LUNG CANCER DETECTION TECHNIQUE BASED ON SURF DESCRIPTOR AND KNN ALGORITHMS
Journal: INTERNATIONAL JOURNAL OF RESEARCH -GRANTHAALAYAH (Vol.9, No. 12)Publication Date: 2021-12-30
Authors : Dalia Shihab Ahmed Karim Q. Hussein;
Page : 64-80
Keywords : Lung Cancer; Detection Technique; SURF Descriptor; Feature Extraction; Machine Learning;
Abstract
In this century, lung cancer is undoubtedly one of the major serious health problems, and one of the leading causes of death for women and men worldwide. Despite advances in treating lung cancer with unprecedented products of pharmaceutical and technological advances, mortality and morbidity rates remain a major challenge for oncologists and cancer biologists. Thus, there is an urgent need to provide early, accurate, and effective diagnostic techniques to improve the survival rate and reduce morbidity and mortality related to lung cancer patients. Therefore, in this paper, an effective lung cancer screening technique is proposed for the early detection of risk factors for lung cancer. In this proposed technique, the powerful acceleration feature Speeded up robust feature (SURF) was used to extract the features. One of the machine learning methods was used to detect cancer by relying on the k nearest neighbor (KNN) method, where the experimental results show an effective way to discover SURF features and tumor detection by relying on neighborhoods and calculating the distance using KNN. As a result, a high system sensitivity performance success rate of 96% and a system accuracy of 99% has been achieved
Other Latest Articles
- FARMERS’ PERCEPTIONS OF CLIMATE CHANGE, ITS ASSOCIATED RISKS AND ADAPTATION METHODS: A CASE STUDY OF GHAZIABAD, UTTAR PRADESH, INDIA
- CAPITAL STRUCTURE AND BANK PERFORMANCE OF ISLAMIC AND COMMERCIAL IN YEMEN
- FLORISTIC COMPOSITION AND BIOLOGICAL SPECTRUM OF BARA GALI, ABBOTTABAD
- BANNED ORGANOCHLORINE PESTICIDES RESIDUE STILL OCCUR IN CATTLE MILK FROM KHARTOUM STATE
- THOLPAVAKOOTHU: A STUDY ON THE PERFORMING ART OF SHADOW PUPPETRY IN KERALA
Last modified: 2022-01-08 17:37:33