Step 1.1 – Select PPA Metrics
On this page, select the metrics to include in your PPA visuals. All PPAs must include Number of Facilities; Care Seeking; and at least one Diagnostic or Treatment. A PPA may optionally include more than one form of diagnosis (up to four) and/or more than one form of treatment (up to four).
Step 1.2 – Customize PPA Metric Names
This page gives you the option to overwrite the default names for PPA metrics with custom names. This is particularly recommended for service availability metrics in order to provide more a descriptive label for the service (e.g. “Smear Microscopy” and “GeneXpert” in lieu of “Diagnostic 1” and “Diagnostic 2”). With this step complete, proceed to Step 2.1.
Step 3.1 – Identify Global Variables
Global variables are essential for mapping each data source to the common patient pathway. For example, a “Private Hospital” in one dataset may appear as a “Religious Hospital” or “NGO Hospital” in another data set. Similarly, “Capital Region” from one dataset may appear as “Region 1” in another data set. Before you can map values from one data set to another, you must identify the columns containing the values to be mapped. These are columns for Facility Type, Health Sector, and Level of Geographic Aggregation.
On this page, select a column for Facility Type, or Health Sector, or both – for each data source. Some data sources include data on health facility sector and type as one variable (e.g. “Private Health Center” could be a value in the Facility Type column), whereas other data sources split sector and type into two variables (e.g. “Private” for Sector and “Health Center” for Facility Type). Either structure is fine; identify columns for Sector and Facility Type only if they are both necessary.
Step 3.2 – Identify Service Availability Variables
On this step, the wizard displays each Service Availability metric included in the PPA (per your specifications in Step 1.1). For each health service listed on the left, select the column from the corresponding data source that indicates whether the service is available. After selecting the column, a list of the values it contains will appear on the right. Check the box(es) indicating the service is present.
The raw data may, for example, include a column titled “Service A Present” containing yes/no values . Or, it may include a column like “Services Present,” with values A, B, C, none, etc. Either structure will work within the wizard. After identifying service availability variables from the data sets and specifying the values corresponding to service availability, proceed to Step 4.1.
Step 5.1 – Define PPA Geographies
Steps 5.1 and 5.2 pertain to subnational PPAs only. If conducting a national-level PPA, proceed directly to Step 6.1.
If conducting a subnational PPA, your team determined the Level of Geographic Aggregation when creating the PPA on the Team PPAs page. In Step 3.1, you selected the column from each data source containing the geographies. For example, the columns containing values for “Region.”
It is likely that the geographies included in each of your data sources are not identical. The data sources may contain the same set of geographies represented with different names, spellings, abbreviations, or numeric codes. Or, there may be some slight variation across data sources in the true administrative areas that are represented. Defining your PPA Geographies is the first step to addressing this situation.
On this page, specify the “master” geographies that you wish to use for the PPA; these are your PPA Geographies. The wizard will generate a PPA for each PPA Geography listed here. You may create a list of PPA Geographies anew if desired. To do so, click “create new” for each geography to include. It is likely, however, that one of your data sources contains the exact geographies you wish to use or comes close. In this case, select the data source from the dropdown menu and click “populate PPA Geographies from this data source.” The geographies for that data source will then appear. The list is just a starting point; change spellings, add geographies, or remove geographies if desired. When you are satisfied with the PPA Geographies listed on this page, move to Step 5.2.
Step 5.2 – Map Data Source Geographies to PPA Geographies
If conducting a subnational PPA, your team created a list of PPA Geographies in Step 5.1. On this page you map the geographies from each dataset to your PPA Geographies.
Highlight a data source on the left of the screen. The wizard then displays all geographies in the selected dataset on the right of the screen.
Assign each geography from the dataset to the appropriate PPA Geography via the dropdown menus. Note that some dropdowns may be auto-filled. This happens in two scenarios:
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- The data source highlighted was the one selected to populate PPA Geographies
- It happens that the geographies contained in a data source match the PPA Geographies exactly
Also note: It is okay to assign multiple geographies from a data source to a given PPA Geography (see tips from Step 5.1 regarding situations where this may apply).
For regions from the DHS individual recode, look up v024 in the .FRW to see the labels that correspond to the numerically coded values. In the example, numeric codes correspond to the five regions reflected in the survey.
You must assign each geography from each data source to a PPA Geography before moving on to Step 6.1 to generate PPAs.