Postdoctoral Research Associate – Clinical data analyst

King's College London - Department of Psychological Medicine

The salary will be paid at Grade 6, £33,518 - £35,550 per annum, plus £2,923 per annum London Allowance.

This post will be Fixed term for 12 months

This post will develop and support the IMPARTS (Integrating Mental and Physical Health: Research Training and Services) project IMPARTS consists of 1) screening for mental and physical health outcomes with real-time output to the electronic patient record; 2) development of mental health care pathways for patients identified via screening; 3) bespoke training in mental health skills for healthcare teams; 4) self-help materials tailored to the patient group; 5) a research database to enable use of routinely collected data for research purposes and facilitate recruitment to trials. The post would suit a candidate with a background in psychology, biomedical science, or health economics, with advanced analytic skills and experience of working with complex clinical datasets. The post-holder should be ambitious and collaborative, interested in working in mental health (specifically depression and related disorders flexible), and have a track record of publishing independently in high impact journals.

The selection process will include competency based questions, an assessment and a panel interview.

Interviews are scheduled to be held the week commencing: 11th and 18th December 2017

For an informal discussion to find out more about the role please contact Dr Lauren Rayner

To apply for this role, please go to the King’s College London HireWire Job Board and register to download and submit the specified application form.

The deadline for applications is midnight on 19th November 2017

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