Abstract

Like many infectious diseases, there is no practical gold standard for diagnosing clinical visceral leishmaniasis (VL). Latent class modeling has been proposed to estimate a latent gold standard for identifying disease. These proposed models for VL have leveraged information from diagnostic tests with dichotomous serological and PCR assays, but have not employed continuous diagnostic test information. In this paper, we employ Bayesian latent class models to improve the identification of canine visceral leishmaniasis using the dichotomous PCR assay and the Dual Path Platform (DPP) serology test. The DPP test has historically been used as a dichotomous assay, but can also yield numerical information via the DPP reader. Using data collected from a cohort of hunting dogs across the United States, which were identified as having either negative or symptomatic disease, we evaluate the impact of including numerical DPP reader information as a proxy for immune response. We find that inclusion of DPP reader information allows us to illustrate changes in immune response as a function of age. Utilization of continuous DPP reader information can improve the correct discrimination between individuals that are negative for disease and those with clinical VL. These models provide a promising avenue for diagnostic testing in contexts with multiple, imperfect diagnostic tests. Specifically, they can easily be applied to human visceral leishmaniasis when diagnostic test results are available. Also, appropriate diagnosis of canine visceral leishmaniasis has important consequences for curtailing spread of disease to humans.

Highlights

  • Leishmaniasis is a neglected tropical disease that is endemic in 98 countries and three territories

  • While these models were developed in the context of a canine population, the methods, as well as possible extensions, are applied to human visceral leishmaniasis (VL), where similar diagnostic tests and clinical examinations are utilized in disease diagnosis

  • It is important to note that effectively diagnosing canine visceral leishmaniasis (CVL) has important consequences for curtailing human VL infection, since dogs serve as the primary animal reservoir [3]

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Summary

Introduction

Leishmaniasis is a neglected tropical disease that is endemic in 98 countries and three territories. In the Americas, this infection is caused by the parasite Leishmania infantum (L. infantum) and is zoonotic; dogs are recognized as the main animal reservoir [3]. In this capacity, canine visceral leishmaniasis (CVL) is a significant risk factor for human disease, which makes disease identification in dogs critical to public health [4–6]. Latent class modeling has been proposed to estimate a latent gold standard for identifying disease. These proposed models for VL have leveraged information from diagnostic tests with dichotomous serological and PCR assays, but have not employed continuous diagnostic test information

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