摘要

Background: The analytical performance of qualitative and semi-quantitative tests is usually studied by calculating the fraction of positive results after replicate testing of a few specimens with known concentrations of the analyte. We propose using probit regression to model the probability of positive results as a function of the analyte concentration, based on testing many specimens once with a qualitative and a quantitative test.Methods: We collected laboratory data where urine specimens had been analyzed by both a urine albumin (protein') dipstick test (Combur-Test strips) and a quantitative test (BN ProSpec System). For each dipstick cut-off level probit regression was used to estimate the probability of positive results as a function of urine albumin concentration. We also used probit regression to estimate the standard deviation of the continuous measurement signal that lies behind the binary test response. Finally, we used probit regression to estimate the probability of reading a specific semi-quantitative dipstick result as a function of urine albumin concentration.Results: Based on analyses of 3259 specimens, the concentration of urine albumin with a 0.5 (50%) probability of positive result was 57mg/L at the lowest possible cut-off limit, and 246 and 750mg/L at the next (higher) levels. The corresponding standard deviations were 29, 83, and 217mg/L, respectively. Semi-quantitatively, the maximum probability of these three readings occurred at a u-albumin of 117, 420, and 1200mg/L, respectively.Conclusions: Probit regression is a useful tool to study the analytical performance of qualitative and semi-quantitative tests.

  • 出版日期2016