Pomegranate (Punica granatum L.) peel is a potential source of polyphenols known for their activity against foodborne pathogen bacteria. In this study, the effects of pomegranate peel extraction time (10-60âmin), agitation speed (120-180ârpm), and solvent/solid ratio (10-30) on phytochemical content and antibacterial activity were determined. Response surface methodology (RSM) and artificial neural network (ANN) methods were used, respectively, for multiresponse optimization and predictive modelling. Compared with the original conditions, the total phenolic content (TPC), the total flavonoid content (TFC), and the total anthocyanin content (TAC) increased by 56.22, 63.47, and 64.6%, respectively. Defined by minimal inhibitory concentration (MIC), the maximum of antibacterial activity was higher than that from preoptimized conditions. With an extraction time of 11âmin, an agitation speed 125ârpm, and a solvent/solid ratio of 12, anti-S. aureus activity remarkably decreased from 1.56 to 0.171âmg/mL. Model comparisons through the coefficient of determination (R (2)) and mean square error (MSE) showed that ANN models were better than the RSM model in predicting the photochemical content and antibacterial activity. To explore the mode of action of the pomegranate peel extract (PPE) at optimal conditions against S. aureus and S. enterica, Chapman and Xylose Lysine Deoxycholate broth media were artificially contaminated at 10(4)âCFU/mL. By using statistical approach, linear (ANOVA), and general (ANCOVA) models, PPE was demonstrated to control the two dominant foodborne pathogens by suppressing bacterial growth.
Multiresponse Optimization of Pomegranate Peel Extraction by Statistical versus Artificial Intelligence: Predictive Approach for Foodborne Bacterial Pathogen Inactivation.
利用统计学和人工智能对石榴皮提取进行多响应优化:食源性细菌病原体灭活的预测方法
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作者:Fourati Mariam, Smaoui Slim, Ennouri Karim, Ben Hlima Hajer, Elhadef Khaoula, Chakchouk-Mtibaa Ahlem, Sellem Imen, Mellouli Lotfi
| 期刊: | Evidence-Based Complementary and Alternative Medicine | 影响因子: | 0.000 |
| 时间: | 2019 | 起止号: | 2019 Oct 13; 2019:1542615 |
| doi: | 10.1155/2019/1542615 | 研究方向: | 人工智能 |
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