Portfolio

Real-world evidence
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Ousmane Diallo - Portfolio | Clinical Programming, HEOR, RWE & Machine Learning Projects
Author

Ousmane DIALLO

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Welcome to my professional portfolio

A curated showcase of clinical research, real-world evidence (RWE), and health analytics projects developed using
SAS, R, and Python β€” bridging statistical rigor, reproducibility, and regulatory science.


Areas of focus

  • Clinical Trials Programming (CDISC, SAS)
  • Health Economics & Outcomes Research (HEOR)
  • Real-World Evidence (RWE) Analytics
  • Machine Learning & Advanced Statistical Modeling
  • Geospatial Epidemiology

Explore each section for methodology, R/SAS code, and key results.


🧬 Clinical Trials Programming (CDISC / SAS)

Regulatory-compliant workflows for clinical data analysis and submission-ready deliverables.

My clinical programming work focuses on end-to-end pipelines for clinical trial data using SAS and CDISC standards.
These projects replicate real-world regulatory workflows, from raw data cleaning to submission-ready outputs.

Highlighted Capabilities

  • SDTM and ADaM dataset derivation
  • Tables, Listings, and Figures (TLFs) programming
  • Define-XML and annotated CRF support
  • QC checks and validation workflows

πŸ’° Health Economics & Outcomes Research (HEOR)

Cost-effectiveness and cost-utility analyses supporting value-based healthcare decisions.

These projects apply economic evaluation and outcomes research methods to clinical and public health programs, highlighting the impact of interventions on cost and health outcomes.

πŸ“Š Real-World Evidence (RWE) & Statistical Modeling

Observational analytics and evidence generation for clinical and public health impact.

This section covers observational research and real-world data analyses that inform clinical and policy decisions.
The projects integrate data from surveys, hospitals, and surveillance systems.

πŸ—ΊοΈ Geospatial Analysis & Epidemiology

Spatial and spatio-temporal modeling for malaria surveillance and intervention planning.

Here, I use geospatial methods and epidemiological modeling to understand how disease risk and intervention coverage vary across space and time.

🧩 Health Data Engineering & Multi-Source Data Harmonization

Data extraction, cleaning, transformation, harmonization, and automation for clinical, survey, and health information system datasets.

This section highlights my work in data engineering across multiple health data sources, including SQL-based analytics, survey data harmonization (DHS/MIS), and health management information systems (HMIS). The projects demonstrate end-to-end pipelines from raw data to analysis-ready datasets.

πŸ€– Machine Learning & Predictive Analytics

Advanced modeling and classification for outcome prediction and health system performance.

These projects apply machine learning and multivariate methods to extract patterns and build predictive models from complex health data.

πŸ“ž Let’s Collaborate

If you’re seeking expertise in data science, biostatistics, epidemiology, or clinical data programming, I’m open to:

  • Collaboration on research projects
  • Consulting on clinical trials programming and CDISC workflows
  • RWE and HEOR analytics in partnership with clinical or industry teams

πŸ‘‰ Contact Me to discuss your project or proposal.

Ousmane Diallo, MPH-PhD – Biostatistician, Data Scientist & Epidemiologist based in Chicago, Illinois, USA. Specializing in SAS programming, CDISC standards, and real-world evidence for clinical research.

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