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SayPro’s data integrity form
SayPro Health Records Data Management Protocol
1. Curate: Select and Prepare Relevant Records
- Source Identification: Pull only verified electronic health records (EHRs) from SayPro-approved clinics, partner databases, and regional health surveys.
- Relevance Filtering: Focus on records related to:
- Priority health conditions (e.g., HIV, TB, maternal health)
- Active regions (urban/rural split)
- Recent timeframes (e.g., past 24 months)
- De-identification: Ensure all patient identifiers (names, IDs, contact info) are removed before uploading.
2. Clean: Validate and Format Records
- Use SayPro’s Data Integrity Form to enforce consistency:
- Check for missing fields (e.g., age, diagnosis code, date of visit)
- Correct format issues (e.g., date formats, measurement units)
- Validate against master lists (e.g., ICD-10 codes, facility names)
- Flag duplicates or suspicious entries for manual review
- Standardize terms (e.g., “HIV Positive” vs. “HIV+”)
🛠 Tip: Use Excel/CSV pre-load filters or Notion tables to assist with batch validation before SayPro web upload.
3. Categorize: Assign Tags and Organize Records
Each health record should be categorized using SayPro’s taxonomy:
Category | Subcategories/Tags |
---|---|
Disease Type | Infectious, Chronic, Maternal, Mental Health |
Geographic Region | Province, District, Urban/Rural |
Demographic | Child, Adult, Elderly, Gender |
Service Type | Outpatient, Emergency, Follow-up, Preventive |
Outcome | Recovered, Ongoing, Deceased |
Use dropdowns or predefined tag menus in the SayPro portal upload interface.
4. Upload and Trace:
- Log in to the SayPro portal
- Go to:
Health > EHR Upload > Data Integrity Submission
- Use the SayPro Data Integrity Form (attached in the portal)
- Fill in for each batch: Source, Curator Name, Timestamp, Notes
- Submit and validate via confirmation page and audit trail
5. Continuous Monitoring
- Revisit flagged or incomplete submissions weekly
- Ensure all uploaded data feeds into SayPro’s M&E dashboards
Link data to demographic and regional identifiers
Linking Health Data to Demographic & Regional Identifiers
1. Standardize Demographic Identifiers
Include the following fields in every health record:
Field | Format Example |
---|---|
Age | Integer (e.g., 32) |
Gender | Male / Female / Other |
Age Group | Child (0–14), Youth (15–24), etc. |
Ethnic Group | As per SayPro standard codes |
Socioeconomic Tier | Low / Middle / High Income |
Use SayPro’s demographic dropdown or mapping sheet to ensure consistency.
2. Attach Regional Identifiers
Map each record to spatial data points:
Field | Format Example |
---|---|
Province | Gauteng, KwaZulu-Natal, etc. |
District/Municipality | Tshwane, uMgungundlovu, etc. |
Health Facility Code | Unique SayPro-aligned code |
Urban/Rural Code | Urban / Rural / Peri-urban |
Geo-coordinates (if available) | Lat/Long |
Reference the official SayPro regional mapping table during upload.
3. Data Integration Process on SayPro Website
- During Upload via SayPro Data Integrity Form:
- Include demographic and regional columns for each record.
- Use dropdown menus to enforce accuracy (if uploading via portal).
- System-Level Linking:
- The SayPro backend links data entries to dashboards and mapping tools via unique identifiers (region codes, demographic tags).
- This enables real-time filtering and disaggregation for visualizations and reports.
4. Use Cases Enabled
- Regional Disease Surveillance (e.g., HIV prevalence in Eastern Cape vs. Limpopo)
- Targeted Policy Planning (e.g., maternal health access for low-income rural women)
- Equity Analysis (e.g., age- or gender-specific treatment gaps)
- Performance Reporting by Province and Demographic Segments
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