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MEH Ong has a licensing agreement with ZOLL Medical Corporation and patent filed (Application no: 13\/047,348) for a \u201cMethod of predicting acute cardiopulmonary events and survivability of a patient\u201d. He is also the co-founder and scientific advisor of Technology Innovation in Medicine (TIIM) Healthcare, a commercial entity which develops real-time prediction and risk stratification solutions for triage. He is a member of the Editorial Board of Resuscitation. YO has received a research grant from the ZOLL Foundation and an overseas scholarship from the FUKUDA Foundation for Medical Technology and the International Medical Research Foundation. All other authors have no conflict of interest to declare.","order":1,"name":"Ethics","group":{"name":"EthicsHeading","label":"Competing interests"}}],"article-number":"716"}}