Indra Boruah et al, International Journal of Computer Science and Mobile Computing, Vol.8 Issue.3, March- 2019, pg. 275-284
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International Journal of Computer Science and Mobile Computing
A Monthly Journal of Computer Science and Information Technology
ISSN 2320–088X
IMPACT FACTOR: 6.017
IJCSMC, Vol. 8, Issue. 3, March 2019, pg.275 – 284
Analytical Study of Data
Mining Applications in Malaria
Prediction and Diagnosis
Indra Boruah
1
; Dr. Sangeeta Kakoty
2
Computer Science & Engineering Department, Assam Down Town University, Guwahati, Assam, India
indraboruah@gmail.com
Dy. Director, Krishna Kanta Handiqui State Open University, Guwahati, Assam, India
kakoty.sangeeta@gmail.com
Abstract— Over the years, healthcare sector has been identified as the most vulnerable sector which is
information rich but due to lack of appropriate retrieval methods avail, hidden data pattern cannot be
achieved properly. A lot of research persons had already described and identified several research techniques
and methods so that information related to various diseases can be viewed, reviewed, predicted and analyzed.
In this paper, we have focused to analysis a variety of techniques, approaches and different tools and its
impact on the healthcare sector especially for vector borne disease malaria. Malaria fever has been identified
as a threat to human existence, killing millions of people annually, and also contributing to economic
backwardness due to huge amount of money and time being spent by many countries of the world in
managing the menace, mostly Africa and Asia countries. Shortages of medical experts, hospitals, lack of
knowledge and necessary equipment have been adjudged some of the prominent factors for the very high
number of deaths associated with malaria fever annually. These challenges have made Information
Technology (IT) experts to work with medical experts in using modern IT initiatives to address the situation
in the form of providing Predictive Models that can carry out diagnosis and in some cases provide therapy.
This study looks at some of these Computer Based Systems (Predictive Models) developed to manage malaria
with a view to providing meaningful contribution on improving on them. The work looks into present
methods and future needs in order to provide computer based viable classifiers in diagnosis and treatment of
malaria fever cases. It is hopeful that researchers in the area of providing diagnosis and therapy systems can
make use of our valuable improvement suggestions.
Keywords— Malaria Fever, Diagnosis, Therapy, Data Mining, Predictive Models
I. INTRODUCTION
There is a huge amount of data available in the Information Industry. This data is of
no use until it is converted into useful information. It is necessary to analyse this huge
amount of data and extract useful information from it. Data Mining is defined as extracting
information from huge sets of data. In other words, we can say that data mining is the