Systematic reviews are comprehensive reviews of the literature for a highly focused research question. These reviews are often treated as the highest form of evidence in evidence-based medicine, and are the key strategy to answer research questions in the medical field. To create a high-quality systematic review, complex Boolean queries are often constructed to retrieve studies for the review topic. However, it often takes a long time for systematic review researchers to construct a high quality systematic review Boolean query, and often the resulting queries are far from effective. Poor queries may lead to biased or invalid reviews, because they missed to retrieve key evidence, or to extensive increase in review costs, because they retrieved too many irrelevant studies. Recent advances in Transformer-based generative models have shown great potential to effectively follow instructions from users and generate answers based on the instructions being made. In this paper, we investigate the effectiveness of the latest of such models, ChatGPT, in generating effective Boolean queries for systematic review literature search. Through a number of extensive experiments on standard test collections for the task, we find that ChatGPT is capable of generating queries that lead to high search precision, although trading-off this for recall. Overall, our study demonstrates the potential of ChatGPT in generating effective Boolean queries for systematic review literature search. The ability of ChatGPT to follow complex instructions and generate queries with high precision makes it a valuable tool for researchers conducting systematic reviews, particularly for rapid reviews where time is a constraint and often trading-off higher precision for lower recall is acceptable.
翻译:系统审查是对高度集中的研究问题的文献的全面审查。这些审查往往被视为证据医学中的最高证据形式,是回答医学领域研究问题的关键战略。为了建立高质量的系统审查,往往要建立复杂的布林恩查询,以检索审查专题的研究。然而,系统审查研究人员往往需要很长时间才能建立一个高质量的系统审查布林查询,而由此产生的查询往往远非有效。查询不当可能导致有偏颇或无效的审查,因为没有找到关键证据,或审查费用大增,因为它们检索了太多无关紧要的研究。基于变换机的基因化模型最近的进展显示,极有可能有效遵循用户的指示,并根据正在作出的指示提出答案。在本文件中,我们调查这些模型的最新效果,即查特GPT,为系统审查文献进行有效的布立恩查询。通过对可接受的任务的标准测试收集进行一系列广泛的试验,我们发现查网能够产生高精确度的查询,尽管交易的精确度太高,但用于进行交易的基因变异性模型的最近进展显示,在进行系统化的系统化的查查查核中,因此,我们的研究能够有效地进行精确性地查询。