Revisão Acesso aberto Produção Nacional Revisado por pares

Propensity Score Methods in Health Technology Assessment: Principles, Extended Applications, and Recent Advances

2019; Frontiers Media; Volume: 10; Linguagem: Inglês

10.3389/fphar.2019.00973

ISSN

1663-9812

Autores

M Sanni Ali, Daniel Prieto‐Alhambra, Luciane Cruz Lopes, Dandara de Oliveira Ramos, Nívea Bispo, Maria Yury Ichihara, Júlia Moreira Pescarini, Elizabeth Williamson, Rosemeire Leovigildo Fiaccone, Maurício L. Barreto, Liam Smeeth,

Tópico(s)

Statistical Methods in Clinical Trials

Resumo

Randomized clinical trials (RCTs) are considered the gold-standard approach to estimate effects of treatment on outcomes. They are also the designs of choice for health technology assessment (HTA). Randomization ensures comparability, in both measured and unmeasured pre-treatment characteristics, of patients assigned to treatment and control or comparator. However, even adequately powered RCTs are not always feasible for reasons such as cost, time, ethical, and practical constraints. RCTs rely on data collected on selected, homogeneous population under highly controlled conditions; hence, they provide evidence on efficacy of interventions rather than on effectiveness. Alternatively, observational studies can can provide evidence on the relative effectiveness or safety of a health technology compared to one or more alternatives when provided under the routine setting of health care practice. In observational studies, however, treatment assignment is a non-random process hence treatment groups may not be comparable in their pre-treatment characteristics. As a result, direct comparison of outcomes between treatment groups lead to biased estimate of treatment effect. Propensity score methods have been used to achieve comparability of treatment groups in terms of their measured pre-treatment covariates and thereby controlling for confounding bias in estimating treatment effects. Despite the popularity of propensity scores methods and recent important advances, misunderstandings on their applications and limitations are too common. In this article, we provide a review of the methods, extended applications, recent advances, strengths and limitations.

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