Degradation of cephalexin toxicity in non-clinical environment using zinc oxide nanoparticles synthesized in Momordica charantia extract; Numerical prediction models and deep learning classification

Antibiotics in nonclinical environments represent a serious risk to human health due to their role in the antimicrobial resistance. The present study aimed to optimise the detoxification of cephalexin (CFX) by the Momordica charantia extract zinc oxide nanoparticle catalyst (MCZnO NPs) as a functio...

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Main Authors: Adel Ali Al-Gheethi, Adel Ali Al-Gheethi, Rubashini A./P. Alagamalai, Rubashini A./P. Alagamalai, Efaq Ali Noman, Efaq Ali Noman, Radin Mohamed, Radin Maya Saphira, Ravi Naidu, Ravi Naidu
Format: Article
Language:English
Published: Elsevier 2023
Subjects:
Online Access:http://eprints.uthm.edu.my/9936/1/J15909_99be6716564b2881f55654cde3c629b8.pdf
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author Adel Ali Al-Gheethi, Adel Ali Al-Gheethi
Rubashini A./P. Alagamalai, Rubashini A./P. Alagamalai
Efaq Ali Noman, Efaq Ali Noman
Radin Mohamed, Radin Maya Saphira
Ravi Naidu, Ravi Naidu
author_facet Adel Ali Al-Gheethi, Adel Ali Al-Gheethi
Rubashini A./P. Alagamalai, Rubashini A./P. Alagamalai
Efaq Ali Noman, Efaq Ali Noman
Radin Mohamed, Radin Maya Saphira
Ravi Naidu, Ravi Naidu
author_sort Adel Ali Al-Gheethi, Adel Ali Al-Gheethi
collection UTHM
description Antibiotics in nonclinical environments represent a serious risk to human health due to their role in the antimicrobial resistance. The present study aimed to optimise the detoxification of cephalexin (CFX) by the Momordica charantia extract zinc oxide nanoparticle catalyst (MCZnO NPs) as a function of dosage of ZnO NPs, time, pH and CFX using the artificial neural network model (ANN). The effect was simulated using deep learning analysis to evaluate and explain the behaviour of CFX degradation. Interactions between these factors and the classification of the photocatalysis (low, medium, average, good and high) were analyzed using factor of principal component analysis (F, PCA), discriminant analysis (DA) and Agglomerative hierarchical clustering (AHC). MCZnO NPs have a white colour, spherical shape, non-agglomerated, smooth surface and size-wise they ranged from 50 to 100 nm. The ANN results indicated that 88.87% of CFX was degraded using 50 mg/L of MCZnO NP, 40 mg/L of CFX, at pH 9, and after 180 min. Simulation analysis revealed that MCZnO NPs were efficient in degrading CFX concentrations (up to 60 mg/L) with 100% removed depending on pH and time. The interaction between F1 and F2 was 94.59% at which pH (x2) and CFX (x4) factors exhibited a high correlation with a synergistic effect on CFX degradation, 20% of the degradation of CFX could be classified as a high percentage (> 90%). These findings reflected the role of deep learning analysis in understanding the behavior of CFX for the degradation process.
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spelling uthm.eprints-99362023-09-13T07:31:04Z http://eprints.uthm.edu.my/9936/ Degradation of cephalexin toxicity in non-clinical environment using zinc oxide nanoparticles synthesized in Momordica charantia extract; Numerical prediction models and deep learning classification Adel Ali Al-Gheethi, Adel Ali Al-Gheethi Rubashini A./P. Alagamalai, Rubashini A./P. Alagamalai Efaq Ali Noman, Efaq Ali Noman Radin Mohamed, Radin Maya Saphira Ravi Naidu, Ravi Naidu T Technology (General) Antibiotics in nonclinical environments represent a serious risk to human health due to their role in the antimicrobial resistance. The present study aimed to optimise the detoxification of cephalexin (CFX) by the Momordica charantia extract zinc oxide nanoparticle catalyst (MCZnO NPs) as a function of dosage of ZnO NPs, time, pH and CFX using the artificial neural network model (ANN). The effect was simulated using deep learning analysis to evaluate and explain the behaviour of CFX degradation. Interactions between these factors and the classification of the photocatalysis (low, medium, average, good and high) were analyzed using factor of principal component analysis (F, PCA), discriminant analysis (DA) and Agglomerative hierarchical clustering (AHC). MCZnO NPs have a white colour, spherical shape, non-agglomerated, smooth surface and size-wise they ranged from 50 to 100 nm. The ANN results indicated that 88.87% of CFX was degraded using 50 mg/L of MCZnO NP, 40 mg/L of CFX, at pH 9, and after 180 min. Simulation analysis revealed that MCZnO NPs were efficient in degrading CFX concentrations (up to 60 mg/L) with 100% removed depending on pH and time. The interaction between F1 and F2 was 94.59% at which pH (x2) and CFX (x4) factors exhibited a high correlation with a synergistic effect on CFX degradation, 20% of the degradation of CFX could be classified as a high percentage (> 90%). These findings reflected the role of deep learning analysis in understanding the behavior of CFX for the degradation process. Elsevier 2023 Article PeerReviewed text en http://eprints.uthm.edu.my/9936/1/J15909_99be6716564b2881f55654cde3c629b8.pdf Adel Ali Al-Gheethi, Adel Ali Al-Gheethi and Rubashini A./P. Alagamalai, Rubashini A./P. Alagamalai and Efaq Ali Noman, Efaq Ali Noman and Radin Mohamed, Radin Maya Saphira and Ravi Naidu, Ravi Naidu (2023) Degradation of cephalexin toxicity in non-clinical environment using zinc oxide nanoparticles synthesized in Momordica charantia extract; Numerical prediction models and deep learning classification. Chemical Engineering Research and Design, 192. pp. 180-193. https://doi.org/10.1016/j.cherd.2023.02.032
spellingShingle T Technology (General)
Adel Ali Al-Gheethi, Adel Ali Al-Gheethi
Rubashini A./P. Alagamalai, Rubashini A./P. Alagamalai
Efaq Ali Noman, Efaq Ali Noman
Radin Mohamed, Radin Maya Saphira
Ravi Naidu, Ravi Naidu
Degradation of cephalexin toxicity in non-clinical environment using zinc oxide nanoparticles synthesized in Momordica charantia extract; Numerical prediction models and deep learning classification
title Degradation of cephalexin toxicity in non-clinical environment using zinc oxide nanoparticles synthesized in Momordica charantia extract; Numerical prediction models and deep learning classification
title_full Degradation of cephalexin toxicity in non-clinical environment using zinc oxide nanoparticles synthesized in Momordica charantia extract; Numerical prediction models and deep learning classification
title_fullStr Degradation of cephalexin toxicity in non-clinical environment using zinc oxide nanoparticles synthesized in Momordica charantia extract; Numerical prediction models and deep learning classification
title_full_unstemmed Degradation of cephalexin toxicity in non-clinical environment using zinc oxide nanoparticles synthesized in Momordica charantia extract; Numerical prediction models and deep learning classification
title_short Degradation of cephalexin toxicity in non-clinical environment using zinc oxide nanoparticles synthesized in Momordica charantia extract; Numerical prediction models and deep learning classification
title_sort degradation of cephalexin toxicity in non clinical environment using zinc oxide nanoparticles synthesized in momordica charantia extract numerical prediction models and deep learning classification
topic T Technology (General)
url http://eprints.uthm.edu.my/9936/1/J15909_99be6716564b2881f55654cde3c629b8.pdf
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