| Literature DB >> 27835976 |
Esther Achieng Onyango1, Oz Sahin2,3, Alex Awiti4, Cordia Chu5, Brendan Mackey3.
Abstract
BACKGROUND: Malaria is one of the key research concerns in climate change-health relationships. Numerous risk assessments and modelling studies provide evidence that the transmission range of malaria will expand with rising temperatures, adversely impacting on vulnerable communities in the East African highlands. While there exist multiple lines of evidence for the influence of climate change on malaria transmission, there is insufficient understanding of the complex and interdependent factors that determine the risk and vulnerability of human populations at the community level. Moreover, existing studies have had limited focus on the nature of the impacts on vulnerable communities or how well they are prepared to cope. In order to address these gaps, a systems approach was used to present an integrated risk and vulnerability assessment framework for studies of community level risk and vulnerability to malaria due to climate change.Entities:
Keywords: Climate change and malaria risk; Climate change impact on malaria transmission; East Africa; Integrated risk and vulnerability assessment; Systems approach
Mesh:
Year: 2016 PMID: 27835976 PMCID: PMC5105305 DOI: 10.1186/s12936-016-1600-3
Source DB: PubMed Journal: Malar J ISSN: 1475-2875 Impact factor: 2.979
Fig. 1A flow chart showing the adapted systems modelling process
Variables in climate change and malaria transmission identified from literature review and expert consultation
| No | Variables | Description | Source |
|---|---|---|---|
|
| |||
| 1 | Air temperature | Air temperature suitable for malaria transmission i.e. between 16 and 34 °C | [ |
| 2 | Water temperature | Mosquito habitat temperature suitable for breeding | [ |
| 3 | El-Nino | Periods of extreme rainfall | [ |
| 4 | Average rainfall/precipitation | Mean monthly rainfall of at least 150 mm; rainfall season | [ |
| 5 | Relative humidity | Amount of water vapour present in air | [ |
| 6 | Altitude | Height/distance above sea level | [ |
| 7 | Micro-habitat changes | Changes in mosquito habitat micro-climate due to loss of forest cover or other environmental controls such as clearing of bushes | [ |
| 8 | Topography | Physical land surface including hills and valleys, elevation | [ |
| 9 | Topographic wetness index | Percentage of ground water saturation of at least 5% for suitable mosquito breeding site | [ |
| 10 | Wetlands and water bodies | Proximity to swamps and other stagnant water bodies | [ |
| 11 | Bare areas | Land without forest cover or other vegetation | [ |
| 12 | Forest edge | Human proximity to forest boundaries and potential exposure to exposed mosquito breeding sites due to deforestation | [ |
| 13 | Agriculture | Land clearance, planting, livestock and maize farming, swamp drainage and farming, and water management i.e. water conservation using shallow wells, small-scale irrigation and creation of water drainage channels | [ |
| 14 | Vector abundance | Increase in numbers of malaria mosquitoes | [ |
| 15 | Vector biting | Likelihood of an infective bite from a mosquito | [ |
| 16 | Vector infection rate | Efficiency of transmission and infection with the malaria parasite by the mosquito | [ |
| 17 | Vector adaptive behaviour | Changes in mosquito vector behaviour such as early biting or indoor resting | Expert input |
| 18 | Population under 5 years | Number of individuals under 5 years old | [ |
| 19 | Immune status | Lowered immunity to malaria due to pregnancy or inexposure; acquired immunity to malaria from long term exposure | [ |
| 20 | Interactions | Co-infections with other diseases such as HIV increase likelihood and severity of infection | [ |
| 21 | Drug resistance | Resistance of the malaria parasite to drugs/parasite evolution | [ |
|
| |||
| 22 | Urbanisation | Expansion of urban areas and overcrowding in cities | [ |
| 23 | Population migration/travel | Movement of people from low risk areas to malaria-endemic or epidemic-prone areas and vice versa | [ |
| 24 | Nutritional status | Poor health as a result of undernutrition or malnutrition | [ |
| 25 | Gender | Gender roles, expectations and cultural customs | [ |
| 26 | Poverty | Socio-economic conditions; household income, food and household assets | [ |
| 27 | Religious beliefs | Religion or superstitions in understanding or managing malaria and/or climate change impacts | [ |
| 28 | Perception | Knowledge and understanding of disease | [ |
| 29 | Type of house | House with grass-thatched roof and mud walls (semi-permanent) or Bbrick house with tiled or aluminium roof (permanent); house with separate kitchen, house with ceiling and house with open eaves | [ |
| 30 | Education level of household head | Education level of male or female head of household | [ |
| 31 | Health-seeking behaviour | Willingness to seek treatment for malaria; households with malaria medicine in stock, self-medication, tradition/cultural norms and practices in malaria management | [ |
| 32 | Net use | Use of insecticide-treated bed nets to prevent malaria infection | [ |
| 33 | Environmental controls | Keeping area around the houses cleared of shrubs and other overgrowth; safe disposal of plastics and other water-retaining containers | [ |
| 34 | Quality of health systems | Health services and policy; availability of health facilities; access to healthcare; quality of healthcare and capacity for malaria treatment | [ |
| 35 | Malaria vector control | Distribution and coverage of insecticide-treated bed nets by the government; coverage of households sprayed with malaria insecticide (indoor residual spraying) | [ |
| 36 | Quality of information | Reliable and easy to understand information systems for communicating weather and climate information or early warning systems for malaria epidemics | [ |
Fig. 2Direct influence-dependence map of variables of the climate change and malaria transmission system
Fig. 3A systems conceptual model detailing the causal relationships between variables in the malaria transmission system
Fig. 4An integrated assessment framework to guide studies of climate change and malaria risk and vulnerability