Efficient Diagnosis and Analysis of Cardiovascular Disease Through Computational Intelligence
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Abstract
The unhealthy life style and the dynamic conditions of environmental changes has
newlinerapidly increased the chances of heart diseases. An early diagnosis of heart
newlinediseases can minimize the future critical effects and fatal conditions. The need of
newlineautomation in medical domain has increased in many folds in recent time. The
newlineautomation systems are primarily targeted for early monitoring of diseases. The
newlineautomation has a great help at the time of diagnosing and criticality in diagnosis
newlineof a disease. With advancement of new technologies in learning system, the
newlineprocessing and classification of observing data has attained speed and accuracy in
newlineit. However, the difficulty in observing data and its dependency on the
newlineclassification process resulted into a large data processing. This limits the
newlineapplication of automation system in different critical usage. The objective of
newlinespeedy processing and infallible accuracy with low processing overhead for early
newlinediagnosis of heart diseases is focused in the proposed research work.
newlineThe presented approach developed a new data representation based on the
newlinecharacteristic representation of the monitoring parameters. Fourteen monitoring
newlineparameters referred for heart disease diagnosis from the standard Cleveland data
newlineset. The said parameters were used in the processing of heart disease diagnosis. A
newlineweighted clustering approach based on distance and gain parameters in clustering
newlineis presented. The proposed data sub clustering approach enhances the learning
newlineperformance and it resulted into a faster and accurate decision system as compared
newlineto present approaches.
newlineIn order to enhance the decision accuracy in addition to separate data monitoring,
newlinea continuous observation from ECG signal is proposed. Twelve descriptive features of ECG signal that defines the characteristic and variations related to heart operation are developed. The feature overhead is addressed to minimize by a fusion approach,
newlinewhere a selective approach of feature vector for a learning approach using neural
newlinenetwork is presented. The pro