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Automated communication system for detection of lung cancer using catastrophe features
Author(s) -
Ramaiah Arun,
S. Singaravelan
Publication year - 2020
Publication title -
informatologia
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.139
H-Index - 7
eISSN - 1848-7793
pISSN - 1330-0067
DOI - 10.32914/i.53.3-4.5
Subject(s) - lung cancer , cluster analysis , adenocarcinoma , support vector machine , cancer , lung , computer science , segmentation , artificial intelligence , stage (stratigraphy) , medicine , pattern recognition (psychology) , pathology , biology , paleontology
One of the biggest challenges the world face today is the mortality due to Cancer. One in four of all diagnosed cancers involve the lung cancer,where the mortality rate is high, even after so much of technical and medical advances. Most lung cancer cases are diagnosed either in the third or fourth stage, when the disease is not treatable. The main reason for the highest mortality, due to lung cancer is because of non availability of prescreening system which can analyze the cancer cells at early stages. So it is necessary to develop a prescreening system which helps doctors to find and detect lung cancer at early stages. Out of all various types of lung cancers, adenocarcinoma is increasing at analarming rate. The reason is mainly attributed to the increased rate ofsmoking - both active and passive. In the present work, a system for the classification of lung glandular cells for early detection of Cancerusing multiple color spaces is developed. For segmentation, various clustering techniques like K-Means clustering and Fuzzy C-Means clustering on various Color spaces such as HSV, CIELAB, CIEXYy and CIELUV are used. Features are Extracted and classified using Support Vector Machine (SVM).

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