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A physician-health policy researcher in the Department of Internal Medicine, Division of General Medicine, seeks a full-time Statistician Senior (underfill to Intermediate) to join a dynamic, interdisciplinary research team. Our team performs health economics research to better understand and develop policies to lower health care spending and improve healthcare delivery and patient outcomes. Core topic areas include the effects of corporate ownership and market structure on system outcomes and how payment reform is reshaping U.S. primary care. We use large national datasets and advanced statistical (econometric) methods to generate evidence that informs health policy and clinical practice.
The successful candidate will manage, clean, and analyze administrative datasets (e.g., Medicare claims, prescribing, and corporate ownership data); write reproducible code in Stata, SAS, R, or Python; and contribute to study design, statistical modeling, and publication. We are seeking a statistician who is curious, detail-oriented, and motivated by policy-relevant questions, able to work both independently and collaboratively across institutions.
The position is based at the University of Michigan (U-M) and will involve close collaboration with Brown University Center for Advancing Health Policy through Research (CAHPR), led by a health economist faculty PI. The candidate will be financially supported by both U-M and Brown University (approximately 50/50) but will hold an employment relationship only at U-M. The candidate will have the opportunity for deep collaborations across Michigan Medicine, U-Ms Institute for Healthcare Policy and Innovation, and Brown University CAHPR, offering a rich environment for interdisciplinary research with leading economists and health policy scholars. The position offers outstanding professional growth, including opportunities for skill development, mentorship, and authorship on peer-reviewed papers.
Michigan Medicine improves the health of patients, populations and communities through excellence in education, patient care, community service, research and technology development, and through leadership activities in Michigan, nationally and internationally. Our mission is guided by our Strategic Principles and has three critical components; patient care, education and research that together enhance our contribution to society.
Michigan Medicine is one of the largest health care complexes in the world and has been the site of many groundbreaking medical and technological advancements since the opening of the U-M Medical School in 1850. Michigan Medicine is comprised of over 30,000 employees and our vision is to attract, inspire, and develop outstanding people in medicine, sciences, and healthcare to become one of the world’s most distinguished academic health systems. In some way, great or small, every person here helps to advance this world-class institution. Work at Michigan Medicine and become a victor for the greater good.
What Benefits can you Look Forward to?
1. Data management
Supporting Actions: Clean, organize, and link large administrative datasets (e.g., Medicare claims, prescribing data, and corporate ownership data) from multiple sources. Develop and maintain reproducible data pipelines and documentation to ensure transparency and data integrity. Conduct quality assurance procedures, including audits, validation checks, and version control. Assess data quality and completeness, address data limitations, and prepare analytic files for use by research teams. Ensure all datasets meet standards for reproducibility and documentation required for publication and data sharing.
2. Statistical analysis and visualization
Supporting Actions: Conduct descriptive and inferential analyses to answer policy-relevant research questions. Apply econometric and causal-inference methods (e.g., difference-in-differences, instrumental variables, propensity-score methods) and selected machine-learning algorithms. Write reproducible code in Stata, R, SAS, or Python; summarize and interpret results for manuscripts, presentations, and grant proposals; and contribute to the development of statistical models and study design. Generate clear, publication-quality visualizations and tables that communicate analytic findings to technical and policy audiences.
3. Assist with writing papers and grant proposals
Supporting Actions: Draft and refine statistical methods and results sections for manuscripts and grant proposals. Interpret and summarize analytic findings for publication and presentation. Prepare reports for internal and external review committees. Participate in manuscript development for peer-reviewed journals and proposal writing, particularly those sections related to study design, analytic approach, and data sources. Provide pre-award analytic support to projects, such as conducting preliminary analyses and synthesizing results. Engage in departmental and cross-institution research seminars and workshops. Co-authorship is available for substantive contributions.
4. Supervise and/or mentor trainees
Supporting Actions: Supervise and/or mentor students and trainees, consult on methodological and statistical issues, and provide analytic and technical support as needed. Provide guidance on study design, analytic planning (including power calculations, model selection, and sample size estimation), and preparing presentations and publication-quality manuscripts. Collaborate closely with faculty and analysts to ensure analytic accuracy and reproducibility across projects.
Senior Level
Intermediate Level
Both
This position is based at the North Campus Research Complex (NCRC) in Ann Arbor and offers a hybrid work schedule with regular on-site presence expected. Fully remote arrangements are not available.
Positions that are eligible for hybrid or mobile/remote work mode are at the discretion of the hiring department. Work agreements are reviewed annually at a minimum and are subject to change at any time, and for any reason, throughout the course of employment. Learn more about the work modes.
This position may be underfilled at a lower classification depending on the qualifications of the selected candidate.
Two Current Projects:
1. Impact of corporate consolidation on primary care
Insurers are targeting primary care practices serving older adults in Medicare Advantage (MA), acquiring or contracting with them to generate profit by cutting costs, intensifying coding, and capturing quality bonuses. Integration may improve quality or expand geriatric care but could harm patients if insurers ration care or avoid complex patients. Despite this transformation, little is known about how integration shapes care for older adults due to obscured ownership and contracting arrangements. We will (1) identify insurer-integrated practices by applying machine learning to Medicare claims, prescribing data, and corporate ownership sources; (2) isolate the causal impact of insurer-practice integration on patient access and quality.
2. Upcoding and risk adjustment in Medicare Accountable Care Organizations (ACOs)
Accountable Care Organizations (ACOs) are groups of clinicians and organizations that share responsibility for the cost and quality of care for Medicare beneficiaries. To discourage cherry-picking of healthier patients, Medicare adjusts payments based on each patients expected health risk a process known as risk adjustment. Yet this system can be gamed: organizations can intensify diagnostic coding to make patients appear sicker than they are, increasing bonuses without making care more efficient. Concerns about such practices are especially pronounced in the new ACO REACH program, which allows direct participation by corporate and insurer-owned entities with sophisticated data and coding infrastructures. This project evaluates coding intensity in ACO REACH by applying econometric methods to Medicare claims and enrollment data, testing whether organizational integration and ownership structure are linked to differential growth in risk scores. The findings will inform policy efforts to ensure that value-based payment promotes efficiency and equity rather than artificial risk inflation.
Additional Information. Finalists will complete a two-stage interview process, including an initial communication interview and a take-home coding exercise.
Michigan Medicine conducts background screening and pre-employment drug testing on job candidates upon acceptance of a contingent job offer and may use a third party administrator to conduct background screenings. Background screenings are performed in compliance with the Fair Credit Report Act. Pre-employment drug testing applies to all selected candidates, including new or additional faculty and staff appointments, as well as transfers from other U-M campuses.
Job openings are posted for a minimum of seven calendar days. The review and selection process may begin as early as the eighth day after posting. This opening may be removed from posting boards and filled anytime after the minimum posting period has ended.
The University of Michigan is an equal employment opportunity employer.
271555
Statistician Senior (underfill Intermediate)
Statistician Senior
Ann Arbor Campus
Ann Arbor, MI
Hybrid
Full-Time
Regular
Exempt
Medical School
MM Int Med-General Medicine
12/03/2025 - 12/17/2025
Research
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