3.8 Article

Statistical correction for non-parallelism in a urinary enzyme immunoassay

期刊

JOURNAL OF IMMUNOASSAY & IMMUNOCHEMISTRY
卷 25, 期 3, 页码 259-278

出版社

TAYLOR & FRANCIS INC
DOI: 10.1081/IAS-200028078

关键词

EIG; EIA; urinary reproductive steroids; 3F11 clone; assay validation; linear mixed effects model

资金

  1. NIA NIH HHS [5 T32 AG00208, R01 AG14579, R01 AG15141] Funding Source: Medline
  2. NICHD NIH HHS [R24 HD42828, 2 P30 HD28263] Funding Source: Medline

向作者/读者索取更多资源

Our aim was to develop a statistical method to correct for non-parallelism in an estrone-3-glucuronide (E1G) enzyme immunoassay (EIA). Non-parallelism of serially diluted urine specimens with a calibration curve was demonstrated in an EIA for E1G. A linear mixed-effects analysis of 40 urine specimens was used to model the relationship of E1G concentration with urine volume and derive a statistical correction. The model was validated on an independent sample and applied to 30 menstrual cycles from American women. Specificity, detection limit, parallelism, recovery, correlation with serum estradiol, and imprecision of the assay were determined. Intra-and inter-assay CVs were less than 14% for high- and low-urine controls. Urinary E1G across the menstrual cycle was highly correlated with serum estradiol (r = 0.94). Non-parallelism produced decreasing E1G concentration with increase in urine volume (slope = -0.210, p < 0.0001). At 50% inhibition, the assay had 100% cross-reactivity with E1G and 83% with 17beta-estradiol 3-glucuronide. The dose-response curve of the latter did not parallel that of E1G and is a possible cause of the non-parallelism. The statistical correction adjusting E1G concentration to a standardized urine volume produced parallelism in 24 independent specimens (slope = -0.043 +/- 0.010), and improved the average CV of E1G concentration across dilutions from 19.5% +/- 5.6% before correction to 10.3% +/- 5.3% after correction. A statistical method based on linear mixed effects modeling is an expedient approach for correction of non-parallelism, particularly for hormone data that will be analyzed in aggregate.

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