Pajouheshnia R, Damen J, Groenwold R, Moons K, Peelen L. How treatment use is addressed in prognostic research: a systematic review. Poster presented at the Methods for Evaluating Medical Tests and Biomarkers 2016 Symposium; July 19, 2016. Birmingham, UK. [abstract] Diagn Progn Res. 2017 Feb 16; 1(Suppl 1):19. doi: 10.1186/s41512-016-0001-y


BACKGROUND: Prognostic models are often designed to estimate an individual’s future risk of disease given that they are not receiving a certain treatment and will remain untreated. In practice, individuals enrolled in studies that aim to develop or validate such models may receive treatment to prevent the outcome of interest during the study. This can lead to an underestimation of the true untreated risk in those who were treated, which may impact upon the accuracy or validity of newly derived models, or may bias the findings of a validation study. It is not yet clear how and to what extent treatment use is being addressed in prognostic modelling studies.

OBJECTIVES: To provide insight into the degree to which relevant treatment information is reported and handled in the derivation and validation of prognostic models, and what impact this may have, using the field of cardiovascular risk prediction as an example.

METHODS: For the current study, we made use of a previously conducted systematic review (search: June 2013) to identify articles that reported prognostic models in the field of cardiovascular preventative medicine, in a general population setting. Data were collected on the reporting of treatments (blood pressure, lipid and other medications, surgical procedures and lifestyle modifications), including the frequency and timing of treatment use, how treatments were handled in the analysis, and any discussion regarding the implications of treatment use.

RESULTS: The search strategy yielded 9965 unique titles, of which 302 articles were included for the current analysis. Of these articles, 91 (30%) did not mention treatments with respect to the characteristics of study participants, prediction modelling, or their relevance to the findings of the study. 146 articles (48%) reported specific information about treatment use at study entry; 78 articles (26%) provided information about more than one treatment. Information about changes in medication use during follow-up was rare (1%). Treatment effects were accounted for in 79 articles (26%) by including only individuals without a certain treatment in the analysis. Of all the articles that developed a model, 80 included treatment use at baseline as a predictor; changes in treatment during follow-up were not modelled. Possible implications of treatment use with respect to model performance or applicability were discussed in only 24 articles (8%).

CONCLUSIONS: This review finds that treatment use has largely not been addressed in cardiovascular prognostic modelling studies. The absence of treatment information in reporting may lead to difficulties when validating or implementing a prognostic model, and may lead to uncertainty over whether a model will provide correct risk estimates when used in practice. Greater consideration is needed when collecting, reporting and handling treatment information.

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