Health data specialist

Peterborough
9 months ago
Applications closed

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Health data specialist
Salary: £39,000 - £43,000 depending on experience
Location: Contracted to our Peterborough office with the flexibility for hybrid working
Hours: Full time, 37.5 hours per week
Benefits: We want all our employees to feel valued and engaged and are committed to offering a positive working culture along with a good work-life balance. As well as ensuring they pay their employees fairly, they offer the following benefits: Flexible working, Generous annual leave, Private Medical Insurance, including dental and optical, Pension Scheme, Sick Pay, Death in Service, Employee Assistance Programme, Bike Loan Scheme, Cycle2Work Scheme, Eyecare, Discount Portal.

Closing date: Wednesday 14 May 2025

Telephone interviews will be held week commencing 19 May 2025

Interviews will be held week commencing 26 May 2025 in our office in Peterborough

No agencies please

Be a part of an energetic and vibrant team who are driven by the desire to improve the lives of people living with kidney disease. Our vision is the day when everyone lives free from kidney disease.

The Health data specialist will play a key role in our ambitious (Apply online only) strategy. We're seeking a passionate and detail-oriented individual who thrives on leveraging health data to drive positive change.

In this new role, you’ll ensure Kidney Research UK has access to and uses external health data effectively to provide high-quality evidence and insight to a wide audience and remains intelligence-led across all its operations.

The post-holder will deliver a core health data intelligence service, ensuring the Policy, Programmes and Communications Teams, along with the wider staff group, have access to a wide range of high-quality health analytics assets. The role will lead on delivering discrete pieces of original quantitative analysis, along with supporting analytics work led by other team members. The role will also involve supporting or leading the delivery of any required data analysis or health economics work, as required.

This will include the management of our health statistics sign-off process, reviewing other colleagues’ use of quantitative health data evidence for external-facing resources and leading on commissioned health economics projects.

A commitment to continuous learning and a collaborative spirit is key. You'll possess excellent communication and problem-solving skills, with experience in Microsoft 365 applications, ideally including Power BI, Excel, and SharePoint. Confidence querying databases is equally important, as is the ability to collaborate effectively with a diverse range of data owners and stakeholders.

The ability to showcase insights through clear and informative visualisations - charts, tables, and dashboards - is essential for both internal and external audiences.

If you are interested in the position, please complete the online application form and submit together with your CV.

We are committed to providing equal opportunities for everyone and encourage applications from all sections of the community.

About Kidney Research UK:

Kidney Research UK is the leading charity in the UK focused on funding research into the prevention, treatment and management of kidney disease. Our vision is the day when everyone lives free from kidney disease and for more than 60 years the research, we fund has been making an impact. But kidney disease is increasing as are the factors contributing to it, such as diabetes, cardiovascular disease and obesity, making our work more essential than ever.

At Kidney Research UK we work with clinicians and scientists across the UK, funding and facilitating research into all areas of kidney disease. We collaborate with partners across the public, private and third sectors to prevent kidney disease and drive innovation to transform treatments.

Over the last ten years we have invested more than £71 million into research. We lobby governments and decision makers to change policy and practice to ensure that the estimated 7.2 million people living with all stages of kidney disease in the UK have access to the most effective care and treatment, and to make kidney disease a priority.

Most importantly, we also work closely with patients, ensuring their voice is heard and is at the centre of everything we do, from deciding which research to invest in to how we plan our priorities and our work across the charity.

Those patient contributions are vital, always helping us and our partners to understand what life is like with kidney disease, always ensuring we see the patient behind the treatment and always reminding us that behind every statistic and every number is a person – the patients and the carers who inspire our mission and push us forward to make a difference and change the future of kidney disease.

You may also have some experience in the following: Health Data Analyst, Health Intelligence Analyst, Healthcare Analytics Specialist, Data Insights Officer – Health, Health Evidence & Insights Lead, Strategic Health Data Analyst, Population Health Analyst, Health Research Data Officer,  Public Health Intelligence Officer, Charities,  NFP, etc.

REF- (Apply online only)

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