gayathri1462/Breast-Cancer-Detection-Web-App
SVM (Support Vector Machines) is used to build and train a model using human cell records, and classify cells to predict whether the samples are benign or malignant and display output using Flask Application On Heroku
This web application helps medical professionals quickly assess the likelihood of breast cancer. By inputting details about cell characteristics from patient records, it provides an immediate prediction of whether a cell sample is benign or malignant. It's designed for pathologists, oncologists, or medical researchers who need a rapid, initial classification tool.
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Use this if you need a quick, preliminary prediction of breast cancer based on specific cell sample attributes, such as clump thickness and cell uniformity.
Not ideal if you require a diagnostic tool for final clinical decisions or need to analyze imaging data, as it only uses numerical cell characteristic inputs.
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Mar 24, 2021
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