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Assistant Clinical Data Analyst - Bank Contract 1

Fortrea
Leeds
2 weeks ago
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Summary of Responsibilities:

  • Follow applicable departmental Standard Operating Procedures and Work Instructions.
  • Complete required trainings according to timelines.
  • Within the specified timelines review and action queries on an ongoing basis and upon meeting the quality expectations update database appropriately, as assigned.
  • Work as per assigned Data Management related operational data flows.
  • Review reports and take actions as defined in the DMP or eCRF review manual, as assigned.
  • Perform ongoing and final consistency checks, data listings review as defined in the DMP and eCRF Review Manual, as assigned.
  • Ensure that all Data Management activities are conducted in compliance with relevant regulatory requirements and Good Clinical Practices.
  • Setup and maintenance of EDC User Access Accounts for databases.
  • Ensure EDC user requests for database access are completed accurately and efficiently.
  • Troubleshoot and correct User access issues; follow up with EDC vendor for technical support as needed.
  • Create, format, and distribute User Access Report to Project Managers/Lead Data Manager for reconciliation of User access.
  • Assist with decommissioning/archiving tasks, generating reports and distributing reports and other ad hoc tasks.
  • All other duties as needed or assigned.



Qualifications (Minimum Required):

  • University / college degree (life sciences, health sciences, information technology or related subjects) or a certification in allied health professions from an appropriate accredited institution.
  • Fortrea may consider relevant and equivalent experience in lieu of educational requirements.



Experience (Minimum Required):

  • 0 - 1 year in clinical research.
  • Demonstrated ability to organize and communicate effectively.
  • Demonstrated ability to pay attention to detail.
  • Ability to work well with others.
  • Ability to deliver consistent high quality of work. • Ability to use computer and departmental tools.



Physical Demands/Work Environment:

  • Office and/or homebased work environment.
  • May require overtime and weekend work as required.
  • Should be willing to work in flexible shifts as per business requirement.



Learn more about our EEO & Accommodations request here .
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