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Confidence Intervals and Sample Size to Compare the Predictive Values of Two Diagnostic Tests

Author

Listed:
  • José Antonio Roldán-Nofuentes

    (Department of Statistics, School of Medicine, University of Granada, 18016 Granada, Spain)

  • Saad Bouh Regad

    (Epidemiology and Public Health Research Unit and URMCD, University of Nouakchott Alaasriya, BP 880 Nouakchott, Mauritania)

Abstract

A binary diagnostic test is a medical test that is applied to an individual in order to determine the presence or the absence of a certain disease and whose result can be positive or negative. A positive result indicates the presence of the disease, and a negative result indicates the absence. Positive and negative predictive values represent the accuracy of a binary diagnostic test when it is applied to a cohort of individuals, and they are measures of the clinical accuracy of the binary diagnostic test. In this manuscript, we study the comparison of the positive (negative) predictive values of two binary diagnostic tests subject to a paired design through confidence intervals. We have studied confidence intervals for the difference and for the ratio of the two positive (negative) predictive values. Simulation experiments have been carried out to study the asymptotic behavior of the confidence intervals, giving some general rules for application. We also study a method to calculate the sample size to compare the parameters using confidence intervals. We have written a program in R to solve the problems studied in this manuscript. The results have been applied to the diagnosis of colorectal cancer.

Suggested Citation

  • José Antonio Roldán-Nofuentes & Saad Bouh Regad, 2021. "Confidence Intervals and Sample Size to Compare the Predictive Values of Two Diagnostic Tests," Mathematics, MDPI, vol. 9(13), pages 1-19, June.
  • Handle: RePEc:gam:jmathe:v:9:y:2021:i:13:p:1462-:d:579829
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    References listed on IDEAS

    as
    1. Roldán Nofuentes, José Antonio & Luna del Castillo, Juan de Dios & Montero Alonso, Miguel Ángel, 2012. "Global hypothesis test to simultaneously compare the predictive values of two binary diagnostic tests," Computational Statistics & Data Analysis, Elsevier, vol. 56(5), pages 1161-1173.
    2. Wendy Leisenring & Todd Alono & Margaret Sullivan Pepe, 2000. "Comparisons of Predictive Values of Binary Medical Diagnostic Tests for Paired Designs," Biometrics, The International Biometric Society, vol. 56(2), pages 345-351, June.
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