Artificial Intelligence in Medicine: 17th Conference on Artificial Intelligence in Medicine, AIME 2019, Poznan, Poland, June 26–29, 2019, Proceedings

The Emergency Department is a fast-paced, information intensive environment that can benefit from improved information management. The presentation will discuss how an integrated information system infrastructure can support providers to deliver high-quality patient care, optimize operational activities, and facilitate clinical and informatics research studies in an emergency care setting. Illustrative examples will include improvement of pneumonia-care processes, implementation of asthma guidelines, and forecasting Emergency Department overcrowding. Towards Intelligent Telemedicine Services

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