Web-Based Platform for Systematic Reviews and Meta-Analyses of Traditional Chinese Medicine: Platform Development Study.

IF 2 Q3 HEALTH CARE SCIENCES & SERVICES
Weiqiang Zhou, Dongliang Liu, Zhaoxu Yi, Yang Lei, Zhenming Zhang, Yu Deng, Ying Tan
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引用次数: 0

Abstract

Background: There are many problems associated with systematic reviews of traditional Chinese medicine (TCM), such as considering "integrated traditional Chinese and Western medicine" or treatment methods as intervention measures without considering the differences in drug use, disregarding dosage and courses of treatment, disregarding interindividual differences in control groups, etc. Classifying a large number of heterogeneous intervention measures into the same measure is easy but results in inaccurate results. In April 2023, Cochrane launched RevMan Web to digitalize systematic reviews and meta-analyses. We believe that this web-based working model helps solve the abovementioned problems.

Objective: This study aims to (1) develop a web-based platform that is more suitable for systematic review and meta-analysis of TCM and (2) explore the characteristics and future development directions of this work through the testing of digital workflow.

Methods: We developed TCMeta (Traditional Chinese Medicine Meta-analysis)-a platform focused on systematic reviews of TCM types. All systematic review-related work can be completed on the web, including creating topics, writing protocols, arranging personnel, obtaining literature, screening literature, inputting and analyzing data, and designing illustrations. The platform was developed using the latest internet technology and can be continuously modified and updated based on user feedback. When screening the literature on the platform, in addition to the traditional manual screening mode, the platform also creatively provides a query mode where users input keywords and click on Search to find literature with the same characteristics; this better reflects the objectivity of the screening with higher efficiency. Productivity can be improved by analyzing data and generating graphs digitally.

Results: We used some test data in TCMeta to simulate data processing in a systematic review. In the literature screening stage, researchers could rapidly screen 19 sources of literature from among multiple sources with the manual screening mode. This traditional method could result in bias due to differences in the researchers' cognitive levels. The query mode is much more complex and involves inputting of data regarding drug compatibility, dosage, syndrome type, etc; different query methods can yield very different results, thus increasing the stringency of screening. We integrated data analysis tools on the platform and used third-party software to generate graphs.

Conclusions: TCMeta has shown great potential in improving the quality of systematic reviews of TCM types in simulation tests. Several indicators show that this web-based mode of working is superior to the traditional way. Future research is required to focus on validating and refining the performance of TCMeta, emphasizing the ability to handle complex data. The system has good scalability and adaptability, and it has the potential to have a positive impact on the field of evidence-based medicine.

中医药系统综述和荟萃分析网络平台:平台开发研究。
背景:传统中医药(TCM)的系统综述存在许多问题,如将 "中西医结合 "或治疗方法视为干预措施而不考虑用药差异、忽视剂量和疗程、忽视对照组的个体差异等。将大量异质性的干预措施归为同一措施虽然容易,但结果却不准确。2023 年 4 月,Cochrane 推出 RevMan Web,将系统综述和荟萃分析数字化。我们认为,这种基于网络的工作模式有助于解决上述问题:本研究旨在:(1)开发一个更适合中医药系统综述和荟萃分析的网络平台;(2)通过数字化工作流程的测试,探索这项工作的特点和未来发展方向:我们开发了 TCMeta(中药荟萃分析)--一个专注于中药类型系统综述的平台。所有与系统综述相关的工作都可以在网络上完成,包括创建主题、编写方案、安排人员、获取文献、筛选文献、输入和分析数据、设计插图等。该平台采用最新的互联网技术开发,可根据用户反馈不断修改和更新。在平台上筛选文献时,除了传统的人工筛选模式外,平台还创造性地提供了查询模式,用户输入关键词,点击 "搜索 "即可找到具有相同特征的文献,更能体现筛选的客观性,效率更高。通过数字化分析数据和生成图表,可以提高工作效率:我们使用 TCMeta 中的一些测试数据来模拟系统综述中的数据处理。在文献筛选阶段,研究人员可以通过手动筛选模式从多个来源中快速筛选出 19 个文献来源。这种传统方法可能会因研究人员认知水平的差异而产生偏差。而查询模式则复杂得多,需要输入药物兼容性、剂量、综合征类型等数据;不同的查询方法会得出截然不同的结果,从而增加了筛选的严格程度。我们在平台上集成了数据分析工具,并使用第三方软件生成图表:TCMeta 在提高模拟试验中药类型系统综述的质量方面显示出巨大潜力。多项指标显示,这种基于网络的工作模式优于传统方式。未来的研究需要重点验证和完善 TCMeta 的性能,强调其处理复杂数据的能力。该系统具有良好的可扩展性和适应性,有可能对循证医学领域产生积极影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JMIR Formative Research
JMIR Formative Research Medicine-Medicine (miscellaneous)
CiteScore
2.70
自引率
9.10%
发文量
579
审稿时长
12 weeks
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