Author : Swapnaja Rajesh Hiray 1
Date of Publication :9th August 2017
Abstract: The global population continues to grow at a steady pace, and more people are moving to cities every single day. Concept of Smart City is not new, but application of data analytic techniques and improving performance of Smart city application needs focus. The first cut idea of Smart city is a city, where ICT( Information and Communication Technology) can be used to solve social problems . We can view the Smart city as an integrated living solution that links many life aspects such as power, transportation, buildings, public security and emergency solutions, city governance, waste and water management and healthcare in a smart and efficient manner to improve the quality of life for the citizens . Smart city applications basically involves pervasive and ubiquitous environment and Internet of Things can make it possible. This environment itself produces ‘BIG DATA’. Data analytics in healthcare system mainly carried out in two categories Clinical applications and Non clinical applications. In this paper we studied basically Smart city Healthcare applications and data analysis issues related to this. We have developed one prototype smart city application to conceptualize the problem. Outcome of this survey is to summarize methods used for smart healthcare data analysis and issues related to it.
Reference :
-
- P.Shanmuga Sundari, Dr.M.Subaji, Big Data Analytics In Healthcare System For Diverse Perspectives, International Journal of Pharmacy & Technology, ISSN: 0975-766X
- Oeppen, J., Vaupel, J.W.: Demography - Broken limits to life expectancy. Science 296(5570), 1029 (2002).
- Mathers, C.D., Stevens, G.A., Boerma, T., White, R.A., Tobias, M.I.: Causes of international increases in older age life expectancy. The Lancet in print (2014).
- Röcker, C., Ziefle, M., Holzinger, A.: From Computer Innovation to Human Integration: Current Trends and Challenges for Pervasive HealthTechnologies. In: Holzinger, A., Ziefle, M., Röcker, C. (eds.) Pervasive Health, pp. 1-17. Springer London (2014).
- Holzinger, A., Dehmer, M., Jurisica, I.: Knowledge Discovery and interactive Data Mining in Bioinformatics - State-of-the-Art, future challenges and research directions. BMC Bioinformatics 15(Suppl 6), I1 (2014)