Conflation of prediction and causality in the TB literature.

IJTLD open Pub Date : 2025-07-09 eCollection Date: 2025-07-01 DOI:10.5588/ijtldopen.25.0142
M L Romo, L Barcellini, M F Franke, P Y Khan
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Abstract

Background: Observational data can answer both predictive and etiologic research questions; however, the model-building approach and interpretation of results differ based on the research goal (i.e., prediction versus causal inference). Conflation occurs when aspects of the methodology and/or interpretation that are unique to prediction or etiology are combined or confused, potentially leading to biased results and erroneous conclusions.

Methods: We conducted a rapid review using MEDLINE (2018-2023) of a subset of the observational TB literature: cohort studies among people with drug-resistant TB that considered HIV status an exposure of interest and reported on TB treatment outcomes. For each article, we assessed the research question, statistical approach, presentation of results, and discussion and interpretation of results.

Results: Among the 40 articles included, 32 (80%) had evidence of conflation. The most common specific types of conflation were recommending or proposing interventions to modify exposures in a predictive study and having a causal interpretation of predictors, with both types frequently co-occurring.

Conclusion: Conflation between prediction and etiology was common, highlighting the importance of increasing awareness about it and its potential consequences. We propose simple steps on how TB and lung health researchers can avoid conflation, beginning with clearly defining the research question.

Abstract Image

Abstract Image

结核病文献中预测与因果关系的合并。
背景:观察数据可以回答预测和病因研究问题;然而,模型构建方法和结果解释因研究目标(即预测与因果推理)而异。当预测或病因学特有的方法学和/或解释方面被合并或混淆时,就会发生合并,可能导致有偏见的结果和错误的结论。方法:我们使用MEDLINE(2018-2023)对观察性结核病文献的一个子集进行了快速回顾:在耐药结核病患者中进行的队列研究,将HIV状态视为感兴趣的暴露,并报告了结核病治疗结果。对于每篇文章,我们评估了研究问题、统计方法、结果的呈现以及结果的讨论和解释。结果:纳入的40篇文献中,有32篇(80%)存在合并的证据。最常见的合并类型是在预测研究中建议或提出干预措施以修改暴露,并对预测因子进行因果解释,这两种类型经常同时发生。结论:预测与病因的混淆是常见的,强调了提高对其及其潜在后果的认识的重要性。关于结核病和肺部健康研究人员如何避免混淆,我们提出了简单的步骤,首先要明确定义研究问题。
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