Literature DB >> 25923926

Development of Disease-specific, Context-specific Surveillance Models: Avian Influenza (H5N1)-Related Risks and Behaviours in African Countries.

F O Fasina1,2, P M K Njage3, A M M Ali4, J M Yilma5, D G Bwala1, A L Rivas6, A J Stegeman2.   

Abstract

Avian influenza virus (H5N1) is a rapidly disseminating infection that affects poultry and, potentially, humans. Because the avian virus has already adapted to several mammalian species, decreasing the rate of avian-mammalian contacts is critical to diminish the chances of a total adaptation of H5N1 to humans. To prevent the pandemic such adaptation could facilitate, a biology-specific disease surveillance model is needed, which should also consider geographical and socio-cultural factors. Here, we conceptualized a surveillance model meant to capture H5N1-related biological and cultural aspects, which included food processing, trade and cooking-related practices, as well as incentives (or disincentives) for desirable behaviours. This proof of concept was tested with data collected from 378 Egyptian and Nigerian sites (local [backyard] producers/live bird markets/village abattoirs/commercial abattoirs and veterinary agencies). Findings revealed numerous opportunities for pathogens to disseminate, as well as lack of incentives to adopt preventive measures, and factors that promoted epidemic dissemination. Supporting such observations, the estimated risk for H5N1-related human mortality was higher than previously reported. The need for multidimensional disease surveillance models, which may detect risks at higher levels than models that only measure one factor or outcome, was supported. To develop efficient surveillance systems, interactions should be captured, which include but exceed biological factors. This low-cost and easily implementable model, if conducted over time, may identify focal instances where tailored policies may diminish both endemicity and the total adaptation of H5N1 to the human species.
© 2015 Blackwell Verlag GmbH.

Entities:  

Keywords:  Africa; Avian influenza; HPAI H5N1; Monte Carlo simulation; foodborne infection

Mesh:

Year:  2015        PMID: 25923926     DOI: 10.1111/zph.12200

Source DB:  PubMed          Journal:  Zoonoses Public Health        ISSN: 1863-1959            Impact factor:   2.702


  4 in total

1.  Predicting risk of avian influenza a(H5N1) in Egypt: the creation of a community level metric.

Authors:  Ellen C L Geerlings; Claire Heffernan
Journal:  BMC Public Health       Date:  2018-03-21       Impact factor: 3.295

Review 2.  Public health concerns of highly pathogenic avian influenza H5N1 endemicity in Africa.

Authors:  Olubunmi Gabriel Fasanmi; Ismail Ayoade Odetokun; Fatima Adeola Balogun; Folorunso Oludayo Fasina
Journal:  Vet World       Date:  2017-10-08

3.  Seroprevalence and characterization of Brucella species in cattle slaughtered at Gauteng abattoirs, South Africa.

Authors:  Francis B Kolo; Abiodun A Adesiyun; Folorunso O Fasina; Charles T Katsande; Banenat B Dogonyaro; Andrew Potts; Itumeleng Matle; Awoke K Gelaw; Henriette van Heerden
Journal:  Vet Med Sci       Date:  2019-08-14

Review 4.  Evolution and Reproducibility of Simulation Modeling in Epidemiology and Health Policy Over Half a Century.

Authors:  Mohammad S Jalali; Catherine DiGennaro; Abby Guitar; Karen Lew; Hazhir Rahmandad
Journal:  Epidemiol Rev       Date:  2022-01-14       Impact factor: 6.222

  4 in total

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