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Post-test diagnostic accuracy measures under tree ordering of disease classes.

Hani SamawiMarwan AlsharmanMario KekoJing Kersey
Published in: Statistics in medicine (2023)
The medical field commonly employs post-test measures such as predictive values and likelihood ratios to assess diagnostic accuracy. Predictive values, including positive and negative values (PPV and NPV), indicate the probability that individuals have a target health condition based on test results. On the other hand, likelihood ratios, including positive and negative ratios (LR+ and LR- respectively), compare the probability of a particular test result between the diseased and non-diseased groups. While predictive values are useful in evaluating diagnostic test accuracy in populations with varying disease prevalence, likelihood ratios provide a direct link between pre-test and post-test probabilities in specific patients. In this study, we introduce and analyze a new approach called generalized predictive values and likelihood ratios, using a tree ordering of disease classes. We evaluate the effectiveness of these methods through simulation studies and illustrate their use with real data on lung cancer.
Keyphrases
  • healthcare
  • randomized controlled trial
  • end stage renal disease
  • public health
  • systematic review
  • chronic kidney disease
  • ejection fraction
  • risk assessment
  • climate change
  • newly diagnosed
  • big data
  • data analysis