Big data in healthcare: Challenges and approaches
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Abstract
Now a day’s huge volume of data is generated due to wide usage of social media, online shopping or transactions gives delivery to big data. Visual representation and analysis of this large volume of data is one of the major research topics today. Healthcare is one of the most promising areas for using big data for change. Big data healthcare has enormous potential to improve patient outcomes, obtain valuable information, prevent disease, reduce healthcare delivery costs and improve quality of life. In this paper i focus on challenges associated with healthcare big data and also explore the common approaches for analysing big data in health Care system.
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