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  "Description": "Bayesian dynamic borrowing with covariate adjustment via\ninverse probability weighting for simulations and data analyses\nin clinical trials. This makes it easy to use propensity score\nmethods to balance covariate distributions between external and\ninternal data. This methodology based on Psioda et al (2025)\n<doi:10.1080/10543406.2025.2489285>.",
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