水产养殖中鱼类福利和抗菌药物使用的文本挖掘和主题建模见解。

IF 2.3 2区 农林科学 Q1 VETERINARY SCIENCES
Annalisa Previti, Vito Biondi, Federica Bruno, Germano Castelli, Michela Pugliese, Fabrizio Vitale, Barbara Padalino, Annamaria Passantino
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引用次数: 0

摘要

水产养殖中抗菌素使用(AMU)和抗生素耐药性(AR)日益成为公众健康关注的问题。此外,鱼类福利与AMU之间存在相关性。本文对近32年来有关鱼类福利和AMU/AR的科学文献进行了系统分析,确定了主要的研究课题和值得借鉴的领域。使用Scopus进行全面搜索,使用与AMU/AR和福利相关的特定关键词和预选过滤器。该研究采用了遵循PRISMA指南的系统方法,并使用了机器学习技术。在检索到的2019条记录中,仅保留了关注鱼类福利和AMU/AR的记录。最终,在定性分析中包含了185条显示这些主题之间存在联系的记录。文本挖掘分析揭示了数据语料库中加权频率最高的术语,而主题分析确定了前5个核心领域:主题1(抗生素耐药性和菌株遗传分离)、主题2(水产养殖与人类健康、环境和食品)、主题3(鱼类对压力和指标的反应)、主题4(水和鱼类生长的控制)和主题5(水产养殖研究和当前养殖方法)。结果表明,人们对鱼类福利和AMU/AR的兴趣日益浓厚,同时也突出了需要进一步调查的领域,例如这些研究领域之间的联系。改善鱼类福利可以减少AR,与“同一个健康”政策保持一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Text mining and topic modeling insights on fish welfare and antimicrobial use in aquaculture.

Antimicrobial use (AMU) and antibiotic resistance (AR) in aquaculture present growing concerns for public health. Furthermore, there exists a correlation between fishes' welfare and AMU. This systematic review aims to analyze the scientific literature on fishes' welfare and AMU/AR over the last 32 years, identifing the main research topics, and the fields where investigation has been imitated. A comprehensive search was conducted using Scopus, employing specific keywords related to AMU/AR and welfare and preselected filters. The study employed a systematic approach following the PRISMA guidelines, and machine learning techniques were used. From 2,019 records retrieved, only those focused-on fishes welfare and AMU/AR were retained. Ultimately, 185 records showing a connection between these topics were included in the qualitative analysis. Text mining analysis revealed terms with the highest weighted frequency in the data corpus, while topic analysis identified the top five core areas: Topic 1 (Antibiotic resistance and strain genetic isolation), Topic 2 (Aquaculture and Human Health, environment, and food), Topic 3 (Fish response to stress and indicators), Topic 4 (Control of water and fish growth), and Topic 5 (Aquaculture research and current farming methods). The results indicate a growing interest in fish welfare and AMU/AR, while also highlighting areas that require further investigation, such as the link between these research fields. Improving fish welfare can reduce AR, aligning with the One Health policy.

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来源期刊
BMC Veterinary Research
BMC Veterinary Research VETERINARY SCIENCES-
CiteScore
4.80
自引率
3.80%
发文量
420
审稿时长
3-6 weeks
期刊介绍: BMC Veterinary Research is an open access, peer-reviewed journal that considers articles on all aspects of veterinary science and medicine, including the epidemiology, diagnosis, prevention and treatment of medical conditions of domestic, companion, farm and wild animals, as well as the biomedical processes that underlie their health.
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