To overcome the limitations inherent to the recording of suicidal presentations to Emergency Departments (EDs), Gold Coast Mental Health Services developed a machine learning algorithm - Searching EDIS for Records of Suicidal Presentations (SERoSP) - that identifies relevant presentations with a high degree of accuracy.
The software program was developed to identify suicidal and self-harm presentations through the use of machine learning. It is a crucial component in the two-step methodology considered gold standard for suicide prevention (accurate data and manual review of cases). It is also a time- and cost-effective solution to enable a reliable identification of suicidal presentations to GCHHS’s EDs. This can inform on the resources required for the provision of optimal care for consumers in suicidal crisis and assist in the evaluation of the Suicide Prevention Strategy.
The tool was developed in collaboration with Bond University and Queensland Health's Healthcare Improvement Unit. The project was nominated as a finalist in the 2019 Bond University Sustainable Healthcare Award.