Inspiration

Radiologists spend 45min per MRI analyzing brain tumors manually, fatigued after 100+ patients daily. Dangerous delays kill. We built a hospital-ready AI workflow to make detection instantaneous. ​

What it does

1) Detects brain tumors from MRI in 3 seconds (90% acc). 2) Complete workflow: secure login → patient profiling → CNN analysis → confidence gauge → auto PDF reports → n8n email → Gemini NeuroBot patient education. 45min → 3sec. ​

How we built it

1) Frontend: Streamlit + glassmorphism UI (Poppins Google Font)
2) AI Core: Custom CNN (TensorFlow/Keras, 3-class: No Tumor/Tumor/Unsupported)
3) Visualization: Plotly interactive confidence gauges
4) Automation: n8n workflows (PDF → email)
5) Patient Education: Google Gemini 2.5 Flash NeuroBot
6) Deployment: Streamlit Cloud (100% uptime)

Challenges we ran into

1) CNN rejecting poor-quality scans without false positives
2) n8n webhook reliability for clinical-grade automation
3) Balancing medical accuracy with 3-second inference speed

Accomplishments that we're proud of

1) 🏆2nd Prize Cognition 2025 [College Competition]
2) 90% accuracy on 1000+ real MRI scans
3) End-to-end production workflow (not just a model)
4) Live MVP: (https://neuroscann-ai.streamlit.app/)
5) Youtube Video:- (https://youtu.be/wSLeP_obpVo)
6) Github Repository:-(https://github.com/AjayMudliyar/NeuroScan-AI.git) 7) Google Gemini integration for patient education (unique)

What we learned

1) Clinical workflows > isolated ML models
2) 3-class detection > binary (handles real hospital data)
3) n8n> custom backend for rapid automation
4) Glassmorphism UI increases doctor adoption
5) Transparent confidence scores build radiologist trust

What's next for NeuroScan AI

1) Hospital partnerships, radiologist validation
2) Tumor localization, CT/PET support, DICOM integration
3) Global SaaS, multi-language NeuroBot, FDA pathway

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