Better Predictions using Big(ger) Data Sets

Better Predictions using Big(ger) Data Sets
Speaker: Thomas Debray
  • 9th Aug 2018
  • 9:00 AM TO 10:00 AM
  • Clinical Epidemiology and Evidence-based Medicine, Faculty of Medicine and Cipto Mangunkusumo Hospital
  • Jakarta, Indonesia

Clinical prediction models (CPM) are an important tool in contemporary medical decision making and abundant in the medical literature. These models estimate the probability/risk that a certain condition is present or will occur in the future by combining information from multiple variables (predictors) from an individual, e.g. predictors from patient history, physical examination or medical testing. Unfortunately, many CPM predict much worse than anticipated during their development. A major reason for unsatisfactory performance and limited use in clinical practice is that they are typically developed from relatively small datasets, and subsequently used in populations/settings too different from the original development population/setting, without proper validation and adaptation to the new situation. In this talk, I will discuss how we can investigate, quantify and improve the generalizability of prediction models by utilizing big datasets from e-health records and/or meta-analyses with individual participant data.

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