Reveleer
Patient risk prediction
Legacy NLP buried doctors in noise. AI now standardizes messy charts into audit-ready risk predictions, cutting false positives by 50%.
- Up to 50% noise reduction vs legacy NLP
- Logic updates in minutes vs months
Retrieval AI missed vital context in 146M notes. A reasoning model now learns full patient histories for instant, accurate recall.
The nation's first freestanding pediatric hospital manages care for 1.6 million patients, with a database containing 146 million clinical notes.
Physicians cannot manually review complete patient histories during time-constrained visits, while standard retrieval-based AI tools frequently miss...
“We asked ourselves, what if there was an AI medical assistant that could help physicians better understand their patients? An AI that could answer any question about a patient that's sitting in front of them? That's what we set out to build.”
Pediatric hospital system and medical research institute.
Cloud computing services, AI infrastructure, and data analytics platforms for enterprises.
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