使用人工智能高光谱显微镜检测低水平抗菌素诱导的活的但不可培养的大肠杆菌。

IF 2.1 4区 农林科学 Q3 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Journal of food protection Pub Date : 2025-01-02 Epub Date: 2024-12-09 DOI:10.1016/j.jfp.2024.100430
MeiLi Papa, Aarham Wasit, Justin Pecora, Teresa M Bergholz, Jiyoon Yi
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引用次数: 0

摘要

快速检测细菌病原体对食品安全和公共卫生至关重要,但细菌可以在亚致死压力下(如抗菌药物残留)进入一种有活力但不可培养(VBNC)的状态来逃避检测。这些细菌保持活性,但没有大量富集,用标准的基于培养的方法检测不到,需要先进的检测方法。本研究开发了一种支持人工智能的高光谱显微镜成像(HMI)框架,用于在低剂量抗菌素下快速检测VBNC。目的是:i)通过暴露于选定的抗菌应激源诱导大肠杆菌K-12的VBNC状态,ii)获得捕获VBNC细胞生理变化的HMI数据,以及iii)使用深度学习图像分类自动分类正常细胞和VBNC细胞。低水平氧化(0.01%过氧化氢)和酸性(0.001%过氧乙酸)应激诱导细胞进入VBNC状态3 d,经活死染色和平板计数证实。HMI提供空间和光谱数据,利用三个特征光谱波长提取成伪rgb图像。在伪RGB图像上训练基于efficientnetv2的卷积神经网络架构,获得97.1%的VBNC分类准确率(n=200),优于在RGB图像上训练的模型的83.3%。研究结果强调了利用人工智能支持的高光谱显微镜快速、自动化检测VBNC的潜力,有助于及时干预,预防食源性疾病和疫情。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Viable but Nonculturable E. coli Induced by Low-Level Antimicrobials Using AI-Enabled Hyperspectral Microscopy.

Rapid detection of bacterial pathogens is essential for food safety and public health, yet bacteria can evade detection by entering a viable but nonculturable (VBNC) state under sublethal stress, such as antimicrobial residues. These bacteria remain active but undetectable by standard culture-based methods without extensive enrichment, necessitating advanced detection methods. This study developed an AI-enabled hyperspectral microscope imaging (HMI) framework for rapid VBNC detection under low-level antimicrobials. The objectives were to (i) induce the VBNC state in Escherichia coli K-12 by exposure to selected antimicrobial stressors, (ii) obtain HMI data capturing physiological changes in VBNC cells, and (iii) automate the classification of normal and VBNC cells using deep learning image classification. The VBNC state was induced by low-level oxidative (0.01% hydrogen peroxide) and acidic (0.001% peracetic acid) stressors for 3 days, confirmed by live-dead staining and plate counting. HMI provided spatial and spectral data, extracted into pseudo-RGB images using three characteristic spectral wavelengths. An EfficientNetV2-based convolutional neural network architecture was trained on these pseudo-RGB images, achieving 97.1% accuracy of VBNC classification (n = 200), outperforming the model trained on RGB images at 83.3%. The results highlight the potential for rapid, automated VBNC detection using AI-enabled hyperspectral microscopy, contributing to timely intervention to prevent foodborne illnesses and outbreaks.

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来源期刊
Journal of food protection
Journal of food protection 工程技术-生物工程与应用微生物
CiteScore
4.20
自引率
5.00%
发文量
296
审稿时长
2.5 months
期刊介绍: The Journal of Food Protection® (JFP) is an international, monthly scientific journal in the English language published by the International Association for Food Protection (IAFP). JFP publishes research and review articles on all aspects of food protection and safety. Major emphases of JFP are placed on studies dealing with: Tracking, detecting (including traditional, molecular, and real-time), inactivating, and controlling food-related hazards, including microorganisms (including antibiotic resistance), microbial (mycotoxins, seafood toxins) and non-microbial toxins (heavy metals, pesticides, veterinary drug residues, migrants from food packaging, and processing contaminants), allergens and pests (insects, rodents) in human food, pet food and animal feed throughout the food chain; Microbiological food quality and traditional/novel methods to assay microbiological food quality; Prevention of food-related hazards and food spoilage through food preservatives and thermal/non-thermal processes, including process validation; Food fermentations and food-related probiotics; Safe food handling practices during pre-harvest, harvest, post-harvest, distribution and consumption, including food safety education for retailers, foodservice, and consumers; Risk assessments for food-related hazards; Economic impact of food-related hazards, foodborne illness, food loss, food spoilage, and adulterated foods; Food fraud, food authentication, food defense, and foodborne disease outbreak investigations.
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