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- W3149767405 abstract "According to a reports of WHO, one in 10 Indians is going to grow a lifetime of cancer and another in 15 will die from it because survival rates in India are low due to late detection. Indian Medical Council of research recently reported that total number of new cases is approximately expected to be 17.3 lakhs in 2020. It is predicted by experts that there will be a 500% increase in cancer incidence in India by 2025. There are many advanced methods and techniques of breast cancer diagnosis in modern medical science. Computer scientists and pathologist are working to use latest artificial intelligence (AI) techniques for improving the efficiency of diagnostic workflows in the analysis of pathological slides for diagnosis, prognosis, prevention and other significant clinical purposes. Histopathological images attained by biopsy is one of the refine imagining modality used to collect samples for the detection of breast cancer. This article discusses and summarizes the digital imaging methods for the identification of breast cancer in histopathological photographs and elaborates its future possibilities." @default.
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- W3149767405 date "2021-01-01" @default.
- W3149767405 modified "2023-09-23" @default.
- W3149767405 title "Analysis of Histopathological Images Using Machine Learning Techniques" @default.
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