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Meningitis:

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Meningitis: The role of climate for prediction Andy Morse Ph.D. Department of Geography University of Liverpool A.P.Morse_at_liv.ac.uk Mark Cresswell Ph.D – PowerPoint PPT presentation

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Title: Meningitis:


1
  • Meningitis
  • The role of climate for prediction
  • Andy Morse Ph.D.
  • Department of Geography
  • University of Liverpool
  • A.P.Morse_at_liv.ac.uk

Mark Cresswell Ph.D EGS Manchester Metropolitan
University
2
1.0 Background
Meningococcal Meningitis
  • Bacterial meningitis (Neisseria meningitidis)
    causes epidemics
  • 12 serotypes are know only 4 cause epidemics A,
    B, C and W135
  • Group A generally causes epidemics in Africa
    although cases due to serogroups C, X and W135
    are found.
  • B and C are more common in the U.K.
  • Vaccines exist for A, C, X, Y and W135


3
1.1 Background
Meningococcal Meningitis
  • Transmitted person to person (sneezing, coughing,
    kissing) (military recruits, students)
  • Average period of incubation 4 days ( 2 to
    10days)
  • Estimated 10 to 25 carry the bacterial but can
    increase in epidemics
  • U.K. matter of education and seeking treatment


4
1.2 Background
Meningococcal Meningitis in Africa
  • Meningitis epidemic disease, highly seasonal -
    later half dry season
  • Epidemics every 5 to 10 years kills young
    adults as well as children
  • Climatic connections are not proven - low
    humidity (vapour pressure) and dust important
    factors
  • Epidemics cease with the onset of the rains

Figure from Cheesbrough,JS, Morse AP, Green
SDR. Meningococcal meningitis and carriage in
western Zaire a hypoendemic zone related to
climate? Epidemiology and Infection 1995 114
75-92

5
1.3 Background
West African Climate
  • Area dominated by seasonal rains produced by a
    monsoonal system
  • Strong latitudinal gradient in wetness and thus
    climates and vegetation
  • Monsoon system is complex and not well understood
  • Leads to large interannual climate


6
1.4 Background
West Africa Atlas

7
1.5 Background
West African Climate
  • Monsoon System and AMMA experiments


8
1.6 Background
West African Climate
NDVI February
NDVI August
From MARA eshaw website http//www.mara.org.za/esh
aw.htm

9
1.7 Background
Look at Hutchinson rainfall climate maps in unit
folder
West African Climate
Animation from University of Liverpool
Understanding Epidemics Website http//www.liv.ac.
uk/geography/research_projects/epidemics/MAL_intro
.htm Data from CLIVAR VACS Africa Climate Atlas
at University of Oxford

10
1.10 Background
Epidemic Cycles
  • Many infectious diseases, in the tropics, have a
    strong seasonal cycle related to the seasonal
    climatic cycles
  • Climatically anomalous years can lead to
    epidemics
  • Time between trigger threshold to epidemic peak
    often too short to take effective intervention
    need for skilful and timely seasonal climate
    forecast

Vaccine
Effect
Threshold

11

12
2.0 Linking climate to disease
Spatial Distribution Meningitis Epidemics
1841-1999 (n c.425) 1
Example for meningitis in Africa
  • Extensive literature search was undertaken to
    identify reported epidemics
  • Published and grey literature were consulted

1 Molesworth A.M., Thomson M.C., Connor S.J.,
Cresswell M.P., Morse A.P., Shears P., Hart C.A.,
Cuevas L.E. (2002) Where is the Meningitis Belt?,
Transactions of the Royal Society of Hygiene and
Tropical Medicine, 96, 242-249.

13
2.1 Linking climate to disease
Example for meningitis in Africa
  • Statistical Model to produce a map of risk
  • Epidemiological data and climatic and
    environmental variables
  • Risk factors
  • Land cover type and seasonal absolute humidity
    profile
  • Seasonal dust profile, Population density, Soil
    type
  • Significant but not included
  • in final model
  • Human factors not included

Molesworth, A.M., Cuevas,L.E., Connor, S.J.,
Morse A.P., Thomson, M.C. (2003). Environmental
risk and meningitis epidemics in Africa, Emerging
Infectious Diseases, 9 (10), 1287-1293.

14
2.2 Linking climate to disease
Example for meningitis in Africa
  • Cluster analysis to define areas with common
    seasonal cycle
  • Absolute humidity values
  • Used to produce
  • risk map shown above

Molesworth, A.M., Cuevas,L.E., Connor, S.J.,
Morse A.P., Thomson, M.C. (2003). Environmental
risk and meningitis epidemics in Africa, Emerging
Infectious Diseases, 9 (10), 1287-1293.

15
2.4 Linking climate to disease
Values to give an absolute humidity of about 10
gm-3
T (temperature celsius) T dew (celsius) e (vapour pressure hPa)

40 12.5 14.5
30 12 14
30 11.5 13.6
10 11 13.1

16
2.6 Linking climate to disease
Example for meningitis in Africa
  • Disease is complex and dry air and dust are not
    the only factors
  • Many human ones immunity, nutrition and
    co-infection
  • However the environmental variables may lead to
    the population becoming more susceptible
  • The environmental variables may be predictable
    months in advance.


17
3.0 Potential of Seasonal Forecasting
Background and applications
  • Probabilistic forecasts are made routinely
  • Statistical models more established more
    regionally and single variable orientated
    cannot work outside their training data can
    work well e.g. spring SST to summer rains (West
    Africa)
  • Dynamic models Ensemble Prediction Systems
    experimental also operational too
  • Loaded dice example loading and hence
    predictability changes with time and location


18
3.1 Potential of Seasonal Forecasting
Dynamic EPS products
  • Typical Products

from ECMWF

19
3.2 Potential of Seasonal Forecasting
Dynamic EPS products
  • Typical Products

from ECMWF Probabilistic Seasonal 2 to 4 month
lead time

20
3.3 Potential of Seasonal Forecasting
Combined products
International Research Institute for Climate
Prediction (IRI), Columbia University, New
York Seasonal Forecast 2 to 4 month lead time

21
3.4 Potential of Seasonal Forecasting
Dynamic EPS issues for users and producers
  • Tailored verification
  • Verification of user parameters
  • Scale downscaling
  • Bias correction
  • Weighting
  • Application model and method development run
    with EPS
  • Product derived time scale cut off medium,
    monthly, seasonal and beyond
  • Interdisciplinary nature of research
  • Taking of academic risk


22
3.5 Potential of Seasonal Forecasting
Product Verification
yellow through red - increasing predictive
skillwhite through dark blue - little or no
better than guesswork Units Gerrity skill
score
Met. Office Seasonal Forecast Precip. AMJ 2 to
4 month lead time

23
3.8 Potential of Seasonal Forecasting
Liverpool Malaria Model LMM
  • Dynamic model
  • Daily time step
  • Driven by temperature and precipitation
  • Observations, reanalysis, ensemble prediction
    systems
  • Developed within a probabilistic forecasting
    system DEMETER
  • Continuing in EMSEMBLES
  • Model details Hoshen, M.B.and Morse, A.P. (2004)
    A weather-driven model of malaria transmission,
    Malaria Journal, 332 (6th September 2004)
    doi10.1186/1475-2875-3-32 (14 pages)
  • Applied in an EPS in Morse, A.P., Doblas-Reyes,
    F., Hoshen, M.B., Hagedorn, R. and Palmer,
    T.N.(2005). A forecast quality assessment of an
    end-to-end probabilistic multi-model seasonal
    forecast system using a malaria model, Tellus A,
    57 (3), 464-475


24
4.0 Summary
The Forecasting Triangle
Providers
Users
Dissemination Feedback
Forecasts
Demand

Training Product Guidance and Development
Developers with users and providers

25
4.1 Summary
  • Probabilistic (and deterministic) forecasts are
    routinely produced operationally leads times days
    to seasons
  • This potential resource is under utilised by
    application user communities-
  • gaps in knowledge and awareness
  • issues with forecast skill and guidance in
    products
  • lack of user application know how and
    appropriate user application models


26
4.3 Summary
Current and recent research projects
  • DEMETER EU FP5
  • ENSEMBLES EU FP6
  • Addressing development and application of
    ensemble prediction systems
  • AMMA-EU FP6,
  • AMMA-UK NERC,
  • West African monsoon observations, modelling
    impacts


27
5.0 Conclusions
Infectious diseases must be modelled to allow use
within emerging long range forecast
technologies. Much has been done to bridge gaps
between forecaster and health user but still many
gaps Work is on going and a new epimeteorology
community is emerging

28
Websites
  • WHO meningitis site http//www.who.int/mediacent
    re/factsheets/fs141/en/
  • Meningitis Research Foundation
    http//www.meningitis.org/
  • EU and NERC funded AMMA improve ability to
    predict the West African Monsoon and its impacts
    on intra-seasonal to decadal timescales.
    http//www.amma-eu.org/ and http//amma.mediasfran
    ce.org/
  • EU funded ENSEMBLES probabilistic forecasts of
    climate variability and climate change over
    timescales of seasons to centuries and the
    application and potential impacts of these
    predictions. http//www.ensembles-eu.org/
  • Washington, R., Harrison, M, Conway, D., Black,
    E., Challinor, A., Grimes, D., Jones, R., Morse,
    A. and Todd, M (2004). African Climate Report - A
    report commissioned by the UK Government to
    review African climate science, policy and
    options for action, DFID/DEFRA, London, December
    2004, pp45 http//www.defra.gov.uk/environment/cli
    matechange/ccafrica-study/

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