Deep Learning based image analysis of Cancer Pathology

Amal Hosny 1, Salman Ranani 2
1Microbiology and Immunology Division, Department of Biomedical Sciences, Kabale University School of Medicine, Box 317, Kabale, Uganda
2Department of Microbiology and Immunology, Faculty of Biomedical Sciences, Kampala International University, Box 71, Bushenyi, Uganda

ABSTRACT

A revolutionary era in medical diagnosis and therapy is heralded by incorporating deep learning into the study of cancer pathology. The research study describes the deep learning-based image analysis of the cancer pathology. The research study delves into the many uses of Convolutional Neural Networks (CNNs) and other cutting-edge AI methods in pathology image processing for cancer identification and characterization. We explore the fundamentals of tumor identification, cancer type classification, and pathology picture segmentation, demonstrating the rapid and improved outcomes of deep learning in these vital procedures. For determine the research used software related to measure the deep learning link with cancer pathology. Additionally, we investigate how well deep learning models predict patient outcomes using histological characteristics. The technology's wider implications for cancer research and development are highlighted, along with its potential to transform radiomics, drug discovery, and the improvement of pathology imaging. Research addresses the difficulties and possibilities involved in using deep learning for cancer pathology as the ethical issues surrounding the use of AI in healthcare require serious attention. The last section of research highlights how scientists, physicians, and technologists are working together to shape a future in which compassionate care and precision medicine will combine to completely transform the way that cancer is diagnosed and treated

Keywords:Deep learning (DL), Image Analysis (IA), Cancer Pathology (CP), Technology (T).