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Principal Clinical Data Science Lead
Location
United States
Posted
102 days ago
Salary
0
Seniority
Senior
Job Description
Principal Clinical Data Science Lead
ICON plc
• Leading the design and implementation of advanced data science methodologies and statistical models to support clinical research and data analysis. • Guiding a team of data scientists and analysts in the development and execution of data-driven strategies to optimize clinical trial design and outcomes. • Collaborating with cross-functional teams, including clinical, biostatistical, and regulatory experts, to ensure integration of data science insights into clinical development programs. • Driving innovation in the use of data science tools and techniques, including machine learning and predictive analytics, to enhance the efficiency and effectiveness of clinical trials. • Providing strategic direction and oversight for data management and analysis processes, ensuring compliance with regulatory requirements and industry best practices. • Communicating complex data findings and insights to stakeholders, including senior leadership and external partners, to support decision-making and strategic planning.
Job Requirements
- Preferred 8+ years of experience in clinical research, including data review, medical monitoring support, or clinical operations.
- Strong understanding of clinical development processes, data review methodologies, and regulatory compliance.
- Experience working in a global matrix organization, preferably within an FSP or CRO model.
- Proven track record of strong project management skills and experience managing data management and clinical activities for large drug development programs.
- Experience with all phases of development in one or more therapeutic areas preferred.
- Proficiency in clinical data systems and technologies (e.g., Veeva, RShiny, Elluminate, Medidata, JReview).
- Solid understanding of clinical trial documents (protocols, statistical analysis plans, CRFs, study reports) and processes.
- Strategic knowledge of FDA and ICH regulations and industry standards applicable to data capture and clinical science processes.
- Strong communication, organizational, and cross-functional leadership skills.
Benefits
- 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, TELUS Health, offering 24-hour access to a global network of over 80,000 independent specialised 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, subsidised travel passes, health assessments, among others.
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