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  1. 2. Data Assembly and Management
  2. 2.9 Modeled Data
  3. Generating spatial modeled estimates
  • Code library for subnational tailoring
    English version
  • 1. Getting Started
    • 1.1 About and Contact Information
    • 1.2 For Everyone
    • 1.3 For the SNT Team
    • 1.4 For Analysts
    • 1.5 Producing High-Quality Outputs
  • 2. Data Assembly and Management
    • 2.1 Working with Shapefiles
      • Spatial data overview
      • Basic shapefile use and visualization
      • Shapefile management and customization
      • Merging shapefiles with tabular data
    • 2.2 Health Facilities Data
      • Fuzzy matching of names across datasets
      • Health facility coordinates and point data
    • 2.3 Routine Surveillance Data
      • Routine data extraction
      • DHIS2 data preprocessing
      • Determining active and inactive status
      • Contextual considerations
      • Missing data detection methods
      • Health facility reporting rate
      • Data coherency checks
      • Outlier detection methods
      • Imputation methods
      • Final database
    • 2.4 Stock Data
      • LMIS
    • 2.5 Population Data
      • National population data
      • WorldPop population raster
    • 2.6 National Household Survey Data
      • DHS data overview and preparation
      • Prevalence of malaria infection
      • All-cause child mortality
      • Treatment-seeking rates
      • ITN ownership, access, and usage
      • Wealth quintiles analysis
    • 2.7 Entomological Data
      • Entomological data
    • 2.8 Climate and Environmental Data
      • Climate and environment data extraction from raster
    • 2.9 Modeled Data
      • Generating spatial modeled estimates
      • Working with geospatial model estimates
      • Modeled estimates of malaria mortality and proxies
      • Modeled estimates of entomological indicators
  • 3. Stratification
    • 3.1 Epidemiological Stratification
      • Incidence overview and crude incidence
      • Incidence adjustment 1: incomplete testing
      • Incidence adjustment 2: incomplete reporting
      • Incidence adjustment 3: treatment-seeking
      • Incidence stratification
      • Prevalence and mortality stratification
      • Combined risk categorization
      • Risk categorization REMOVE?
      • Risk categorization REMOVE?
    • 3.2 Stratification of Determinants of Malaria Transmission
      • Seasonality
      • Access to Care
  • 4. Review of Past Interventions
    • 4.1 Case Management
    • 4.2 Routine Interventions
    • 4.3 Campaign Interventions
    • 4.4 Other Interventions
  • 5. Targeting of Interventions
  • 6. Retrospective Analysis
    • 6.1: Trend analysis
  • 7. Urban Microstratification

On this page

  • ⚠️ Section Under Development
  1. 2. Data Assembly and Management
  2. 2.9 Modeled Data
  3. Generating spatial modeled estimates

Generating spatial modeled estimates

⚠️ Section Under Development

Example use case of producing prevalence estimates

Draft outline (from Bea’s notes):

  • Step 1: obtain prevalence estimates from the sources of data available (survey reports, literature, etc) through time - highlight the need to consider the sampling weights if this is going to be done manually (and offer some code examples)

    Ensure that prevalence data are available to define the “baseline” transmission (before community-based prevention interventions were scaled up).

  • Step 2: Use spatio-temporal models to produce prevalence estimates for all units of analysis and periods of time possible.

    For this, the page should recommend working with an analysis partner (local or global) with these capacities and providing a list of considerations for the SNT team to focus on throughout this process (for example, review of covariates, review of results through interpretable outputs, etc)

    Consider providing some examples of packages (INLA) or documentation that independent analysts would like to use to ensure they are taking into consideration the main aspects for malaria transmission modeling (for ex: rainfall with a lag, elevation for mosquito presence, etc).

    Here MAP can be mentioned as a source of info, and ideally with contacts to the East Africa Node, explanations of their modeling approach, etc.

    We could also recommend and link to the mbg package if we like it.

  • Step 3: Production of results

    If the geospatial modeled results are presented in rasters, then, how to use rasters to obtain results at the appropriate level (this is on the Working with Geospatial Modeled Estimates page).

 

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