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Revista de la Facultad de Medicina
Print version ISSN 0120-0011
Abstract
QUERALES, Marvin et al. Discriminatory accuracy of serological tests for detecting Trypanosoma cruzi using the ROC curve and the standard methodology. rev.fac.med. [online]. 2020, vol.68, n.1, pp.107-116. ISSN 0120-0011. https://doi.org/10.15446/revfacmed.v68n1.71092.
Introduction:
Serological tests are used to confirm Trypanosoma cruzi infection and their discriminatory accuracy depends on the established decision threshold. Both, the standard methodology and the receiver operating characteristic (ROC) curve methodology allow obtaining such threshold.
Objective:
To compare the discriminatory accuracy of the standard methodology and the ROC curve methodology regarding serological tests for confirming T. cruzi infection.
Materials and methods:
A set of anti-T. cruzi antibodies values from subjects previously classified as healthy or as having Chagas disease were used, and computer simulations were performed under homoscedasticity and heteroscedasticity conditions. Sensitivity, specificity, 100% sensitivity, 100% specificity, and perfect-decision were calculated.
Results:
The discriminatory accuracy obtained with the standard methodology favored specificity (98.22% to 99.56%) over sensitivity (67.25% to 87.14%), while in the ROC curve methodology a balance between sensitivity (94.56% and 96.44%) and specificity (90.35% and 92.11%) was observed. Also, in the ROC curve methodology a greater perfect-decision ratio was observed, which, under homoscedasticity conditions, was >90%. Decisions thresholds were affected by het-eroscedasticity conditions.
Conclusion:
The ROC curve methodology showed better discriminatory accuracy, therefore its use for calculating decision thresholds in serological tests for detecting Chagas disease is recommended.
Keywords : Trypanosoma cruzi; Serology; ROC Curve; Sensitivity and Specificity (MeSH).