HealthcareDocument AIIndia2025

Hospital Chain Cut Prescription Processing Time 94% with Multilingual OCR + LLM Pipeline

Hospital Chain · 12 hospitals · Tier-1 South India

Outcomes

Time per prescription
8-12 min30-50 sec
-94%
Extraction error rate
2.1%0.3%
-86%
Straight-through processing
0%78%
new capability
OPD discharge delay due to pharmacy
24 min avg7 min
-71%
Pharmacist productivity
60-70 Rx/day180-200 Rx/day
+185%

The Challenge

Pharmacy fulfilment took 8-12 minutes per prescription because pharmacists manually typed handwritten doctor instructions into the hospital system. Errors averaged 2.1% — clinically significant. The pharmacy backlog created OPD discharge bottlenecks.

Our Solution

Iedeo built an OCR + LLM pipeline that extracts drug, dose, frequency, route and duration from handwritten prescriptions in English and Tamil. Confidence-scored output routes to a pharmacist review UI for cases below 92% confidence; everything above goes straight to the dispensing system with audit logs.

Architecture & Stack

  • Mobile + tablet capture (pharmacy app)
  • Hybrid OCR: PaddleOCR (handwriting) + Azure Form Recognizer (typed)
  • GPT-4o for medical-context entity extraction with custom drug-name vocabulary (12K Indian-market drugs)
  • Drug-drug interaction check against local formulary
  • HIS integration (custom HIS — REST + HL7 FHIR)
  • PHI redaction in logs, encryption-at-rest with AES-256
  • Pharmacist review UI with side-by-side image + extracted fields

Technology Stack

PaddleOCRAzure Form RecognizerGPT-4oFHIRPostgreSQLRedisAWS Mumbai (HIPAA-aligned)

Timeline

3 weeks discovery → 8 weeks build → 6 weeks pilot in 2 hospitals → 4 weeks rollout

We deferred this project for years because OCR alone could not handle Indian doctor handwriting. The LLM layer made it real.

Chief Information OfficerHospital Chain client

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