Statistical properties of parasite density estimators in malaria and field applications

Pas de résumé en français === Malaria is a devastating global health problem that affected 219 million people and caused 660,000 deaths in 2010. Inaccurate estimation of the level of infection may have adverse clinical and therapeutic implications for patients, and for epidemiological endpoint measu...

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Main Author: Hammami, Imen
Other Authors: Paris 5
Language:en
Published: 2013
Subjects:
Online Access:http://www.theses.fr/2013PA05T087/document
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spelling ndltd-theses.fr-2013PA05T0872019-12-21T03:31:26Z Statistical properties of parasite density estimators in malaria and field applications Propriétés statistiques des estimateurs de la densité parasitaire dans les études portant sur le paludisme et applications opérationnelles Paludisme Malaria epidemiology Threshold-based counting techniques Parasite density estimators Mean error Coefficient of variation False-negative rates Cost-effectiveness Parasite and leukocyte counts per high-power field Poisson distribution Overdispersion Heterogeneity Negative binomial distribution Mixture models HMMs Patent 570.151 95 Pas de résumé en français Malaria is a devastating global health problem that affected 219 million people and caused 660,000 deaths in 2010. Inaccurate estimation of the level of infection may have adverse clinical and therapeutic implications for patients, and for epidemiological endpoint measurements. The level of infection, expressed as the parasite density (PD), is classically defined as the number of asexual parasites relative to a microliter of blood. Microscopy of Giemsa-stained thick blood smears (TBSs) is the gold standard for parasite enumeration. Parasites are counted in a predetermined number of high-power fields (HPFs) or against a fixed number of leukocytes. PD estimation methods usually involve threshold values; either the number of leukocytes counted or the number of HPFs read. Most of these methods assume that (1) the distribution of the thickness of the TBS, and hence the distribution of parasites and leukocytes within the TBS, is homogeneous; and that (2) parasites and leukocytes are evenly distributed in TBSs, and thus can be modeled through a Poisson-distribution. The violation of these assumptions commonly results in overdispersion. Firstly, we studied the statistical properties (mean error, coefficient of variation, false negative rates) of PD estimators of commonly used threshold-based counting techniques and assessed the influence of the thresholds on the cost-effectiveness of these methods. Secondly, we constituted and published the first dataset on parasite and leukocyte counts per HPF. Two sources of overdispersion in data were investigated: latent heterogeneity and spatial dependence. We accounted for unobserved heterogeneity in data by considering more flexible models that allow for overdispersion. Of particular interest were the negative binomial model (NB) and mixture models. The dependent structure in data was modeled with hidden Markov models (HMMs). We found evidence that assumptions (1) and (2) are inconsistent with parasite and leukocyte distributions. The NB-HMM is the closest model to the unknown distribution that generates the data. Finally, we devised a reduced reading procedure of the PD that aims to a better operational optimization and a practical assessing of the heterogeneity in the distribution of parasites and leukocytes in TBSs. A patent application process has been launched and a prototype development of the counter is in process. Electronic Thesis or Dissertation Text en http://www.theses.fr/2013PA05T087/document Hammami, Imen 2013-06-24 Paris 5 Nuel, Grégory Garcia, André
collection NDLTD
language en
sources NDLTD
topic Paludisme
Malaria epidemiology
Threshold-based counting techniques
Parasite density estimators
Mean error
Coefficient of variation
False-negative rates
Cost-effectiveness
Parasite and leukocyte counts per high-power field
Poisson distribution
Overdispersion
Heterogeneity
Negative binomial distribution
Mixture models
HMMs
Patent
570.151 95
spellingShingle Paludisme
Malaria epidemiology
Threshold-based counting techniques
Parasite density estimators
Mean error
Coefficient of variation
False-negative rates
Cost-effectiveness
Parasite and leukocyte counts per high-power field
Poisson distribution
Overdispersion
Heterogeneity
Negative binomial distribution
Mixture models
HMMs
Patent
570.151 95
Hammami, Imen
Statistical properties of parasite density estimators in malaria and field applications
description Pas de résumé en français === Malaria is a devastating global health problem that affected 219 million people and caused 660,000 deaths in 2010. Inaccurate estimation of the level of infection may have adverse clinical and therapeutic implications for patients, and for epidemiological endpoint measurements. The level of infection, expressed as the parasite density (PD), is classically defined as the number of asexual parasites relative to a microliter of blood. Microscopy of Giemsa-stained thick blood smears (TBSs) is the gold standard for parasite enumeration. Parasites are counted in a predetermined number of high-power fields (HPFs) or against a fixed number of leukocytes. PD estimation methods usually involve threshold values; either the number of leukocytes counted or the number of HPFs read. Most of these methods assume that (1) the distribution of the thickness of the TBS, and hence the distribution of parasites and leukocytes within the TBS, is homogeneous; and that (2) parasites and leukocytes are evenly distributed in TBSs, and thus can be modeled through a Poisson-distribution. The violation of these assumptions commonly results in overdispersion. Firstly, we studied the statistical properties (mean error, coefficient of variation, false negative rates) of PD estimators of commonly used threshold-based counting techniques and assessed the influence of the thresholds on the cost-effectiveness of these methods. Secondly, we constituted and published the first dataset on parasite and leukocyte counts per HPF. Two sources of overdispersion in data were investigated: latent heterogeneity and spatial dependence. We accounted for unobserved heterogeneity in data by considering more flexible models that allow for overdispersion. Of particular interest were the negative binomial model (NB) and mixture models. The dependent structure in data was modeled with hidden Markov models (HMMs). We found evidence that assumptions (1) and (2) are inconsistent with parasite and leukocyte distributions. The NB-HMM is the closest model to the unknown distribution that generates the data. Finally, we devised a reduced reading procedure of the PD that aims to a better operational optimization and a practical assessing of the heterogeneity in the distribution of parasites and leukocytes in TBSs. A patent application process has been launched and a prototype development of the counter is in process.
author2 Paris 5
author_facet Paris 5
Hammami, Imen
author Hammami, Imen
author_sort Hammami, Imen
title Statistical properties of parasite density estimators in malaria and field applications
title_short Statistical properties of parasite density estimators in malaria and field applications
title_full Statistical properties of parasite density estimators in malaria and field applications
title_fullStr Statistical properties of parasite density estimators in malaria and field applications
title_full_unstemmed Statistical properties of parasite density estimators in malaria and field applications
title_sort statistical properties of parasite density estimators in malaria and field applications
publishDate 2013
url http://www.theses.fr/2013PA05T087/document
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