Department of Periodontology, Henry M. Goldman School of Dental Medicine, Boston University, 635 Albany Street, Boston, MA 02118, United States.
Department of Periodontology, Henry M. Goldman School of Dental Medicine, Boston University, 635 Albany Street, Boston, MA 02118, United States.
J Dent. 2024 Oct;149:105259. doi: 10.1016/j.jdent.2024.105259. Epub 2024 Jul 25.
Artificial intelligence (AI) tools utilizing machine learning (ML) have gained increasing utility in medicine and academia as a means of enhancing efficiency. ASReview is one such AI program designed to streamline the systematic review process through the automated prioritization of relevant articles for screening. This study examined the screening efficiency of ASReview when conducting systematic reviews and the potential factors that could influence its efficiency.
Six distinct topics within the field of periodontics were searched in PubMed and Web of Science to obtain articles for screening within ASReview. Through a "training" process, relevant and irrelevant articles were manually incorporated to develop "prior knowledge" and facilitate ML optimization. Screening was then conducted following ASReview's algorithmically-generated relevance rankings. Screening efficiency was evaluated based on the normalized number of articles not requiring detailed review and on the total time expenditure.
Across the six topics, an average of 60.2 % of articles did not warrant extensive screening, given that all relevant articles were discovered within the first 39.8 % of publication reviewed. No significant variations in efficiencies were observed with differing methods of assembling prior knowledge articles or via modifications in article ratios and numbers.
On average, ASReview conferred a 60.2 % improvement in screening efficiency, largely attributed to its dynamic ML capabilities. While advanced technologies like ASReview promise enhanced efficiencies, the accurate human discernment of article relevancy and quality remains indispensable when training these AI tools.
Using ASReview has the potential to save approximately 60 % of time and effort required for screening articles.
利用机器学习(ML)的人工智能(AI)工具在医学和学术界中作为提高效率的手段得到了越来越多的应用。ASReview 是这样一种 AI 程序,旨在通过自动对相关文章进行筛选优先级排序来简化系统综述过程。本研究考察了 ASReview 在进行系统评价时的筛选效率,以及可能影响其效率的潜在因素。
在 PubMed 和 Web of Science 中搜索牙周学领域的六个不同主题,以获取 ASReview 进行筛选的文章。通过“培训”过程,手动纳入相关和不相关的文章以开发“先验知识”并促进 ML 优化。然后,根据 ASReview 算法生成的相关性排名进行筛选。根据需要进行详细审查的文章数量和总时间支出来评估筛选效率。
在六个主题中,平均有 60.2%的文章不需要进行广泛筛选,因为所有相关文章都在审查的前 39.8%的出版物中被发现。通过不同的方法组装先验知识文章或通过修改文章比例和数量,效率没有显著变化。
平均而言,ASReview 的筛选效率提高了 60.2%,这主要归因于其动态 ML 功能。虽然像 ASReview 这样的先进技术有望提高效率,但在训练这些 AI 工具时,对文章相关性和质量的准确人工判断仍然不可或缺。
使用 ASReview 有可能节省大约 60%的筛选文章所需的时间和精力。