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Your certificate is now private

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Certificate of Completion

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THIS ACKNOWLEDGES THAT

HAS COMPLETED THE FALL 2025 DATA SCIENCE BOOT CAMP

Christopher Ewasiuk

Roman Holowinsky, PhD

NOVEMBER 13, 2025

DIRECTOR

DATE

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TEAM

Brain Tumor Diagnosis Using MRI and Convolutional Neural Networks

Wenwen Li, Christopher Ewasiuk, Suo-Jun Tan, Jacob Johnson

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The goal of this project is to develop various convolutional neural network (CNN) to classify brain tumors from MRI images. By automating aspects of tumor diagnosis, this system aims to reduce diagnostic time, provide decision support to radiologists, and create a foundation for future improvements in medical image analysis.

Data Collection & Preprocessing
• Use publicly available MRI brain tumor datasets.
•Apply preprocessing steps (normalization, resizing, augmentation) to ensure data consistency.

Model Development
• Implement various CNN architectures with multiple convolutional and pooling layers, followed by fully connected layers for classification (tumor vs no tumor, Glioblastomas vs others, IDH mutation classifier)
•Train the models to distinguish between different tumor types.

Acknowledgment
This project idea was proposed by Stella Oh.

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github URL

©2017-2026 by The Erdős Institute.

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