about
Harnessing information from injury narratives in the 'big data' era: understanding and applying machine learning for injury surveillanceInjury narrative text classification using factorization modelMachine learning approaches to analysing textual injury surveillance data: a systematic review.Estimating under-reporting of road crash injuries to police using multiple linked data collections.Infant product-related injuries: comparing specialised injury surveillance and routine emergency department data.The Extent of Consumer Product Involvement in Paediatric InjuriesAge-related trends in injury and injury severity presenting to emergency departments in New South Wales Australia: Implications for major injury surveillance and trauma systems.Current profile of cycling injuries: A retrospective analysis of a trauma centre level 1 in Queensland.Falls from ladders in Australia: comparing occupational and non-occupational injuries across age groups.Improving autocoding performance of rare categories in injury classification: Is more training data or filtering the solution?Impact of ladder-related falls on the emergency department and recommendations for ladder safety.Alcohol-related emergency department injury presentations in Queensland adolescents and young adults over a 13-year period.Why do Queenslanders seek care in emergency departments? A population study.Characteristics of accidental injuries from power tools treated at two emergency departments in QueenslandMonitoring Injuries Associated with Mandated Children's Products in Australia: What Can the Data Tell Us?Leveraging Data Quality to Better Prepare for Process Mining: An Approach Illustrated Through Analysing Road Trauma Pre-Hospital Retrieval and Transport Processes in QueenslandCommunicating consequences with costs: a commentary on Corso et al's cost of injuryPriorities for trauma quality improvement and registry use in Australia and New ZealandHazardous children's products on the Australian and US market 2011-2017: an empirical analysis of child-related product safety recallsA Comparative Process Mining Analysis of Road Trauma Patient Pathways
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description
researcher
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wetenschapper
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հետազոտող
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Kirsten Vallmuur
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Kirsten Vallmuur
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Kirsten Vallmuur
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Kirsten Vallmuur
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Kirsten Vallmuur
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Kirsten Vallmuur
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Kirsten Vallmuur
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Kirsten Vallmuur
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Kirsten Vallmuur
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Kirsten Vallmuur
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Kirsten Vallmuur
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Kirsten Vallmuur
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0000-0002-3760-0822