Centre for Statistics in Medicine, Nuffield Department of Orthopaedics, Rheumatology and Musculoskeletal Sciences, University of Oxford, Oxford OX3 7LD, UK; NIHR Oxford Biomedical Research Centre, Oxford University Hospitals NHS Foundation Trust, Oxford, UK.
Centre for Statistics in Medicine, Nuffield Department of Orthopaedics, Rheumatology and Musculoskeletal Sciences, University of Oxford, Oxford OX3 7LD, UK.
J Clin Epidemiol. 2023 May;157:120-133. doi: 10.1016/j.jclinepi.2023.03.012. Epub 2023 Mar 17.
In biomedical research, spin is the overinterpretation of findings, and it is a growing concern. To date, the presence of spin has not been evaluated in prognostic model research in oncology, including studies developing and validating models for individualized risk prediction.
We conducted a systematic review, searching MEDLINE and EMBASE for oncology-related studies that developed and validated a prognostic model using machine learning published between 1st January, 2019, and 5th September, 2019. We used existing spin frameworks and described areas of highly suggestive spin practices.
We included 62 publications (including 152 developed models; 37 validated models). Reporting was inconsistent between methods and the results in 27% of studies due to additional analysis and selective reporting. Thirty-two studies (out of 36 applicable studies) reported comparisons between developed models in their discussion and predominantly used discrimination measures to support their claims (78%). Thirty-five studies (56%) used an overly strong or leading word in their title, abstract, results, discussion, or conclusion.
The potential for spin needs to be considered when reading, interpreting, and using studies that developed and validated prognostic models in oncology. Researchers should carefully report their prognostic model research using words that reflect their actual results and strength of evidence.
在生物医学研究中,spin 是对研究结果的过度解释,这是一个日益受到关注的问题。迄今为止,在肿瘤学的预后模型研究中,包括针对个体化风险预测开发和验证模型的研究,尚未评估 spin 的存在。
我们进行了一项系统评价,在 MEDLINE 和 EMBASE 中搜索了 2019 年 1 月 1 日至 2019 年 9 月 5 日期间发表的使用机器学习开发和验证肿瘤预后模型的相关研究。我们使用了现有的 spin 框架,并描述了高度提示 spin 实践的领域。
我们纳入了 62 篇出版物(包括 152 个开发模型;37 个验证模型)。由于额外的分析和选择性报告,27%的研究在方法和结果报告方面存在不一致。32 项研究(36 项适用研究中的 32 项)在讨论中报告了开发模型之间的比较,并主要使用区分度指标来支持其主张(78%)。35 项研究(56%)在其标题、摘要、结果、讨论或结论中使用了过于强烈或引导性的词语。
在阅读、解释和使用肿瘤学中开发和验证预后模型的研究时,需要考虑 spin 的潜在影响。研究人员应使用反映其实际结果和证据强度的词语,仔细报告其预后模型研究。