Healthcare Audit Data Analyst

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5 days ago
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35 hours per week, full-time


£41,278 Pa Plus Excellent Benefits


London WC1 and home-based


Fixed Term Contract to 31 March 2027 (potential extension to 31 March 2030)


The Royal College of Paediatrics and Child Health (RCPCH) is seeking a highly skilled Healthcare Audit Data Analyst to join our Research and Quality Improvement Directorate, which promotes evidence-based practice and improves health outcomes for children. This is an exciting opportunity to work on national audit programmes that shape paediatric care across the UK.


Reporting to the Project Manager (Audits), you will manage complex healthcare datasets, lead on data analysis using R/R Studio, and produce high-quality outputs for clinicians, commissioners, and policy makers. You’ll play a key role in delivering robust, reproducible analytical pipelines and ensuring data integrity and security throughout the audit lifecycle.


Key Responsibilities

  • Managing secure handling and analysis of complex audit datasets, ensuring compliance with data governance and protection requirements.
  • Developing reproducible analytical pipelines to underpin audit outputs and support cross-audit working.
  • Analysing large datasets using R/R Studio, producing results at unit, ICB, regional and national levels, and identifying trends and outliers.
  • Maintaining robust data management processes within GitHub environments for version control and collaboration.
  • Producing reports and data outputs for diverse audiences, including clinicians, commissioners, regulators, and patient stakeholders.
  • Acting as a point of contact for technical and data-related queries from those submitting data for analysis.
  • Planning analytical processes for upcoming projects and contributing to departmental reports, including interpretation and editorial content.
  • Supporting the development and enhancement of data capture software and collaborating with internal and external stakeholders.

Essential Skills And Experience

  • Undergraduate degree or equivalent experience in social or medical science, statistics, or another numerate discipline.
  • Proven experience using R/R Studio (or VS Code) for data cleaning, aggregation, recoding, merging, and advanced analysis (including regression).
  • Experience producing high-quality written reports and documentation for varied audiences.
  • Strong understanding of data governance, security, and version control, including experience with GitHub.
  • Ability to manage and interrogate large, complex datasets and apply appropriate statistical methodologies.
  • Excellent interpersonal skills and ability to build relationships with healthcare professionals.
  • High level of numeracy, attention to detail, and accuracy.
  • Strong IT skills, particularly in MS Excel, Word, and PowerPoint.

Desirable

  • Experience with Stata, SQL, or Python, and advanced Excel functions.
  • Familiarity with Power BI or Quarto for data visualisation and reporting.
  • Experience developing data export and dashboard reporting functions.Understanding of NHS organisational structures and experience preparing data for commissioners and regulators.

The RCPCH has more than 25,000 members and fellows and employs around 200 staff, most of whom work in our London office in Holborn. We have a Devolved Nations team operating from Northern Ireland, Scotland and Wales. Our College values: Include, Influence, Innovate and Inspire, are important to us. These values ensure we bring out the best in each other, strive forward together to make the College a positive and dynamic place to work.


The RCPCH champions Equality, Diversity and Inclusion. Our workplace is inclusive, offering a supportive environment where staff can thrive. The College is keen to accept applications from people with protected characteristics. We believe that our staff should represent all of the diverse communities we serve. Join us to help realise our vision of a world where every child is healthy and well.


The College operates a flexible and modern working policy, whereby our colleagues work in the office for a minimum of 40% over a 4 week cycle and the remainder from home.


The RCPCH is committed to safeguarding the children, young people and adults it has contact with in the exercise of its functions and responsibilities. The RCPCH expects all staff to share this commitment – we place a high priority on ensuring only those who do so are recruited to work for us.


All offers of employment will be subject to satisfactory references and appropriate screening checks, which can include criminal records.


Closing date: 08 February 2026.


We reserve the right to close this vacancy early if we receive sufficient applications for the role. Therefore, if you are interested, please submit your application as early as possible.


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