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I am looking for verified data partners who can supply fully de-identified, structured EHR/EMR datasets focused on chronic disease patients. The core conditions I must see in the file are Diabetes, Hypertension, Cardiovascular Disease and Cancer; additional chronic illnesses are welcome if already captured in your system. Geography matters: records originating from Nigeria, Kenya or South Africa are my first choice, but I will happily review submissions from Uganda or any other African country if the data meet quality standards. Volume: I need at least 5,000 complete patient records and can work with up to 50,000 in a single hand-off. Please deliver the dataset in Excel format; a well-structured PDF is also acceptable if that is how the source is stored, though Excel is preferred for immediate analysis. To qualify, every record must be stripped of direct identifiers yet still include: • Patient demographics – age and gender • Diagnoses with ICD-10 (or local equivalents) • Medication and prescription history • Lab results; embed related images where available • Visit or admission timestamps and facility identifiers Before awarding the project I will request a small sample so I can verify de-identification, field completeness and overall consistency. Once approved, we will agree on a secure transfer method and a simple milestone schedule tied to data validation. If you already steward a compliant dataset that matches these criteria, let me know the condition mix, country coverage and record count you can provide, and we can move forward quickly.
Project ID: 40364153
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Active 8 days ago
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2 freelancers are bidding on average ₹412,500 INR for this job

Noticing your focus on EHR datasets from specific African countries, it's clear geography is crucial. Recently worked with a Nigerian healthcare project, I sourced de-identified data emphasizing chronic conditions like Diabetes and Hypertension. How do you plan to handle the varied healthcare standards across different countries in the data integration process? Let's discuss how my experience aligns with your needs and I can start outlining a data acquisition strategy today.
₹250,000 INR in 7 days
4.3
4.3

Hi, I’m Karthik with 15+ years of experience in **data engineering, healthcare systems, and compliant data handling**, and I can help you source and deliver **de-identified longitudinal EHR datasets** matching your criteria. **What I can provide:** • Access to **structured, de-identified datasets** via verified data partners • Coverage for **Diabetes, Hypertension, CVD, Cancer** (+ additional chronic conditions) • Geography focus: **Nigeria, Kenya, South Africa** (also Uganda where available) • Volume: **5,000–50,000 patient records** **Data Structure:** • Demographics (age, gender) • Diagnoses (ICD-10/local codes) • Medication & prescription history • Lab results (with linked images where available) • Visit/admission timestamps + facility identifiers **Compliance & Quality:** • Strict **de-identification (HIPAA/GDPR-aligned)** • Field validation, consistency checks, and normalization • Sample dataset provided for verification before full delivery **Delivery:** • Excel (preferred) or structured PDF • Secure transfer (encrypted/cloud) • Clear schema + documentation **Approach:** • Source → validate → de-identify → QA → deliver in milestones I’ve worked with healthcare datasets and understand the importance of **accuracy, compliance, and usability for analysis**. Ready to share sample and proceed quickly. Warm Regards, Karthik B Resonite Tech
₹575,000 INR in 7 days
4.1
4.1

Kolkata, India
Member since Apr 11, 2026
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