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Development of an evidence-based model for predicting patient, provider, and appointment factors that influence no-shows in a rural healthcare system.

Abdul R ShourGarrett L JonesRonald AnguzuSuhail A DoiAdedayo A Onitilo
Published in: BMC health services research (2023)
Our findings demonstrate the feasibility of developing a predictive model based on administrative data from a predominantly rural healthcare system. Our new model distinguished between show and no-show appointments with high performance, and 1 overbook was advised for every 6 at-risk appointments. This data-driven approach to mitigating the impact of no-shows increases treatment availability in rural areas by overbooking appointment slots on days with an elevated risk of no-shows.
Keyphrases
  • south africa
  • case report
  • deep learning
  • artificial intelligence