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Growing Science » International Journal of Data and Network Science » Predictive data mining approaches in medical diagnosis: A review of some diseases prediction

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International Journal of Data and Network Science

ISSN 2561-8156 (Online) - ISSN 2561-8148 (Print)
Quarterly Publication
Volume 3 Issue 2 pp. 47-70 , 2019

Predictive data mining approaches in medical diagnosis: A review of some diseases prediction Pages 47-70 Right click to download the paper Download PDF

Authors: Ramin Ghorbani, Rouzbeh Ghousi

DOI: 10.5267/j.ijdns.2019.1.003

Keywords: Healthcare, Classification, Heart Disease, Breast Cancer, Diabetes Mellitus, Review

Abstract: Due to the increasing technological advances in all fields, a considerable amount of data has been collected to be processed for different purposes. Data mining is the process of determining and an-alyzing hidden information from different perspectives to obtain useful knowledge. Data mining can have many various applications, one of them is in medical diagnosis. Today, many diseases are regarded as dangerous and deadly. Heart disease, breast cancer, and diabetes are among the most dangerous ones. This paper investigates 168 articles associated with the implementation of data mining for diagnosing such diseases. The study concentrates on 85 selected papers which have received more attention between 1997 and 2018. All algorithms, data mining models, and evaluation methods are thoroughly reviewed with special consideration. The study attempts to determine the most efficient data mining methods used for medical diagnosing purposes. Also, one of the other significant results of this study is the detection of research gaps in the application of data mining in health care.

How to cite this paper
Ghorbani, R & Ghousi, R. (2019). Predictive data mining approaches in medical diagnosis: A review of some diseases prediction.International Journal of Data and Network Science, 3(2), 47-70.

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Journal: International Journal of Data and Network Science | Year: 2019 | Volume: 3 | Issue: 2 | Views: 6850 | Reviews: 0

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