Author : Srinitya G 1
Date of Publication :24th October 2019
Abstract: Health is Wealth: Today the world has taken a step forward where each individual is concerned about what he is consuming on a daily basis and analyses the after effects of the food. Every individual is more concerned about his/her everyday food habits and tries to adapt himself to what nature provides him. We are moving towards a technology oriented living where computers in general and data science and analysis in particular plays a major role in every field. A recent survey from World Health Organization (WHO) tells us that the growth of ageing population may increase by 50% in the forth coming decade. Here, in this paper we mainly concentrate on kidney related issues, and try to predict the presence of chronic kidney disease based on certain parameters available from UCI dataset using decision tree based approach
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