Deriving information from mountain of heathcare data can be too complex and voluminous to be processed by human capabilities alone. To overcome this flaw or nature of data, healthcare practioners are adopting new emergent technology to discover effective and efficient pattterns. However, medical researchers are exploiting numerous data mining techniques to find correlations or patterns among large scale databases as compared to traditional techniques for future medical diagnosis. Data mining can be termed as an essential component for knowledge discovery process, where the vivid process determines effective and potential benefits among the data. However challenge is to establish proper exploitation strategy among health care data records which offer numerous facts in creation, dissemination and preservation of knowledge using advanced technologies, whereas, if the discovered knowledge tends to be a successful activity then gradually it can be used for futuristic decision making in healthcare organization. For instance if data of cancer patients or other diseases might consists of knowledgeable patterns which can be more expected to develop a kind of disease, so such knowledge can be used to prevent the diagnosis of patient’s disease for futuristic decision making. Progressively Data mining and knowledge discovery are used as interdisciplinary terms to discover hidden and unknown information from large scale databases. Eventually data mining is also known as essential step in knowledge discovery process, knowledge discovery process includes several integrated preprocessing and post processing steps to discover hidden information from databases. There exists several application domain areas of data mining techniques such as medical domain for diagnosis, management survey of data, marketing area of research, statistical analysis, and geographical analysis of data and several other research areas (Arabie & Hubert, 1994; Dunham, 2003; Kaur et al., 2010; Chauhan & Kaur, 2014). Data mining techniques are highly computational techniques under certain computational circumstances to retrieve effective and efficient patterns from raw data (Fayyad et al., 1996). The output of data mining techniques can be further applied for decision making support system, to retrieve profitable environment for experts and finally provide benefits to end users. Such analyses are increasing pressure on healthcare organizations to make decision based on data mining techniques to gain insights of data. Data mining can influence medical decision making by maintaining high level of healthcare. Medical decision making from diagnosis to patient management is becoming more and more complex due to rapid growth of knowledge during last three decades. It is possible that even with specialization and super specialization physician may not be able to make an optimal decision. Computer assisted Medical Decision making use of data mining techniques may provide a partial solution to the problem. Since medical diagnosis is probabilistic in nature, it is well suited for probabilistic formalism. Bayesian classifiers are statistical classifiers based on famous Bayes theorem of conditional probability. Thus medical diagnosis fits well into Bayesian probabilistic framework. But there Harleen Kaur Hamdard University, India
[1]
H. Warner,et al.
A mathematical approach to medical diagnosis. Application to congenital heart disease.
,
1961,
JAMA.
[2]
G. Diamond,et al.
Analysis of probability as an aid in the clinical diagnosis of coronary-artery disease.
,
1979,
The New England journal of medicine.
[3]
Jaime G. Carbonell,et al.
Introduction: Paradigms for Machine Learning
,
1989,
Artif. Intell..
[4]
Geoffrey E. Hinton.
Connectionist Learning Procedures
,
1989,
Artif. Intell..
[5]
Oren Etzioni,et al.
Explanation-Based Learning: A Problem Solving Perspective
,
1989,
Artif. Intell..
[6]
Jaime G. Carbonell.
Paradigms for machine learning
,
1995
.
[7]
Gregory F. Cooper,et al.
A Bayesian method for the induction of probabilistic networks from data
,
1992,
Machine Learning.
[8]
Ritu Chauhan,et al.
Predictive Analytics and Data Mining: A Framework for Optimizing Decisions with R Tool
,
2014
.
[9]
R L Blum,et al.
Discovery, confirmation, and incorporation of causal relationships from a large time-oriented clinical data base: the RX project.
,
1982,
Computers and biomedical research, an international journal.
[10]
J A Reggia,et al.
Transferability of Medical Decision Support Systems Based on Bayesian Classification
,
1983,
Medical decision making : an international journal of the Society for Medical Decision Making.
[11]
William J. Long,et al.
Original investigations: Evaluation of a New Method for Cardiovascular Reasoning
,
1994,
J. Am. Medical Informatics Assoc..