This repo is dedicated to the medical reserach for skin and breast cancer and brain tumor detection detection by using NN and SVM and vgg19
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Updated
Oct 13, 2021 - Python
This repo is dedicated to the medical reserach for skin and breast cancer and brain tumor detection detection by using NN and SVM and vgg19
Develop a deep learning-based model for accurate image-to-image translation across MRI sequences for the brain region.
Solution for the precisionFDA Brain Cancer Predictive Modeling Challenge using msaenet
My Solution for PrecisionFDA Brain Cancer Predictive Modeling and Biomarker Discovery Challenge
Survival Prediction of GlioBlastoma Patients using Ensemble architecture of random forest, xgboost and logistic regression classifiers. Uses Optuna for tuning, SMOTE for imbalances, CNN for feature extraction, LDA for feature pre-processing, MPL and Seaborn for visualizations and concordance index as the performance metrics.
Brain cancer classification with 98.2% accuracy
This project was developed as a solution to medical science which aims to classify different types of brain cancers using cutting edge advanced deep learning techniques.
Accurate Early Detection of GBM Brain Cancer With Deep Learning (AI) - Silver Medal Finalist at GVRSF 2019
MRI scans, tumor classification.
A small brain cancer detector, AI class assignment
🔬🧠 Intraoperative deep learning-based detection of high grade glioma with optical coherence tomography
This R code utilises regression analysis to create a linear model to try and predict: 1. if a persons calorie consumption changes with age and 2. whether a patients survival differs by treatment type, plus what covariates have a significant influence on this
Comprehensive review of glioblastoma multiforme (GBM), a grade 4 brain cancer, covering subtypes, symptoms, treatments, causes, and lifestyle interventions. Includes full paper, references, and appendices for researchers and clinicians.
This project leverages artificial intelligence to address ethical and privacy concerns in healthcare by generating synthetic brain cancer images. The goal is to create a synthetic dataset that closely resembles real data, enabling effective training of machine learning models without compromising patient privacy.
Scientific framework and immunological rationale for individualized brain tumor immunotherapy protocols.
Research & Python models for the 2026 GBM study. Features the "Mechanical-Immunological Axis" (FUS + mRNA vaccines), Kaplan-Meier survival analysis, and clinical decision algorithms for precision neuro-oncology.
Application of the Vision Transformer to the SLIM Brain Database for brain cancer detection
In this project, we will implement and compare ResNet, AlexNet and MLP on brain cancer T2-weighted MRI image.
Integrated strategies for Grade 4 Glioblastoma by Samuelson G. Combining molecular genomics, LIFU-mediated BBB disruption, and GKI-based metabolic conditioning to extend survival. Includes 2026 WHO standards and GKI protocols.
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