Senior Outcomes Research Manager

Consult
Bracknell
1 year ago
Applications closed

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Senior Outcomes Research ManagerBracknell (Hybrid 2x a week)6 months initial contract with view to extend£850/day UmbrellaAbout the CompanyAre you a passionate Epidemiologist with knowledge in Market Access? Our client, a leading global pharmaceutical company, is seeking an Outcomes Research Manager to join their innovative team and play a pivotal role in shaping healthcare solutions through real-world data and epidemiological research.This is an opportunity to contribute to groundbreaking research that enhances patient outcomes while working with a globally recognized leader in the pharmaceutical industry. The role offers a chance to make a tangible impact on healthcare decision-making and improve patient access across diverse therapeutic areas.Key Responsibilities:Lead the generation of real-world evidence (RWE) to support patient access and decision-making for their Prescription Medicine (PM) portfolio.Develop and execute epidemiological and outcomes research studies to provide insights into disease burden and treatment landscapes.Write protocols, conduct data analyses, and contribute to impactful publications.Stay current with developments in RWE methodologies accepted by Health Technology Assessment (HTA) agencies and other key stakeholders.Translate patient access strategies into robust research approaches and actionable payer value messages.Engage with stakeholders to validate outcomes research methodologies and results, ensuring alignment with payer and HTA expectations.Qualifications & Skills:A degree in mathematics, statistics, epidemiology, data science, or a related field.Postgraduate qualifications (MSc/PhD) in Epidemiology or a related discipline.Expertise in outcomes research, epidemiological methods, and medical statistics applied to real-world data.Proven experience managing and analyzing large datasets using SQL and R (or equivalent tools).Knowledge of statistical methods applied to health economics is a plus.Familiarity with CPRD or equivalent patient-level databases and the UK healthcare system is advantageous.Strong communication skills to deliver actionable conclusions and stakeholder value messages.If you're interested in the above role then please click apply or get in touch to discuss further.Consult will endeavour to contact candidates within 14 days of application. However, if you do not hear back after 2 weeks then please assume on this occasion, unfortunately, you have not been successful.

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