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Propensity score-integrated power prior approach for incorporating real-world evidence in single-arm clinical studies.

Chenguang WangHeng LiWei-Chen ChenNelson LuRam TiwariYunling XuLilly Q Yue
Published in: Journal of biopharmaceutical statistics (2019)
We are now at an amazing time for medical product development in drugs, biological products and medical devices. As a result of dramatic recent advances in biomedical science, information technology and engineering, ``big data'' from health care in the real-world have become available. Although big data may not necessarily be attuned to provide the preponderance of evidence to a clinical study, high-quality real-world data can be transformed into scientific evidence for regulatory and healthcare decision-making using proven analytical methods and techniques, such as propensity score methodology and Bayesian inference. In this paper, we extend the Bayesian power prior approach for a single-arm study (the current study) to leverage external real-world data. We use propensity score methodology to pre-select a subset of real-world data containing patients that are similar to those in the current study in terms of covariates, and to stratify the selected patients together with those in the current study into more homogeneous strata. The power prior approach is then applied in each stratum to obtain stratum-specific posterior distributions, which are combined to complete the Bayesian inference for the parameters of interest. We evaluate the performance of the proposed method as compared to that of the ordinary power prior approach by simulation and illustrate its implementation using a hypothetical example, based on our regulatory review experience.
Keyphrases
  • big data
  • healthcare
  • end stage renal disease
  • artificial intelligence
  • machine learning
  • chronic kidney disease
  • public health
  • electronic health record
  • decision making
  • prognostic factors
  • single cell
  • mass spectrometry