https://www.markets.com/zh-tw/analysis
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https://www.markets.com/zh-tw/analysis
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https://www.selleckchem.com/products/mrtx849.html
BACKGROUND Emergency departments (EDs) play an important role in health systems since they are the front line for patients with emergency medical conditions who frequently require diagnostic tests and timely treatment. OBJECTIVE To improve decision-making and accelerate processes in EDs, this study proposes predictive models for classifying patients according to whether or not they are likely to require a diagnostic test based on referral diagnosis, age, gender, triage category and type of arrival. METHOD Retrospective data were categor