Lead Medical Affairs Statistician

Bayer CropScience Limited
Reading
5 days ago
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Lead Medical Affairs Statistician

At Bayer we’re visionaries, driven to solve the world’s toughest challenges and striving for a world where Health for all, Hunger for none is no longer a dream, but a real possibility. We’re doing it with energy, curiosity and sheer dedication, always learning from unique perspectives of those around us, expanding our thinking, growing our capabilities and redefining ‘impossible’. There are so many reasons to join us. If you’re hungry to build a varied and meaningful career in a community of brilliant and diverse minds to make a real difference, there’s only one choice.


Bayer is an organisation where decisions are made together and where innovation cycles are in 90 days sprints. Our operating model (Dynamic Shared Ownership (we call it DSO) is a reimagined way of operating a multinational company which moves at speed and scale with the goal of delivering on our vision.


Being part of #TeamBayer means that you are part of our vision and of our future – delivering to our farmers, patients, and consumers.


https://www.bayer.com/en/strategy/strategy


Major Tasks

(There are no direct reports for this role)



  • 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 contributes to multi-disciplinary teams within or across companies.
  • Keep abreast of HTA regulations and methodological guidance as 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 ensures accurate and timely delivery of statistical work outsourced to external collaborators, esp. HEOR providers.
  • Develop and implement innovative statistical methodology for payer and reimbursement needs, if appropriate in cooperation with academic experts.

Skills

  • 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.

Your Application

"Be You" at Bayer where you have the opportunity to be part of our culture influencing Health for all and Hunger for none.


We value our employees and believe that rewarding your contributions is essential to our shared vision. Discover the exceptional benefits awaiting you as a valued member of #Teambayer


Compensation and Benefits

Salary you can expect: £70,000 – £85,000 pa depending on experience. Salary reviews take place annually in April.



  • 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 flexible hybrid working model.


Bayer welcomes applications from all individuals, regardless of age, disability, gender identity/expression, family status, pregnancy and maternity, race, religion or belief, sex, and sexual orientation. We are committed to treating all applicants fairly and without discrimination. We continue to progressively embrace and adopt actions to advance our Diversity Equity & Inclusion (DE&I) commitments and aspirations, #ForBetter.


Bayer is committed to providing access and support for all individuals with disabilities and / or long term conditions - during the application process and beyond. Let us know if there is anything about the recruitment process that you would like to discuss, in particular if there are any changes or adjustments that would make it easier for you to apply please contact .


Location

United Kingdom : Berkshire : Reading


Division

Pharmaceuticals


Reference Code

860793


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