A flask website for cancer detection and diagnosis using machine learning
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Updated
Mar 21, 2019 - CSS
A flask website for cancer detection and diagnosis using machine learning
cancerSCOPE, a python library for cancer diagnosis
Glioblasted is a machine learning model to assist in the detection of glioblastoma multiforme, a high-grade, aggressive form of central nervous system cancer.
This repository contains the codes for reproducing the results obtained by out DeepHistoPathology model for Ivasive Ductal Carcinoma open Dataset cancer detection
Performing Cancer Diagnosis via an Isoform Level Expression Ranking-based LSTM Model
Classify the given genetic variations/mutations based on evidence from text-based clinical literature.
Problem Statement : Classify the given genetic variations/mutations based on evidence from text-based clinical literature.
A comprehensive classification tool based on pure transcriptomics for precision medicine
AI-powered app using logistic regression to predict breast cancer diagnosis from tumor measurements with high accuracy 97.3%.
Classifying the given genetic variations/mutations based on evidence from text-based clinical literature.
This project consists of the analysis of Breast Cancer dataset and exploration of different machine learning models for predictions of diagnosis of tumors based on tumor cells characteristics.
Classify the given genetic variations/mutations based on evidence from text-based clinical literature.
Utilizing SVM for breast cancer classification, this project compares model performance before and after hyperparameter tuning using GridSearchCV. Evaluation metrics like classification report showcase the effectiveness of the optimized model.
Code and experiments for "Non-convex SVM for cancer diagnosis based on morphologic features of tumor microenvironment"
Cancer diagnosis (using supervised machine learning and AI to determine whether tumor is malignant or benign)
Developed a ML model to predict cancer diagnosis using a Kaggle dataset, as part of ECS 171 (Machine Learning) at University of California, Davis, under the instruction of Dr. Setareh Rafatirad. Key contributions: 1) Implemented Regression, KNN, and Random Forest models. 2) Applied EDA analysis and feature selection
In this problem statement, a sequence of genetic mutations and clinical evidences, i.e. descriptive texts as recorded by domain experts are used to classify the mutations to conclusive categories, to be used for diagnosis of the patient.
Machine Learning - Multiclass Classification
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