For Better Healthcare Mining Health Data

Author:

Gürsel Güney1

Affiliation:

1. Command post of Gendarme Logistics, School ol of Technical and Auxiliary Forces, Turkey

Abstract

Data mining has great contributions to the healthcare such as support for effective treatment, healthcare management, customer relation management, fraud and abuse detection and decision making. The common data mining methods used in healthcare are Artificial Neural Network, Decision trees, Genetic Algorithms, Nearest neighbor method, Logistic regression, Fuzzy logic, Fuzzy based Neural Networks, Bayesian Networks and Support Vector Machines. The most used task is classification. Because of the complexity and toughness of medical domain, data mining is not an easy task to accomplish. In addition, privacy and security of patient data is a big issue to deal with because of the sensitivity of healthcare data. There exist additional serious challenges. This chapter is a descriptive study aimed to provide an acquaintance to data mining and its usage and applications in healthcare domain. The use of Data mining in healthcare informatics and challenges will be examined.

Publisher

IGI Global

Reference45 articles.

1. Towards a general theory of action and time

2. American Medical Association. (2010). Getting the most for our health care dollars: Medical liability reform. Chicago, IL: American Medical Association. Retrieved on 30 December 2015 from http://www.allhealth.org/briefingmaterials/AMASharedDecisionMaking-1936.pdf

3. Data mining in clinical decision support systems for diagnosis, prediction and treatment of heart disease.;S. U.Amin;International Journal of Advanced Research in Computer Engineering & Technology,2013

4. Anne. (2011). Challenges for process mining in medicine. Retrieved on 30 August 2013 from http://www.techcrunch.com

5. A Temporal pattern mining approach for classifying electronic health record data.;I.Batal;ACM Transactions on Intelligent Systems and Technology,2012

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