodology and artificial neural network in the prediction of bioactive compounds of unripe Musa acuminata peel
title Correlation between response surface methodology and artificial neural network in the prediction of bioactive compounds of unripe Musa acuminata peel
title_full Correlation between response surface methodology and artificial neural network in the prediction of bioactive compounds of unripe Musa acuminata peel
title_fullStr Correlation between response surface methodology and artificial neural network in the prediction of bioactive compounds of unripe Musa acuminata peel
title_full_unstemmed Correlation between response surface methodology and artificial neural network in the prediction of bioactive compounds of unripe Musa acuminata peel
title_short Correlation between response surface methodology and artificial neural network in the prediction of bioactive compounds of unripe Musa acuminata peel
title_sort correlation between response surface methodology and artificial neural network in the prediction of bioactive compounds of unripe musa acuminata peel
topic QA75 Electronic computers. Computer science
TP Chemical technology
url https://umpir.ump.edu.my/id/eprint/29229/
https://umpir.ump.edu.my/id/eprint/29229/
https://umpir.ump.edu.my/id/eprint/29229/