Optimal Deep Learning based Classification Model for Mitral Valve Diagnosis System

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Abstract

In present days, the domain of mitral valve (MV) diagnosis so common due to the changing lifestyle in day to day life. The increased number of MV disease necessitates the development of automated disease diagnosis model based on segmentation and classification. This paper makes use of deep learning (DL) model to develop a MV classification model to diagnose the severity level. For the accurate classification of ML, this paper applies the DL model called convolution neural network (CNN-MV) model. And, an edge detection based segmentation model is also applied which will helps to further enhance the performance of the classifier. Due to the non-availability of MV dataset, we have collected a MV dataset of our own from a total of 211 instances. A set of three validation parameters namely accuracy, sensitivity and specificity are applied to indicate the effective operation of the CNN-MV model. The obtained simulation outcome pointed out that the presented CNN-MV model functions as an appropriate tool for MV diagnosis.

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A, Anbarasi., & S, Ravi. (2020). Optimal Deep Learning based Classification Model for Mitral Valve Diagnosis System. International Journal of Engineering and Advanced Technology, 9(4), 315–321. https://doi.org/10.35940/ijeat.c6530.049420

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