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"path": "/t/launched-peve-health-ai-powered-medical-imaging-demo/175256#post_1",
"publishedAt": "2026-04-14T23:59:42.000Z",
"site": "https://discuss.huggingface.co",
"tags": [
"PeVe_Health Pneumonia Detector - a Hugging Face Space by nileshhanotia"
],
"textContent": "Try it live: PeVe_Health Pneumonia Detector - a Hugging Face Space by nileshhanotia\n\n-–\n\nWhat you can do in this demo\n\n• Upload a chest X-ray\n\n• Get instant pneumonia detection\n\n• Receive an auto-generated radiology report\n\n• View confidence scores & risk levels\n\n-–\n\nWhy this is interesting\n\nMost medical AI models just give predictions.\n\nThis system goes further by combining:\n\n• Computer Vision (X-ray analysis)\n\n• NLP (clinical report generation)\n\n• Real-time inference (<100ms)\n\n-–\n\nBuilt for real-world use\n\n• Emergency triage support\n\n• Radiology workflow assistance\n\n• Low-resource healthcare settings\n\n-–\n\nTech Stack\n\nPyTorch • Hugging Face Spaces • Gradio • ResNet18 + NLP\n\n-–\n\nTry it yourself\n\nUpload an X-ray and see how AI interprets it —\n\nfrom detection → to full clinical-style explanation.\n\n-–\n\nWould love feedback from:\n\n• Healthcare professionals\n\n• ML engineers\n\n• Researchers in medical AI\n\n#HuggingFace #MedicalAI #HealthcareAI #DeepLearning #ComputerVision #AI #OpenSource",
"title": "launched: PeVe Health — AI-powered Medical Imaging Demo"
}