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Evidence in Women's Health: Evaluating a community singing intervention for postnatal depression

37m · Evidence-Based Health Care · 10 Feb 14:28

Dr Alexandra Burton reports on the SHAPER-PND study exploring singing's effect on postnatal depression in new mothers Singing has shown positive effects on maternal mood and mother–child bonding. The Scaling-Up Health-Arts Programmes: Implementation and Effectiveness Research-Postnatal Depression (SHAPER-PND) study will analyse the clinical and implementation effectiveness of a 10-week programme of singing sessions for PND in new mothers. This talk will present findings from the evaluation of an adapted online programme during the COVID-19 pandemic and describe the methods used to evaluate the main in-person programme. This free guest lecture is part of the Mixed Methods in Health Research module, part of the Oxford University Evidence-Based Health Care (EBHC) programme (https://www.conted.ox.ac.uk/courses/mixed-methods-in-health-research?code=O22C212B9Y). About the speaker: Dr Alexandra Burton is a Senior Research Fellow in Behavioural Science/Behaviour Change at University College London. She currently leads the qualitative component of the Shaper-PND implementation trial exploring the experiences of new mothers with postnatal depression who take part in group singing sessions, and the INSPYRE study evaluating social prescribing for young people who are on waiting lists for child and adolescent mental health services. Questions? Please contact the Evidence-Based Health Care (EBHC) team by emailing: [email protected] To stay informed of programme news, including lectures and research news, sign up to the EBHC mailing list: https://conted.us6.list-manage.com/subscribe?u=b349338a9a&id=9769482733 Links: Dr Alexandra Burton: https://iris.ucl.ac.uk/iris/browse/profile?upi=ABURT01? Evidence-Based Health Care Programme Overview: https://www.conted.ox.ac.uk/evidence-based-healthcare Mixed Methods in Health Research: https://www.conted.ox.ac.uk/mixed-methods-in-health-research

The episode Evidence in Women's Health: Evaluating a community singing intervention for postnatal depression from the podcast Evidence-Based Health Care has a duration of 37:49. It was first published 10 Feb 14:28. The cover art and the content belong to their respective owners.

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