Clinical Data Visualization & Reporting Analyst

Meet Life Sciences
Bristol
1 week ago
Applications closed

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Clinical Data Visualization & Reporting Analyst

Clinical Data Visualization & Reporting Analyst

Clinical Data Visualization & Reporting Analyst

Senior Data Scientist

Data Scientist

Clinical Data Scientist

About the Role


We are seeking aClinical Data Visualization & Reporting Analystto support critical functions in clinical trial operations. This role contributes to data-driven decision-making by developing advanced reports and dashboards for medical monitoring, safety review, data quality management, and other cross-functional business needs.


The ideal candidate will be analytical, detail-oriented, and comfortable working with clinical data and visualization tools. You’ll partner closely with cross-functional stakeholders—including Clinical Operations, Data Management, Medical Affairs, and IT—to create impactful visualizations that support clinical development activities.


Responsibilities

Depending on experience level (Entry through Expert), responsibilities may include:

  • Developing dashboards and reports for medical safety review, risk-based monitoring, biomarker evaluation, and other clinical trial activities.
  • Collaborating with internal stakeholders to translate business needs into technical solutions.
  • Supporting integrated reporting and metrics development aligned with clinical and strategic goals.
  • Participating in lifecycle and change management of analytics platforms.
  • Contributing to system and performance optimizations.
  • Mentoring junior team members and leading reporting development (advanced/expert levels only).


Key Tools & Technologies

  • Visualization Tools:Tibco Spotfire, Tableau, Power BI, or QlikView
  • Data Management & Querying:SQL, ETL pipelines, Data Warehousing (e.g., ODW)
  • Scripting/Programming:Iron Python, R, R Shiny, SAS
  • Collaboration & Platforms:SharePoint, clinical trial data platforms


Qualifications

Entry Level:

  • Bachelor's degree in a technical field (Engineering, Computer Science, Life Sciences, or Statistics).
  • Some experience with clinical data and reporting tools in a regulated environment.


Base Level (1–3 years):

  • Experience in a clinical trial or regulated industry environment.
  • Working knowledge of visualization tools and SQL.
  • Familiarity with SDTM or other clinical data models preferred.


Advanced Level (4+ years):

  • Strong experience in data visualization within clinical trials.
  • Advanced skills in reporting tools and scripting languages.
  • Ability to independently manage complex reporting tasks.


Expert Level (6+ years):

  • Deep expertise in data analytics and clinical reporting.
  • Proven ability to lead projects and mentor teams.
  • Familiarity with CDISC standards and advanced reporting infrastructure.


Desired Competencies

  • Strong analytical and problem-solving skills
  • Excellent communication and stakeholder management
  • Experience working in a matrixed, cross-functional team
  • Ability to manage multiple priorities in a fast-paced environment

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