Reduce Manual Processing Time and Costs and Increase Categorization Accuracy with AI AutoClassification for eTMF & eCTD
Are you facing challenges in getting your arms around the vast documentation required for the FDA drug review process? Revolutionize your document processing and regulatory compliance with eTMF autoclassification powered by Court Square Group.
Completeness, Quality, & Timeliness: AI AutoClassification for eTMF & eCTD
Despite technology advancements, the clinical documentation process largely remains a human-centric activity. Today, Docxonomy’s intuitive AI technology bridges the gap, automating collection, classification, formatting, and metadata extraction with human-like intelligence. And the results speak for themselves.
Manual Effort Reduction
This solution minimizes manual processing time by 75%, allowing efficient review of classification engine results.
Reduced Costs
Reduce the cost of clinical trial documentation by automating many of the processes.
Improved Accuracy
Reduce human error using AI and Machine Learning (ML) utilizing multiple Large Language Models (LLMs).
Increased Efficiency
Automate many of the manual tasks involved in clinical trial documentation. Free up time to focus on other aspects of the clinical trial process.
Accelerate Decision-Making
Transform large volumes of unstructured documentation into well-organized content in a fraction of the time.
Beneficial Insights
Identify patterns and trends in clinical trial data. Gain new insights into the safety and efficacy of treatments.
Refuse-to-File Actions
In the face of rising regulatory standards, it’s crucial to eliminate misclassifications and missing metadata to avoid RTFs.
Streamline FDA Submissions
Create a unified and organized Electronic Trial Master File (eTMF) to ensure TMF completeness – ensuring more efficient FDA submissions.
Core Features of Court Square Group’s AI AutoClassification Solution
- 21 CFR Part 11 audit trail
- DIA TMF Reference Model/CDISC standard alignment
- Built-in quality control checks for high-quality output
- Document collection and synchronization
- Unstructured content transformation after completely combining content databases
- Automatic OCR for content extraction
- AI capabilities for timely data extraction

