Machine learning-based model for classifying lung cancer medical images
Keywords:
Machine Learning, classify, Kanban, support, diagnosisAbstract
It is important to highlight that this investigative work aims to develop a model using Machine Learning (ML) that can classify X-ray images of the lung according to the types of lung cancer: benign, malignant, and normal images for model training. The agile Kanban methodology is used, and the instrument analyzed is through descriptive statistics, which will be performed using frequency tables.
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