Antimicrobial Susceptibility Profiles of Escherichia coli Isolates from Clinical Cases of Ducks in Hungary Between 2022 and 2023.

IF 4.3 2区 医学 Q1 INFECTIOUS DISEASES
Ádám Kerek, Ábel Szabó, Ákos Jerzsele
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引用次数: 0

Abstract

Background: Antimicrobial resistance (AMR) poses a growing threat to veterinary medicine and food safety. This study examines Escherichia coli antibiotic resistance patterns in ducks, focusing on multidrug-resistant (MDR) strains. Understanding resistance patterns and predicting MDR occurrence are critical for effective intervention strategies. Methods: E. coli isolates were collected from duck samples across multiple regions. Descriptive statistics and resistance frequency analyses were conducted. A decision tree classifier and a neural network were trained to predict MDR status. Cross-resistance relationships were visualized using graph-based models, and Monte Carlo simulations estimated MDR prevalence variations. Results: Monte Carlo simulations estimated an average MDR prevalence of 79.6% (95% CI: 73.1-86.1%). Key predictors in MDR classification models were enrofloxacin, neomycin, amoxicillin, and florfenicol. Strong cross-resistance associations were detected between neomycin and spectinomycin, as well as amoxicillin and doxycycline. Conclusions: The high prevalence of MDR strains underscores the urgent need to revise antibiotic usage guidelines in veterinary settings. The effectiveness of predictive models suggests that machine learning tools can aid in the early detection of MDR, contributing to the optimization of treatment strategies and the mitigation of resistance spread. The alarming MDR prevalence in E. coli isolates from ducks reinforces the importance of targeted surveillance and antimicrobial stewardship. Predictive models, including decision trees and neural networks, provide valuable insights into resistance trends, while Monte Carlo simulations further validate these findings, emphasizing the need for proactive antimicrobial management.

2022 - 2023年匈牙利鸭临床病例中分离的大肠杆菌药敏分析
背景:抗微生物药物耐药性(AMR)对兽药和食品安全构成越来越大的威胁。本研究考察了鸭子中大肠杆菌的耐药性模式,重点是耐多药菌株。了解耐药模式和预测耐多药的发生对有效的干预策略至关重要。方法:从多个地区的鸭标本中分离出大肠杆菌。进行描述性统计和电阻频率分析。通过训练决策树分类器和神经网络来预测MDR状态。交叉抗性关系使用基于图形的模型可视化,蒙特卡罗模拟估计MDR患病率变化。结果:蒙特卡罗模拟估计MDR的平均患病率为79.6% (95% CI: 73.1-86.1%)。耐多药分类模型的关键预测因子是恩诺沙星、新霉素、阿莫西林和氟苯尼考。在新霉素和大观霉素、阿莫西林和强力霉素之间检测到强交叉耐药关联。结论:耐多药菌株的高流行率强调了修订兽医环境中抗生素使用指南的迫切需要。预测模型的有效性表明,机器学习工具可以帮助早期发现耐多药耐药性,有助于优化治疗策略和减轻耐药性传播。从鸭子中分离出的大肠杆菌中令人震惊的耐多药流行率加强了有针对性的监测和抗菌药物管理的重要性。包括决策树和神经网络在内的预测模型为耐药性趋势提供了有价值的见解,而蒙特卡罗模拟进一步验证了这些发现,强调了主动抗微生物药物管理的必要性。
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来源期刊
Antibiotics-Basel
Antibiotics-Basel Pharmacology, Toxicology and Pharmaceutics-General Pharmacology, Toxicology and Pharmaceutics
CiteScore
7.30
自引率
14.60%
发文量
1547
审稿时长
11 weeks
期刊介绍: Antibiotics (ISSN 2079-6382) is an open access, peer reviewed journal on all aspects of antibiotics. Antibiotics is a multi-disciplinary journal encompassing the general fields of biochemistry, chemistry, genetics, microbiology and pharmacology. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. Therefore, there is no restriction on the length of papers.
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