Retrieval-Augmented Generation for Clinical Research

We're revolutionizing clinical research by making advanced AI accessible to researchers, accelerating drug discovery, and ultimately improving patient outcomes worldwide.

What is RAG?

Retrieval-Augmented Generation (RAG) is an AI technique that combines the power of large language models with your specific documents to provide accurate, grounded responses.

The Problem with Traditional AI

Hallucinations

AI can generate plausible but incorrect information

No Source Attribution

Impossible to verify where information came from

Generic Knowledge

Cannot access your specific research documents

How RAG Solves This

Grounded Responses

Answers are based only on your uploaded documents

Full Citations

Every response includes page and section references

Your Knowledge Base

AI works with your specific clinical research data

Your Question

"What were the primary endpoints in cardiovascular trials?"

AI Response: Based on the cardiovascular trials in your documents, the primary endpoints were:

• Major adverse cardiac events (MACE) – Study A, p.23
• Time to cardiovascular death – Study B, p.45
• Time to cardiovascular death – Study B, p.45

How RAG Works

A step-by-step breakdown of our RAG implementation

Document Upload

Upload your clinical trial PDFs to our secure, HIPAA-compliant platform

Text Processing

AI breaks down documents into searchable chunks while preserving context

Knowledge Storage

Processed content is stored in our specialized vector database

Document Upload

When you ask questions, the system finds the most relevant information

AI Generation

GPT-4 generates accurate answers using only your document content

RAG Use Cases in Clinical Research

Real-world applications of RAG technology for researchers

Literature Review

Quickly analyze hundreds of research papers to identify key findings and trends

Example Query: "Compare efficacy rates across Phase III trials for diabetes medications"

Regulatory Submissions

Extract specific data points required for FDA submissions and reports

Example Query: "Find all adverse events reported in studies between 2020-2024"

Meta-Analysis

Synthesize data from multiple studies for comprehensive analysis

Example Query: "Calculate pooled effect sizes from cardiovascular outcome studies"

Protocol Development

Reference similar studies to inform new clinical trial designs

Example Query: "What inclusion criteria were used in successful oncology trials?"

RAG Use Cases in Clinical Research

Real-world applications of RAG technology for researchers

85% Time Savings

Reduce literature review time from weeks to hours

100% Accuracy

All responses are grounded in your uploaded documents

Source Citations

Every answer includes exact page and section references

Multi-Document

Query across hundreds of documents simultaneously

Technical Specifications

Under the hood details for technical teams

Vector Database

Pinecone with 1536-dimensional embeddings

Processing Speed

< 30 seconds per document

Retrieval Accuracy

95%+ semantic relevance

AI Model

GPT-4 with clinical fine-tuning

Chunk Size

500-1000 tokens with overlap

Supported Languages

Pinecone with 1536-dimensional embeddings

Experience RAG Technology Today

Start your free trial and see how RAG can transform your clinical research workflow.

✨ No credit card required for 14-day trial

📚 Upload up to 100 documents

🤖 Unlimited AI conversations

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