Harnessing the Power of ChatGPT for Automating Systematic Review Process: Methodology, Case Study, Limitations, and Future Directions

Ahmad Alshami, Moustafa Elsayed, Eslam Ali, A. E. Eltoukhy, T. Zayed
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引用次数: 6

Abstract

Systematic reviews (SR) are crucial in synthesizing and analyzing existing scientific literature to inform evidence-based decision-making. However, traditional SR methods often have limitations, including a lack of automation and decision support, resulting in time-consuming and error-prone reviews. To address these limitations and drive the field forward, we harness the power of the revolutionary language model, ChatGPT, which has demonstrated remarkable capabilities in various scientific writing tasks. By utilizing ChatGPT’s natural language processing abilities, our objective is to automate and streamline the steps involved in traditional SR, explicitly focusing on literature search, screening, data extraction, and content analysis. Therefore, our methodology comprises four modules: (1) Preparation of Boolean research terms and article collection, (2) Abstract screening and articles categorization, (3) Full-text filtering and information extraction, and (4) Content analysis to identify trends, challenges, gaps, and proposed solutions. Throughout each step, our focus has been on providing quantitative analyses to strengthen the robustness of the review process. To illustrate the practical application of our method, we have chosen the topic of IoT applications in water and wastewater management and quality monitoring due to its critical importance and the dearth of comprehensive reviews in this field. The findings demonstrate the potential of ChatGPT in bridging the gap between traditional SR methods and AI language models, resulting in enhanced efficiency and reliability of SR processes. Notably, ChatGPT exhibits exceptional performance in filtering and categorizing relevant articles, leading to significant time and effort savings. Our quantitative assessment reveals the following: (1) the overall accuracy of ChatGPT for article discarding and classification is 88%, and (2) the F-1 scores of ChatGPT for article discarding and classification are 91% and 88%, respectively, compared to expert assessments. However, we identify limitations in its suitability for article extraction. Overall, this research contributes valuable insights to the field of SR, empowering researchers to conduct more comprehensive and reliable reviews while advancing knowledge and decision-making across various domains.
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利用ChatGPT的力量自动化系统审查过程:方法论,案例研究,限制和未来方向
系统评价(SR)在综合和分析现有科学文献为循证决策提供信息方面至关重要。然而,传统的SR方法通常有局限性,包括缺乏自动化和决策支持,导致耗时和容易出错的审查。为了解决这些限制并推动该领域向前发展,我们利用了革命性的语言模型ChatGPT的力量,它在各种科学写作任务中表现出了卓越的能力。通过利用ChatGPT的自然语言处理能力,我们的目标是自动化和简化传统SR中涉及的步骤,明确地关注文献搜索、筛选、数据提取和内容分析。因此,我们的方法包括四个模块:(1)布尔研究术语的准备和文章收集;(2)摘要筛选和文章分类;(3)全文过滤和信息提取;(4)内容分析,以识别趋势、挑战、差距和提出解决方案。在每个步骤中,我们的重点是提供定量分析,以加强审查过程的稳健性。为了说明我们方法的实际应用,我们选择了物联网在水和废水管理和质量监测中的应用这一主题,因为它至关重要,而且在这一领域缺乏全面的综述。研究结果表明,ChatGPT在弥合传统SR方法和人工智能语言模型之间的差距方面具有潜力,从而提高SR过程的效率和可靠性。值得注意的是,ChatGPT在过滤和分类相关文章方面表现出卓越的性能,从而节省了大量的时间和精力。我们的定量评估结果显示:(1)ChatGPT对物品丢弃和分类的总体准确率为88%,(2)ChatGPT对物品丢弃和分类的F-1分数与专家评估相比分别为91%和88%。然而,我们发现了它在文章提取适用性方面的局限性。总体而言,本研究为SR领域提供了有价值的见解,使研究人员能够进行更全面、更可靠的评估,同时推进各个领域的知识和决策。
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