ICON PLC - Senior Biostatistician

Promoting Statistical Insights
Sheffield
1 month ago
Applications closed

ICON plc is a world-leading healthcare intelligence and clinical research organization. We’re proud to foster an inclusive environment driving innovation and excellence, and we welcome you to join us on our mission to shape the future of clinical development.


We are currently seeking a Senior Biostatistician to join our diverse and dynamic team. As a Senior Biostatistician I at ICON, you will play a pivotal role in designing and analyzing clinical trials, interpreting complex medical data, and contributing to the advancement of innovative treatments and therapies.


Key Responsibilities:

  • Serves as lead biostatistician for simple to complex clinical studies.
  • Develops statistical analysis plans and reporting specifications.
  • Responsible for statistical aspects of CRF design and edit specifications.
  • Performs statistical analyses and interprets results for simple to complex clinical studies.
  • Reviews simple to complex randomization specifications and dummy randomization schemes.
  • Participates in bid defense meetings.

Your Profile

  • Master's degree or Ph.D in Biostatistics, Statistics, or a related field with 5 or more years of biostatistical experience.
  • Strong knowledge of multiple statistical and therapeutic areas, the drug development process, and statistical programming practices and procedures.
  • Excellent problem‑solving skills and attention to detail.
  • Effective communication skills to collaborate with multidisciplinary teams.

What ICON can offer you

Our success depends on the quality of our people. That’s why we’ve made it a priority to build a diverse culture that rewards high performance and nurtures talent. In addition to your competitive salary, ICON offers a range of additional benefits. Our benefits are designed to be competitive within each country and are focused on well‑being and work life balance opportunities for you and your family.



  • Various annual leave entitlements
  • A range of health insurance offerings to suit you and your family’s needs.
  • Competitive retirement planning offerings to maximize savings and plan with confidence for the years ahead.
  • Global Employee Assistance Programme, LifeWorks, offering 24‑hour access to a global network of over 80,000 independent specialized professionals who are there to support you and your family’s well‑being.
  • Life assurance
  • Flexible country‑specific optional benefits, including childcare vouchers, bike purchase schemes, discounted gym memberships, subsidized travel passes, health assessments, among others.

How to Apply

Please click here to apply!


Statisticians in the Pharmaceutical Industry Executive Office: St James House, Vicar Lane, Sheffield, S1 2EX, UK


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