Pharma Co-vigilance : LLM-Based Multi AI Agentic AE Email Triage Service

Tech Mahindra Limited

An application that enhances existing pharmacovigilance (PV) case intake processes by utilizing open-source generative AI models and agentic AI frameworks.

Customer Challenge:

  • Siloed manual case in-take process
  • Dependency on the specialist on the initial stages due to large volume of e-mails
  • Management issues (labour intensive and susceptible to human errors)
  • Scalability issues due to manual screening and increasing data volume
  • Higher cost and potential delays in safety case processing and reporting

Introducing Pharma Co-vigilance:

Tech Mahindra’s Pharma Co-vigilance brings the power of Azure AI services to provide unified and automated techniques, which enables pharma companies for critical cases in-takes to automatically prioritize valid cases based on the severity of reported events, using configurable criteria and rules.

An application that enhances existing pharma co-vigilance (PV) case intake processes by utilizing open-source generative AI models and AI frameworks. This application integrates with the company's email system to automate the monitoring, classification, prioritization, and verification of PV emails using LLM-based Multi AI agents.

Our Advisory & Consulting Services:

  1. Customized GenAI Studio
  2. Enterprise knowledge Search
  3. Data augmentation for models
  4. Responsible AI adoption
  5. AE Case Classification Agent
  6. Email- monitoring and classification
  7. Prioritization, QC and validation

Possible Scenarios:

  • Pharma case log automation
  • Real time notification of the cases
  • Valid case identification scenarios
  • Prioritization of valid cases based on the severity of reported events, using configurable criteria and rules
  • Verify the classification and prioritizations for human review
  • In case of the requirement for Daily, weekly and monthly metrics to help customers track performance and compliance

Business Benefits:

  • Collaborative environment for Pharma case identification, validation and monitoring
  • Increased efficiency in the case in-take process
  • Low-cost scale up on case prioritization and resolution
  • Faster time to address cases
https://store-images.s-microsoft.com/image/apps.25330.1da5f49c-387b-4a9e-ba9f-aab57388fc55.8009ed65-8dad-4728-bae3-07f02448a2d4.12298d72-3a87-4ef5-8739-09718927a898
https://store-images.s-microsoft.com/image/apps.25330.1da5f49c-387b-4a9e-ba9f-aab57388fc55.8009ed65-8dad-4728-bae3-07f02448a2d4.12298d72-3a87-4ef5-8739-09718927a898
https://store-images.s-microsoft.com/image/apps.1816.1da5f49c-387b-4a9e-ba9f-aab57388fc55.8009ed65-8dad-4728-bae3-07f02448a2d4.d0df1314-49f7-43ad-a2eb-3272bc83852a
https://store-images.s-microsoft.com/image/apps.53036.1da5f49c-387b-4a9e-ba9f-aab57388fc55.8009ed65-8dad-4728-bae3-07f02448a2d4.3a243858-013f-4a4f-be43-a2630b95d58e