Administrator - Clinical Coding and Data Quality Team

Priory Medical Group
North Yorkshire
4 days ago
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Responsibilities

  • Ensure all administrative / coding duties are carried out efficiently and effectively whilst always having the patient at the forefront of everything you do, enabling our GPs to always deliver the best patient care.
  • Ensuring new / existing patients' paper & electronic records are summarised / coded accurately and efficiently in line with in-house KPIs, customer SLAs and appropriate SOPs / guidelines.
  • Ensure you understand all aspects of your role and adhere to the team's SOP.
  • We are looking for 30 hours per week with the working pattern of Monday to Friday 9am to 3pm.

At Priory Medical Group we pride ourselves in providing outstanding care to both our patients and our staff, through benefits, health and wellbeing initiatives and always ensuring our team members assist in the implementation of any new processes / procedures that has an impact on the work they do. Here at PMG, we value the wellbeing and health of our staff and as a result we offer various resources to support the mental health of our employees. As part of the PMG team, you will have access to free confidential counselling and extensive wellbeing resources accessible through the NHS.


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