QoS-Based Medical Program Evolution

Medical path varies due to the changes in external factors, and the key to the changes is the decision-making in symptomatic treatment by medical experts; how to make full use of historical medical data and recommend high quality treatment options to new cases under the current circumstance of data explosion, is the research focus of this paper. This paper first presents the standard for medical path based on cloud platform, going into the definition of model of medical services; finally, the medical optimization factor is given to realize the evolution of online medical program of a disease based on QoS.

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