Towards Heart Disease Prediction using Hybrid Data Mining
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Abstract
Nowadays, heart diseases are very common and one of the major causes of death across
the globe. This calls for accurate and timely diagnosis of the heart disease. Although, the
healthcare industry has come a long way to treat patients with several kinds of diseases,
yet the prediction of heart diseases is a complicated task in the healthcare field.
Therefore, it is essential to develop a decision support system for analysing the heart
disease in a patient. A heart disease is a dangerous disease which is not visible to naked
eyes. Bad decision making by the physician can even cause death of a patient. To avoid
these kinds of decisions, numerous hospitals use the clinical information system to
manage the data of patients’ health. There is abundant data available with the health care
systems; however, the knowledge about the data is rather poor. The accessibility of the
enormous size of medical dataset hints towards the requirement of a tool which analyses
data to extract valuable information. Unfortunately, this data is hardly used to support
the healthcare decision making. There are huge amounts of hidden patterns in this data
which are yet to be explored; this gives rise to the question that how we can extract
useful information from these patterns. Thus, it is essential to form a model with the help
of standard datasets to predict the heart disease of the patients even before it occurs. Data
scientists have attempted several analytical methods in order to improvise the
examination of heart diseases. Previously, various data mining techniques have been
implemented in the healthcare systems, however, hybridization in addition to single
technique in the identification of heart disease shows promising outcomes, and can be
useful in further investigating the treatment of the heart diseases. Additionally, this can
reduce the cost of treatment. This work attempts to survey some recent techniques
applied towards knowledge discovery for heart disease and further proposes a novel
prediction method using bagging and boosting to attain improved accuracy.
Keywords—Data Mining, Heart Disease, Classification, Bagging, Boosting
Description
Master of Engineering -CSE
