Phamily is a leading AI-based care management company serving healthcare providers. They are seeking a Lead Data Scientist to conduct a clinical outcomes study and provide empirical evidence on the effectiveness of their healthcare programs.
Responsibilities:
- Lead a longitudinal, quasi-experimental study starting May 7 to measure clinical outcomes, specifically hospitalization frequency and discharge follow-ups
- Apply advanced methodologies (e.g., propensity score matching) to observational data to estimate counterfactual patient outcomes with minimal bias
- Develop and refine statistical models that will be thoroughly vetted and approved by customer actuaries
- Serve as the primary analytical face to SCMG, gathering requirements and aligning on clinical/business definitions of success
- Translate complex statistical findings into compelling presentations and client-ready reports for both technical and non-technical leadership
- Extract usable value from an existing outsourced study, close out the vendor contract, and integrate relevant findings into the final study
- Navigate and build analytics reporting infrastructure using SQL, Python, dbt, Redshift, and Looker
- Ensure all code is clean and reproducible for final handover to the internal Phamily BI team
Requirements:
- Health-Tech Expertise: Deep experience in causal inference, metric design, and clinical outcomes evaluation
- Data Proficiency: Extensive experience working with complex EHR and healthcare claims data
- Advanced Analytics Toolkit: Highly capable in Python, R, SQL, dbt, Redshift, and Looker
- Statistical Matching: Proven experience developing algorithms for high-dimensional statistical matching with large datasets
- Security Standards: Practical experience maintaining strict PHI security protocols while building data infrastructure
- Analytical Rigor: Ability to design and execute 'actuarial-grade' studies that control for significant confounding variables
- Communication: Exceptional ability to synthesize technical data into narratives for non-technical clients
- Education: Advanced degree in a quantitative field (e.g., Data Science, Statistics, Health Economics, or Epidemiology)
- Entrepreneurial DNA: A 'builder' mentality with the ability to operate effectively in high-ambiguity environments where processes may not be fully fleshed out
- HEOR Consulting: Prior background as a Health Economics & Outcomes Research (HEOR) consultant
- Actuarial Alignment: Experience in presenting methodology to and gaining approval from health system actuaries