Ovarian-type surface epithelial neoplasms of the Testis and Para testis are uncommon, and the Mucinous subtype is particularly rare. These tumours represent a counterpart to ovarian cancer. Malignant tumours have the potential for metastatic spread and are often fatal. Doubts and controversy persist regarding the histogenesis of these tumors, the general consensus among authors supports a mullerian origin, but there is argument that mesothelial inclusions or germ cell derivations too play a role. They pose significant diagnostic challenge by showing positivity of various immunohistochemical staining which are also significantly positive with metastasis of colonic neoplasms and paratesticular tumours. We present to you a case of mucinous adenocarcinoma of testis in a 42 year old male.
In recent years researchers are intensely using machine learning and employing AI techniques in the medical field particularly in the domain of cancer. Breast cancer is one such example and many studies have proposed CAD systems and algorithms to efficiently detect cancer cells and tumors. Breast cancer is one of the dreadful cancers accounting for a large portion of deaths caused due to cancer worldwide mostly affecting women, needs early detection for proper diagnosis, and subsequent decrease in death rate. Thus, for efficient classification, we implemented different ML techniques on Wisconsin dataset [1] namely SVM, KNN, Decision Tree, Random Forest, Naive Bayes using accuracy as a performance metric, and as per observance, SVM has shown better results when compared to other algorithms. Also, we worked on Breast Histopathology Images [2] scanned at 40x which had images of IDC which is one of the most common types of breast cancers. And to work with the image dataset along with EDA we used high-end techniques like a mobile net where smote a resampling was used to handle imbalanced class distribution, CNN, SVC, InceptionResNetV2 where frameworks like Tensor Flow, Keras were loaded for supporting the environment and smoothly implement the algorithms.
scite is a Brooklyn-based organization that helps researchers better discover and understand research articles through Smart Citations–citations that display the context of the citation and describe whether the article provides supporting or contrasting evidence. scite is used by students and researchers from around the world and is funded in part by the National Science Foundation and the National Institute on Drug Abuse of the National Institutes of Health.