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Issue No.02 - March-April (2013 vol.28)
pp: 92-95
Daniel B. Neill , Carnegie Mellon University
AI can be used to address many challenges facing America's healthcare system—from disease detection to building predictive models for treatment—thereby improving the quality and lowering the cost of patient care.
Artificial intelligence, Medical diagnostic imaging, Hospitals, Real-time systems, Biomedical monitoring, fast subset scan, electronic health records, EHR, intelligent systems, machine learning
Daniel B. Neill, "Using Artificial Intelligence to Improve Hospital Inpatient Care", IEEE Intelligent Systems, vol.28, no. 2, pp. 92-95, March-April 2013, doi:10.1109/MIS.2013.51
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