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基于统计学与人工智能的石榴皮提取物多响应优化:食源性病原体灭活的预测方法

Multiresponse Optimization of Pomegranate Peel Extraction by Statistical versus Artificial Intelligence: Predictive Approach for Foodborne Bacterial Pathogen Inactivation.

作者信息

Fourati Mariam, Smaoui Slim, Ennouri Karim, Ben Hlima Hajer, Elhadef Khaoula, Chakchouk-Mtibaa Ahlem, Sellem Imen, Mellouli Lotfi

机构信息

Laboratory of Microorganisms and Biomolecules, Center of Biotechnology of Sfax, University of Sfax, Road of Sidi Mansour Km 6, P. O. Box 1177, Sfax 3018, Tunisia.

Algae Biotechnology Unit, Biological Engineering Department, National School of Engineers of Sfax, University of Sfax, Sfax 3038, Tunisia.

出版信息

Evid Based Complement Alternat Med. 2019 Oct 13;2019:1542615. doi: 10.1155/2019/1542615. eCollection 2019.

Abstract

Pomegranate ( 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 (10-60 min), agitation speed (120-180 rpm), 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 11 min, an agitation speed 125 rpm, and a solvent/solid ratio of 12, anti-. activity remarkably decreased from 1.56 to 0.171 mg/mL. Model comparisons through the coefficient of determination ( ) 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 and , Chapman and Xylose Lysine Deoxycholate broth media were artificially contaminated at 10 CFU/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.

摘要

石榴(L.)皮是多酚的潜在来源,其因对食源性病原体细菌具有活性而闻名。在本研究中,测定了石榴皮提取时间(10 - 60分钟)、搅拌速度(120 - 180转/分钟)和溶剂/固体比(10 - 30)对植物化学成分和抗菌活性的影响。分别采用响应面法(RSM)和人工神经网络(ANN)方法进行多响应优化和预测建模。与原始条件相比,总酚含量(TPC)、总黄酮含量(TFC)和总花青素含量(TAC)分别增加了56.22%、63.47%和64.6%。以最低抑菌浓度(MIC)定义,抗菌活性的最大值高于优化前条件下的活性。在提取时间为11分钟、搅拌速度为125转/分钟和溶剂/固体比为12的条件下,抗……活性从1.56显著降低至0.171毫克/毫升。通过决定系数( )和均方误差(MSE)进行的模型比较表明,ANN模型在预测光化学含量和抗菌活性方面优于RSM模型。为了探究石榴皮提取物(PPE)在最佳条件下对……和……的作用方式,在查普曼培养基和木糖赖氨酸脱氧胆酸盐肉汤培养基中人工污染至10 CFU/毫升。通过使用统计方法、线性(方差分析)和一般(协方差分析)模型,证明PPE通过抑制细菌生长来控制两种主要的食源性病原体。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7746/6815538/07458a793009/ECAM2019-1542615.001.jpg

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