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尼泊尔使用药用植物预防 COVID-19。

The use of medicinal plants to prevent COVID-19 in Nepal.

机构信息

Guangdong Key Laboratory for Innovative Development and Utilization of Forest Plant Germplasm, College of Forestry and Landscape Architecture, South China Agricultural University, Guangzhou, China.

Environmental Science Program, Golden Gate International College, Battisputali, Kathmandu, Nepal.

出版信息

J Ethnobiol Ethnomed. 2021 Apr 8;17(1):26. doi: 10.1186/s13002-021-00449-w.

Abstract

BACKGROUND

Medicinal plants are the fundamental unit of traditional medicine system in Nepal. Nepalese people are rich in traditional medicine especially in folk medicine (ethnomedicine), and this system is gaining much attention after 1995. The use of medicinal plants has increased during the COVID-19 pandemic as a private behavior (not under the control of government). A lot of misinterpretations of the use of medicinal plants to treat or prevent COVID-19 have been spreading throughout Nepal which need to be managed proactively. In this context, a research was needed to document medicinal plants used, their priority of use in society, their cultivation status, and the source of information people follow to use them. This study aimed to document the present status of medicinal plant use and make important suggestion to the concerned authorities.

METHODS

This study used a web-based survey to collect primary data related to medicinal plants used during COVID-19. A total of 774 respondents took part in the survey. The study calculated the relative frequencies of citation (RFC) for the recorded medicinal plants. The relationship between plants recorded and different covariates (age, gender education, occupation, living place, and treatment methods) was assessed using Kruskal-Wallis test and Wilcoxon test. The relationship between the information sources people follow and the respondent characteristics was assessed using chi-square test.

RESULTS

The study found that the use of medicinal plants has increased during COVID-19 and most of the respondents recommended medicinal plants to prevent COVID-19. This study recorded a total of 60 plants belonging to 36 families. The leaves of the plants were the most frequently used. The Zingiber officinale was the most cited species with the frequency of citation 0.398. Most of the people (45.61%) were getting medicinal plants from their home garden. The medicinal plants recorded were significantly associated with the education level, location of home, primary treatment mode, gender, and age class. The information source of plants was significantly associated with the education, gender, method of treatment, occupation, living with family, and location of home during the lockdown caused by COVID-19.

CONCLUSIONS

People were using more medicinal plants during COVID-19 claiming that they can prevent or cure COVID-19. This should be taken seriously by concerned authorities. The authorities should test the validity of these medicinal plants and control the flow of false information spread through research and awareness programs.

摘要

背景

药用植物是尼泊尔传统医学体系的基本单位。尼泊尔人民拥有丰富的传统医学知识,尤其是民间医学(民族医学),自 1995 年以来,该体系受到了广泛关注。在 COVID-19 大流行期间,人们出于个人需求(不受政府控制)而增加了对药用植物的使用。在尼泊尔,大量关于药用植物治疗或预防 COVID-19 的误解正在传播,需要积极管理。在这种情况下,需要进行研究以记录使用的药用植物、它们在社会中的优先使用情况、它们的种植状况以及人们用来使用它们的信息来源。本研究旨在记录药用植物使用的现状,并向有关当局提出重要建议。

方法

本研究使用基于网络的调查收集了与 COVID-19 期间使用的药用植物相关的原始数据。共有 774 名受访者参与了调查。研究计算了记录的药用植物的相对引文频率(RFC)。使用 Kruskal-Wallis 检验和 Wilcoxon 检验评估记录的植物与不同协变量(年龄、性别、教育、职业、居住地点和治疗方法)之间的关系。使用卡方检验评估人们遵循的信息来源与受访者特征之间的关系。

结果

研究发现,在 COVID-19 期间,人们对药用植物的使用有所增加,大多数受访者建议使用药用植物预防 COVID-19。本研究共记录了 60 种植物,属于 36 个科。植物的叶子是最常使用的部分。姜黄(Zingiber officinale)是被引用最多的物种,引用频率为 0.398。大多数人(45.61%)从自家花园获取药用植物。记录的药用植物与教育水平、家庭住址、主要治疗方式、性别和年龄组显著相关。植物的信息来源与教育、性别、治疗方法、职业、与家人同住以及 COVID-19 封锁期间的家庭住址显著相关。

结论

人们在 COVID-19 期间更多地使用药用植物,声称它们可以预防或治疗 COVID-19。这应该引起有关当局的重视。当局应该通过研究和宣传计划来测试这些药用植物的有效性,并控制虚假信息的传播。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6b7e/8028077/ee656050b79f/13002_2021_449_Fig1_HTML.jpg

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