Medicine Prescription using Machine Learning

A. Surya, Valliammai Engineering College; S. Suma ,Valliammai Engineering College; M. U. Surya Prakash ,Valliammai Engineering College; Yudhishtran ,Valliammai Engineering College

Disease Prediction, Drug Prediction, Machine Learning

The health care system which is using a Database is a well-known method for storing information. In regular database systems, sometimes because of existence of huge data it is not possible to fulfill the user's criteria and to provide them with the exact the information that they need to make a decision. However, this analysis accuracy is reduced when the quality of medical data is incomplete. The Healthcare system is far from optimal and tedious to undergo. These huge record sets can be processed and learned for better and automated medication. So this can be done with machine learning systems to evaluate the patient, diagnose them and to prescribe them with medicine. Moreover, different regions exhibit unique characteristics of certain regional diseases, which may weaken the prediction of disease outbreaks. With big data growth in biomedical and healthcare communities, this can be overcome by providing more accurate analysis. So using machine learning algorithms effective prediction of diseases can be done and providing with precise medicine for the disease.
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Paper ID: GRDJEV03I050007
Published in: Volume : 3, Issue : 5
Publication Date: 2018-05-01
Page(s): 1 - 6