Sr. Statistician

Alimentiv
Belfast
6 days ago
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As the Sr. Statistician you will be responsible for the application of biostatistical methods to support clinical trials and data management including statistical planning design analysis and reporting throughout the project life cycle in accordance with project organizational and regulatory standards. Act as subject matter expert providing statistical support to project teams quality / study auditors and external stakeholders. Participate in the promotion of Alimentiv as a global research organization by contributing to the development publishing and reporting of project data. Lead and develop a group of statisticians and SAS Programmers.


Analysis Services

  • Carry out statistical analyses and provide direction to programmers using standard software packages to interpret and translate results within a statistical framework into biomedical terms and prepare statistical data results for inclusion in reports and research papers that meet trial organizational and regulatory best practices and standards.

Academic and Project Research Support

  • Working in conjunction with the Director of Academic Research convert and present new and novel biometrical trial technologies processes and findings into publishable and promotable scientific processes and results.
  • Provide statistical expertise and guidance based on established methodologies throughout the project life cycle in the areas of study policies protocols implementation timelines and processes data interpretation and publication of results. Work with data management team to ensure data captured incorporates and corresponds to project protocols and requirements.

Statistical Analysis / Data Collection Planning and Study Report Support

  • Prepare statistical analysis plan and oversee project data collection management and analysis with input from the project teams that incorporates the type of information collected sample size randomization procedures table and listing shells project statistical policies protocols and methodology to be used to appropriately translate scientific questions into statistical hypotheses.
  • Assist medical director(s) and / or technical writers by preparing statistical section of study report publications and / or presentations ensuring statistical analyses adheres to trial sponsor organizational and regulatory requirements and best practices.

Personnel Management

  • Assign / schedule studies and tasks to functional unit to ensure project needs are met.
  • Responsible for performance management (staff evaluation performance improvement and lost time management) of direct reports.
  • Provide direction and support to project financial coordinators and promote team development by providing coaching mentoring and training.
  • Develop and deliver ongoing training on document user systems document naming and department Quality System processes to peers and stakeholders including new employee orientation.

Warning

  • PHISHING SCAM WARNING : Alimentiv is aware of the continued increase of phishing scams leveraging various methods of attack via email text voice and social media. Please note that Alimentiv only uses company email addresses which contain @ to communicate with candidates via email. If you are contacted by someone about an open job at Alimentiv please verify the domain of the senders email address and that they are asking you to apply on this website. If you believe youve been a victim of a phishing scam please contact your local government cyber authority to report.

50500 - 84000 a year


We may use artificial intelligence (AI) tools to support parts of the hiring process such as reviewing applications analyzing resumes or assessing responses. These tools assist our recruitment team but do not replace human judgment. Final hiring decisions are ultimately made by humans. If you would like more information about how your data is processed please contact us.


Required Experience :


Senior IC


Key Skills


Spss,R,Regression Analysis,Stata,Survival Analysis,Clinical Trials,Statistical Software,Data Mining,SAS,Statistics,Data Analysis Skills,Statistical Analysis


Employment Type : Full-Time


Experience : years


Vacancy : 1


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