Implementation of automatic detection of lung cancer using Adoptive Neuro Fuzzy system
نویسنده
چکیده
The major cause of cancer-related deaths is due to lung cancer. Lung cancer is caused by various abnormalities and one such abnormality is the lung nodule. When these lung nodules are detected at an early stage the survival rate is improved. CT image is having a large no of slices of images which makes the manual diagnosis a tedious process. It also takes a large time and energy of the radiologists. Hence an automatic approach for the detection of lung nodule is proposed in this research. The simulation and implementation result show that proposed approach can be effectively used for cancer detection to improve the survival rate of population. KeywordLung cancer, Neuro fuzzy system, Lung nodules,
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