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Comparison of Bayesian approaches for developing prediction models in rare disease: application to the identification of patients with Maturity-Onset Diabetes of the Young.

Katie G YoungTimothy James McDonaldKashyap Amratlal PatelEwan R PearsonAndrew T HattersleyBeverley M ShieldsTrevelyan J McKinley
Published in: BMC medical research methodology (2024)
We have compared several approaches that could be used to develop prediction models for rare diseases. Our findings highlight the recalibration mixture model as the optimal strategy if a population-level dataset is available. This approach offers the flexibility to incorporate additional predictors and informed prior probabilities, contributing to enhanced prediction accuracy for rare diseases. It also allows predictions without these additional tests, providing additional information on whether a patient should undergo further biomarker testing before genetic testing.
Keyphrases
  • type diabetes
  • cardiovascular disease
  • case report
  • healthcare
  • adipose tissue
  • skeletal muscle
  • metabolic syndrome
  • insulin resistance
  • clinical evaluation