Abstract
In India there is big transition in life style due to industrialization and western influence. Life style diseases are on surging rate with it affect across all age borders. According to a recent health survey almost 60% of all death reported in India are due to life style and non-communicable diseases (NCD) with life style contributing the major part in it. Early screening and predictive analysis is way forward to put a break on surging life style diseases. In this work a survey on scalable technologies assisting for early screening and predictive analysis for life style diseases is done. Each of technologies is analyzed in perceptive of multiple parameters like effectiveness, cost, convenience, adaptability rate etc. and open areas identified for further research.
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Kunekar, P.R., Gupta, M., Agarwal, B. (2019). Detection and Analysis of Life Style based Diseases in Early Phase of Life: A Survey. In: Somani, A., Ramakrishna, S., Chaudhary, A., Choudhary, C., Agarwal, B. (eds) Emerging Technologies in Computer Engineering: Microservices in Big Data Analytics. ICETCE 2019. Communications in Computer and Information Science, vol 985. Springer, Singapore. https://doi.org/10.1007/978-981-13-8300-7_6
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DOI: https://doi.org/10.1007/978-981-13-8300-7_6
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