Lead Medical Affairs Statistician

Bayer SAS
Reading
4 days ago
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(There are no direct reports for this role)


Responsibilities

  • Lead Statistical input to Medical Affairs and Market Access teams, provide input in life‑cycle management strategies, publication plans, HTA studies and analysis for payers and reimbursement requirements.
  • Lead statistical cross‑functional teams to generate publications, presentations and posters in collaboration with Medical Affairs.
  • Scientific appraisal of study protocols and study proposals.
  • Provide statistical and methodological consultation and contribute to multi‑disciplinary teams within or across companies.
  • Keep abreast of HTA regulations and methodological guidance e.g. from NICE and IQWiG.
  • Drive scientific strategies for Real‑World Evidence projects as network meta‑analyses, patient‑reported outcome and market access strategies.
  • Oversee and ensure accurate and timely delivery of statistical work outsourced to external collaborators, especially HEOR providers.
  • Develop and implement innovative statistical methodology for payer and reimbursement needs, if appropriate in cooperation with academic experts.

Qualifications

  • PhD or MS in Biostatistics, Statistics or Mathematics, or closely related quantitative area.
  • Good expertise in statistical methods to support HEOR incl. network meta‑analysis, patient‑reported outcome, HTA dossiers, real‑world evidence and observational studies.
  • Solid industry experience as statistician with significant time spent in the Pharma, Biotech, or similar sector.
  • Thorough knowledge of the pharmaceutical industry including understanding of clinical drug development process and life‑cycle management and associated documents and regulations.
  • Experience in leading teams.
  • Excellent interpersonal, leadership and communication skills and ability to work independently and collaboratively.
  • Good knowledge of statistical programming languages (including SAS and/or R).
  • Fluency in English.

Benefits

  • Competitive compensation package consisting of an attractive base salary and annual company bonus.
  • Individual bonus can also be granted for top talent impact.
  • 28 days annual leave plus bank holidays.
  • Private healthcare, generous pension scheme and life insurance.
  • Wellness programs and support.
  • Employee discount scheme.
  • International career possibilities.
  • Flexible and hybrid working.
  • Help with home office equipment.
  • Volunteering days.
  • Support for professional growth in a wide range of learning and development opportunities.
  • We welcome and embrace diversity providing an inclusive working environment.
  • The best possible work‑life balance is of great importance to us, which is why we support a flexible hybrid working model.
  • Salary: £70,000–£85,000 pa, depending on experience. Salary reviews take place annually in April.


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