Login / Signup

Detecting local risk factors for residual malaria in northern Ghana using Bayesian model averaging.

Justin J MillarPaul PsychasBenjamin AbuakuCollins AhorluPunam AmratiaKwadwo KoramSamuel OppongDenis Valle
Published in: Malaria journal (2018)
This modelling framework offers an alternative approach to disease risk factor analysis that generates interpretable models, can reveal complex, nonlinear relationships, incorporates uncertainty in model selection, and produces accurate predictions. Certain modelling applications, such as designing targeted local interventions, require more sophisticated statistical methods which are capable of handling a wide range of relevant data while maintaining interpretability and predictive performance, and directly characterize uncertainty. To this end, BMA represents a valuable tool for constructing more informative models for understanding risk factors for malaria, as well as other vector-borne and environmentally mediated diseases.
Keyphrases
  • plasmodium falciparum
  • risk factors
  • physical activity
  • electronic health record
  • cancer therapy
  • high resolution
  • big data
  • genome wide
  • gene expression
  • artificial intelligence
  • drug delivery