An artificial neural network (ANN) model for publication bias: a machine learning-based study on PubMed meta-analyses

IF 2.4 3区 管理学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Aslib Journal of Information Management Pub Date : 2023-01-24 DOI:10.1108/ajim-08-2022-0364
Hossein Motahari-Nezhad
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Abstract

PurposeNo study has investigated the effects of different parameters on publication bias in meta-analyses using a machine learning approach. Therefore, this study aims to evaluate the impact of various factors on publication bias in meta-analyses.Design/methodology/approachAn electronic questionnaire was created according to some factors extracted from the Cochrane Handbook and AMSTAR-2 tool to identify factors affecting publication bias. Twelve experts were consulted to determine their opinion on the importance of each factor. Each component was evaluated based on its content validity ratio (CVR). In total, 616 meta-analyses comprising 1893 outcomes from PubMed that assessed the presence of publication bias in their reported outcomes were randomly selected to extract their data. The multilayer perceptron (MLP) technique was used in IBM SPSS Modeler 18.0 to construct a prediction model. 70, 15 and 15% of the data were used for the model's training, testing and validation partitions.FindingsThere was a publication bias in 968 (51.14%) outcomes. The established model had an accuracy rate of 86.1%, and all pre-selected nine variables were included in the model. The results showed that the number of databases searched was the most important predictive variable (0.26), followed by the number of searches in the grey literature (0.24), search in Medline (0.17) and advanced search with numerous operators (0.13).Practical implicationsThe results of this study can help clinical researchers minimize publication bias in their studies, leading to improved evidence-based medicine.Originality/valueTo the best of the author’s knowledge, this is the first study to model publication bias using machine learning.
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发表偏倚的人工神经网络(ANN)模型:基于PubMed meta分析的机器学习研究
一项研究使用机器学习方法调查了meta分析中不同参数对发表偏倚的影响。因此,本研究旨在评估meta分析中各种因素对发表偏倚的影响。设计/方法/方法根据从Cochrane手册和AMSTAR-2工具中提取的一些因素制作电子问卷,以确定影响发表偏倚的因素。咨询了12位专家,以确定他们对每个因素的重要性的意见。各成分根据其内容效度比(content validity ratio, CVR)进行评价。总共有616项荟萃分析,包括PubMed的1893项结果,随机选择评估其报告结果中存在发表偏倚的数据。在IBM SPSS Modeler 18.0中使用多层感知器(MLP)技术构建预测模型。70%、15%和15%的数据用于模型的训练、测试和验证分区。结果968例(51.14%)结果存在发表偏倚。建立的模型准确率为86.1%,预选的9个变量全部纳入模型。结果表明,检索数据库的数量是最重要的预测变量(0.26),其次是灰色文献的检索次数(0.24)、Medline的检索次数(0.17)和多操作符高级检索次数(0.13)。实际意义本研究的结果可以帮助临床研究人员减少研究中的发表偏倚,从而改进循证医学。原创性/价值据作者所知,这是第一个使用机器学习来模拟出版偏见的研究。
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来源期刊
Aslib Journal of Information Management
Aslib Journal of Information Management COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
5.30
自引率
19.20%
发文量
79
期刊介绍: Aslib Journal of Information Management covers a broad range of issues in the field, including economic, behavioural, social, ethical, technological, international, business-related, political and management-orientated factors. Contributors are encouraged to spell out the practical implications of their work. Aslib Journal of Information Management Areas of interest include topics such as social media, data protection, search engines, information retrieval, digital libraries, information behaviour, intellectual property and copyright, information industry, digital repositories and information policy and governance.
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