Pattern classification of interstitial lung disease in high resolution clinical datasets: A systematic review
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2018-03-18 https://doi.org/10.14419/ijet.v7i2.7.10275 -
Automated tissues characterization, Deep Convolution Neural Network, ground glass, Interstitial lung diseases, High Resolution Computed Tomography, -
Abstract
Automated tissues characterization helps to diagnosis the various diseases including Interstitial lung diseases (ILD). The various features and the several classifiers are used in categorize the different layers depend on the pattern presented in the image. The different types of diseases may occur in the lungs and some of the diseases happen to leave the scars. These scars can be found in the High Resolution Computed Tomography (HRCT) and have different pattern. The different diseases cause the different pattern in the images and these is classified using the efficient classifier that helps to diagnosis the diseases. In this paper, review for the many researches regarding to the classification of the different pattern from the Computed Tomography (CT) images is presented. The evaluation of the efficiency of the methods in terms of classifier and database used for the research is made. The Deep Convolution Neural Network (CNN) provides the promising classifier efficiency compared to the other researches for different pattern. In general, there are five types of pattern is classified: Healthy, ground glass, honeycomb, Fibrosis, and emphysema.
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References
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How to Cite
Ummay Atiya, S., & V.K Ramesh, N. (2018). Pattern classification of interstitial lung disease in high resolution clinical datasets: A systematic review. International Journal of Engineering & Technology, 7(2.7), 114-119. https://doi.org/10.14419/ijet.v7i2.7.10275Received date: 2018-03-18
Accepted date: 2018-03-18
Published date: 2018-03-18