Overview
Pharmaceutical companies, CROs, Medical Affairs teams, and healthcare researchers depend on high-quality scientific evidence to support clinical and business decisions. Evaluating the quality, relevance, and reliability of references within research publications is often a manual, time-consuming process requiring significant domain expertise.
Tilbury developed an AI-Powered Medical Reference Intelligence Platform to automate the assessment of reference quality and scientific evidence within medical research articles.
Solution
Using Artificial Intelligence (AI), Natural Language Processing (NLP), Medical Knowledge Models, and Research Analytics, the platform automatically analyzes the references cited in medical publications and generates a comprehensive evidence quality report.
Key Capabilities
Business Impact
Result
Tilbury transformed reference evaluation from a manual review process into an AI-driven evidence intelligence capability. The platform helps research organizations assess scientific credibility, identify evidence gaps, and make faster, more informed decisions based on trusted medical literature.
Technology Stack: Python | AI | NLP | OpenAI LLMs | Hugging Face Transformers | Semantic Scholar | CrossRef | OpenAlex | Medical Research Analytics