Please use this identifier to cite or link to this item: http://localhost:8080/xmlui/handle/123456789/2181
Title: PREDICTION OF LUNG DISEASE USING HOG FEATURES AND MACHINE LEARNING ALGORITHMS
Authors: Pradeeba R
Karpagavalli S
Keywords: Emphysema
Pneumonia
Bronchitis
Histogram of Oriented Gradients
Naive Bayes
Decision tree
Multilayer Perceptron
Support Vector Machine
Issue Date: Jan-2016
Publisher: Innovative Research in Computer and Communication Engineering
Abstract: Lung diseases are the one that mostly affects large number of people in the world. A sharp rise in respiratory disease in India due to infection, smoking and air pollution in the country. Respiratory diseases were no longer restricted to the elderly but were now being detected even in younger age groups. The early and correct diagnosis of any pulmonary disease is mandatory for timely treatment and prevent mortality. From a clinical standpoint, medical diagnosis tools and systems are of great importance. The proposed work is aimed at establishing more advanced diagnostic strategy for lung diseases using CT scan images. The three types of lung disease Emphysema, Pneumonia, Bronchitis are considered in this work. A dataset with 126 CT scan images of Emphysema, 120 CT scan images of Pneumonia and 120 CT scan images of Bronchitis are collected from National Biomedical Imaging Archive (NBIA) database. The classification of lung disease using Histogram of Oriented Gradients (HOG) features is carried out using classifiers Naive Bayes (NB), Decision tree (J48), Multilayer Perceptron (MLP) and Support Vector Machine (SVM). The performance of the models is compared for its predictive accuracy and the results are presented.
URI: http://www.ijircce.com/upload/2016/january/13_Prediction.pdf
http://localhost:8080/xmlui/handle/123456789/2181
ISSN: Print:2320-9798
Online:2320-9801
Appears in Collections:International Journals

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