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Original articles

Mental health first aid training by e-learning: a randomized controlled trial

(Professorial Fellow) , (Senior Lecturer) , (Research Assistant) & (Research Fellow)
Pages 1072-1081 | Received 10 Aug 2010, Accepted 12 Aug 2010, Published online: 11 Nov 2010
 

Abstract

Objective: Mental Health First Aid training is a course for the public that teaches how to give initial help to a person developing a mental health problem or in a mental health crisis. The present study evaluated the effects of Mental Health First Aid training delivered by e-learning on knowledge about mental disorders, stigmatizing attitudes and helping behaviour.

Method: A randomized controlled trial was carried out with 262 members of the Australian public. Participants were randomly assigned to complete an e-learning CD, read a Mental Health First Aid manual or be in a waiting list control group. The effects of the interventions were evaluated using online questionnaires pre- and post-training and at 6-months follow up. The questionnaires covered mental health knowledge, stigmatizing attitudes, confidence in providing help to others, actions taken to implement mental health first aid and participant mental health.

Results: Both e-learning and the printed manual increased aspects of knowledge, reduced stigma and increased confidence compared to waiting list. E-learning also improved first aid actions taken more than waiting list, and was superior to the printed manual in reducing stigma and disability due to mental ill health.

Conclusions: Mental Health First Aid information received by either e-learning or printed manual had positive effects, but e-learning was better at reducing stigma.

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