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2019冠状病毒病对印度特伦甘纳邦、马哈拉施特拉邦、西孟加拉邦、泰米尔纳德邦和旁遮普邦食品环境的影响:一项描述性定性研究,以推动印度食品环境复原力建设的进一步研究。

COVID-19's impact on food environment in the Indian states of Telangana, Maharashtra, West Bengal, Tamil Nadu and Punjab: a descriptive qualitative study to build further research in India's food environment resilience building.

作者信息

Johnsen Jørgen Torgerstuen, Rafaela Lima do Vale Marjorie, Bhangaonkar Rekha, Nyaga Wanja, Ayyad Sally, Ray Sumantra

机构信息

NNEdPro Global Institute for Food Nutrition and Health, Cambridge, UK.

School of Biomedical Sciences, Ulster University, Coleraine, UK.

出版信息

BMJ Nutr Prev Health. 2024 Aug 17;7(2):e000844. doi: 10.1136/bmjnph-2023-000844. eCollection 2024.

Abstract

BACKGROUND AND AIM

Globally, COVID-19 has had a profound impact on food and nutrition security. This paper aims to gather the perspective from Transforming India's Green Revolution by Research and Empowerment for Sustainable food Supplies (TIGR2ESS) Flagship Project 6 (FP-6) team on the impact of COVID-19 on the food systems in India. The responses collected will be used for further research projects after TIGR2ESS ends in March 2022.

METHOD

Members of the TIGR2ESS FP-6 team in India were invited to complete an online open-ended questionnaire with 21 questions exploring the impact of the COVID-19 pandemic on food systems and environments in India. The questionnaire and data analysis were guided by the food environment framework developed by Turner and the adaptations proposed by the United Nations System Standing Committee on Nutrition. Discussions and organisation of codes under the respective themes and subthemes were held online using the virtual platform Miro. 35 individual codes and 65 subcodes were agreed on. Responses were collated and analysed using the template with support from NVivo software and synthesised the relevant themes under Turner 's framework.

RESULTS

The organisation representatives from TIGR2ESS FP-6 (n=16) captured the perceived impact of the COVID-19 on food systems and the environment from the Indian states of Maharashtra, Punjab, Tamil Nadu, Telangana and West Bengal. Negative disruptions were caused by the COVID-19 restrictions across all the themes affecting food actors and consumers. Myths and misconception on dietary intake were reported across the state affecting especially the consumption of poultry. Positive aspects such as home cooking and awareness around healthy food emerged.

CONCLUSION

Potential research areas were identified and involve the effects of supply chain resilience buidling, farmers selling their produce directly to consumer and the revival of local and traditional food's impact on diets, understanding the harm for consumers by implementing restrictions, how indigenous and local food may impact peoples' diets, how to build on the encouragement of healthy home cooking during the pandemic, investigate the negative and positive effects of digital environments during the pandemic and dispelling myths and misconception while advocating for healthy diets.

摘要

背景与目标

在全球范围内,新冠疫情对粮食和营养安全产生了深远影响。本文旨在收集“通过研究与赋权实现印度绿色革命以保障可持续粮食供应”(TIGR2ESS)旗舰项目6(FP - 6)团队对新冠疫情对印度粮食系统影响的看法。收集到的回复将在TIGR2ESS于2022年3月结束后用于进一步的研究项目。

方法

邀请印度TIGR2ESS FP - 6团队成员完成一份包含21个问题的在线开放式问卷,该问卷探讨了新冠疫情对印度粮食系统和环境的影响。问卷及数据分析以特纳制定的粮食环境框架以及联合国系统营养问题常设委员会提出的调整建议为指导。使用虚拟平台Miro在线进行各主题和子主题下代码的讨论与整理。共确定了35个个体代码和65个子代码。在NVivo软件的支持下,使用模板对回复进行整理和分析,并在特纳的框架下综合相关主题。

结果

TIGR2ESS FP - 6的组织代表(n = 16)了解了新冠疫情对印度马哈拉施特拉邦、旁遮普邦、泰米尔纳德邦、特伦甘纳邦和西孟加拉邦粮食系统和环境的感知影响。新冠疫情限制措施在影响粮食从业者和消费者的所有主题方面都造成了负面干扰。各邦均有关于饮食摄入的谣言和误解的报道,尤其影响了家禽消费。出现了家庭烹饪以及对健康食品的认知等积极方面。

结论

确定了潜在的研究领域,包括供应链弹性建设的影响、农民直接向消费者销售农产品以及当地和传统食品的复兴对饮食的影响、理解实施限制措施对消费者的危害、本土和当地食品如何影响人们的饮食、如何在疫情期间基于对健康家庭烹饪的鼓励进一步发展、调查疫情期间数字环境的负面和正面影响以及在倡导健康饮食的同时消除谣言和误解。

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COVID-19 and disruptions to food systems.新冠疫情与粮食系统的中断。
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