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Propensity Score Methods in Rare Disease: A Demonstration Using Observational Data in Systemic Lupus Erythematosus.

Ibrahim AlmaghlouthEleanor PullenayegumDafna D GladmanMurray B UrowitzSindhu R Johnson
Published in: The Journal of rheumatology (2020)
Observational studies allow researchers to understand the natural history of rheumatic conditions, risk factors for disease development, and factors affecting important disease-related outcomes, and to estimate treatment effect from real-world data. However, this design carries a risk of confounding bias. A propensity score (PS) is a balancing score that aims to minimize the difference between study groups and consequently potential confounding effects. The score can be applied in 1 of 4 methods in observational research: matching, stratification, adjustment, and inverse probability weighting. Systemic lupus erythematosus (SLE) is a rare disease characterized by a relatively small sample size and/or low event rates. In this article, we review the PS methods. We demonstrate application of the PS methods to achieve study group balance in a rare disease using an example of risk of infection in SLE patients with hypogammaglobulinemia.
Keyphrases
  • systemic lupus erythematosus
  • disease activity
  • electronic health record
  • cross sectional
  • type diabetes
  • machine learning
  • risk assessment
  • big data
  • insulin resistance
  • adipose tissue