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Biogeographical patterns of African trypanosomoses for improved planning and implementation of field interventions

Authors :
Gilbert, Marius
Grégoire, Jean-Claude
Delespaux, Vincent F.P.
Geerts, Stanny
Wolff, Eléonore
Cecchi, Giuliano
Gilbert, Marius
Grégoire, Jean-Claude
Delespaux, Vincent F.P.
Geerts, Stanny
Wolff, Eléonore
Cecchi, Giuliano
Publication Year :
2011

Abstract

Spatially-explicit information is essential for planning and implementing interventions against vector-borne diseases. This is also true for African trypanosomoses, a group of diseases of both humans and animals caused by protozoa of the Genus Trypanosoma, and transmitted by tsetse flies (Genus Glossina).In this thesis the knowledge gaps and the requirements for an evidence-based decision making in the field of tsetse and trypanosomoses are identified, with a focus on georeferenced data and Geographic Information Systems (GIS). Datasets, tools and analyses are presented that aim to fill some of the identified knowledge gaps.For the human form of the disease, also known as sleeping sickness, case detection and treatment are the mainstay of control, so that accurate knowledge of the geographic distribution of infections is paramount. In this study, an Atlas was developed that provides village-level information on the reported occurrence of sleeping sickness. The geodatabase underpinning the Atlas also includes the results of active screening activities, even when no cases were detected. The Atlas enables epidemiological maps to be generated at a range of scales, from local to global, thus providing evidence for strategic and technical decision making.In the field of animal trypanosomosis control, also known as nagana, much emphasis has recently been placed on the vector. Accurate delineation of tsetse habitat appears as an essential component of ongoing and upcoming interventions against tsetse. The present study focused on land cover datasets and tsetse habitat. The suitability for tsetse of standardized land cover classes was explored at continental, regional and national level, using a combination of inductive and deductive approaches. The land cover classes most suitable for tsetse were identified and described, and tailored datasets were derived.The suite of datasets, methodologies and tools presented in this thesis provides evidence for informed plan<br />Doctorat en Sciences agronomiques et ingénierie biologique<br />info:eu-repo/semantics/nonPublished

Details

Database :
OAIster
Notes :
1 v. (37 p.), 2 full-text file(s): application/pdf | application/pdf, French
Publication Type :
Electronic Resource
Accession number :
edsoai.ocn921615247
Document Type :
Electronic Resource