Variable selection for causal inference, prediction, and descriptive research: a narrative review of recommendations

被引:0
作者
Dyer, Brett P. [1 ]
机构
[1] Griffith Univ, Griffith Hlth, Gold Coast, Qld 4222, Australia
来源
EUROPEAN HEART JOURNAL OPEN | 2025年 / 5卷 / 03期
关键词
Variable selection; Causal inference; Prediction; Prognostic factor; Descriptive epidemiology; Methods; DIRECTED ACYCLIC GRAPHS; SENSITIVITY-ANALYSIS; MODELS; FRAMEWORK; DIAGRAMS; RISK; BIAS;
D O I
10.1093/ehjopen/oeaf070
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
There is a growing appreciation that the methods and analyses of medical studies should be tailored towards the type of research question. However, frequent conflation exists with respect to the reasons for statistically adjusting for variables in analyses and the methods that should be used for variable selection in regression models. Non-randomized causal studies require statistical adjustment for confounders that may bias the causal effect estimate. Predictor/prognostic factor studies may present unadjusted associations and/or present associations statistically adjusted for existing predictors to establish the added predictive value of the candidate predictor over and above known predictors. Prediction models aim to identify a set of variables that are clinically useable and are collectively the best at predicting the outcome. Descriptive studies may want to characterize the outcome distribution with respect to an additional variable or standardize with respect to a nuisance variable for which the study sample differs from the target population. This narrative review summarizes background theory and existing advice on how variable selection should differ for causal research, prediction modelling, predictor/prognostic factor research, and descriptive research. Examples of variable selection approaches from published cardiovascular research are also provided.
引用
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页数:9
相关论文
共 85 条
[1]  
Ahmed OB., 2001, GPE Discussion Paper Series, V31
[2]   The Paper of How: Estimating Treatment Effects Using the Front-Door Criterion [J].
Bellemare, Marc F. ;
Bloem, Jeffrey R. ;
Wexler, Noah .
OXFORD BULLETIN OF ECONOMICS AND STATISTICS, 2024, 86 (04) :951-993
[3]  
Byeon Sangmin, 2023, J Minim Invasive Surg, V26, P97, DOI [10.7602/jmis.2023.26.3.97, 10.7602/jmis.2023.26.3.97]
[4]   The Akaike information criterion: Background, derivation, properties, application, interpretation, and refinements [J].
Cavanaugh, Joseph E. ;
Neath, Andrew A. .
WILEY INTERDISCIPLINARY REVIEWS-COMPUTATIONAL STATISTICS, 2019, 11 (03)
[5]   Evaluation of clinical prediction models (part 1): from development to external validation [J].
Collins, Gary S. ;
Dhiman, Paula ;
Ma, Jie ;
Schlussel, Michael M. ;
Archer, Lucinda ;
Van Calster, Ben ;
Harrell Jr, Frank E. ;
Martin, Glen P. ;
Moons, Karel G. M. ;
van Smeden, Maarten ;
Sperrin, Matthew ;
Bullock, Garrett S. ;
Riley, Richard .
BMJ-BRITISH MEDICAL JOURNAL, 2024, 384
[6]   Let the question determine the methods: descriptive epidemiology done right [J].
Conroy, Sara ;
Murray, Eleanor J. .
BRITISH JOURNAL OF CANCER, 2020, 123 (09) :1351-1352
[7]   Individual Participant Data (IPD) Meta-analyses of Diagnostic and Prognostic Modeling Studies: Guidance on Their Use [J].
Debray, Thomas P. A. ;
Riley, Richard D. ;
Rovers, Maroeska M. ;
Reitsma, Johannes B. ;
Moons, Karel G. M. .
PLOS MEDICINE, 2015, 12 (10)
[8]   BACKWARD, FORWARD AND STEPWISE AUTOMATED SUBSET-SELECTION ALGORITHMS - FREQUENCY OF OBTAINING AUTHENTIC AND NOISE VARIABLES [J].
DERKSEN, S ;
KESELMAN, HJ .
BRITISH JOURNAL OF MATHEMATICAL & STATISTICAL PSYCHOLOGY, 1992, 45 :265-282
[9]   Counterfactual prediction is not only for causal inference [J].
Dickerman, Barbra A. ;
Hernan, Miguel A. .
EUROPEAN JOURNAL OF EPIDEMIOLOGY, 2020, 35 (07) :615-617
[10]   Tutorial on directed acyclic graphs [J].
Digitale, Jean C. ;
Martin, Jeffrey N. ;
Glymour, Medellena Maria .
JOURNAL OF CLINICAL EPIDEMIOLOGY, 2022, 142 :264-267