Title: Mortality analysis of alcohol consumption using a hybrid machine learning model

Authors: P. Pragathi; A. Nagaraja Rao

Addresses: School of Computer Science and Engineering, Vellore Institute of Technology (VIT), Tamil Nadu, India ' School of Computer Science and Engineering, Vellore Institute of Technology (VIT), Tamil Nadu, India

Abstract: The day-to-day change and evolution of chronic conditions had a high impact on the medical field. Alcohol consumption is also another important and considerable cause of the occurrence of various chronic conditions. Generally, the data that is being collected during the diagnosis can be represented in various forms such as clinical values, reports, images, etc. There is a dire need of analysing this data to let the people and health centres/institutions knowledgeable about the criticality and effect of chronic conditions. This work mainly focuses on the analysis of the mortality rate that occurs due to alcohol consumption. To achieve this, K-means clustering with linear regression technique is proposed. The linear regression model is constructed to forecast the analysis of consumers on the whole. The simulation results evaluate the model and it is observed that the coefficient of determination exhibits that the constructed model is found to be fitting precisely.

Keywords: chronic disease; medical data analysis; mortality rate; linear regression; correlation; data mining.

DOI: 10.1504/IJESMS.2021.115537

International Journal of Engineering Systems Modelling and Simulation, 2021 Vol.12 No.2/3, pp.202 - 210

Received: 11 Jun 2020
Accepted: 13 Oct 2020

Published online: 07 Jun 2021 *

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