Magnus Gray Source Confirmed
Affiliation confirmed via AI analysis of OpenAlex, ORCID, and web sources.
Researcher
National Center for Toxicological Research
faculty
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Biography and Research Information
OverviewAI-generated summary
Magnus Gray's research focuses on the application of artificial intelligence and natural language processing techniques to regulatory science, particularly within the pharmaceutical domain. His work investigates methods for measuring and mitigating bias in AI models, aiming to enhance transparency and trustworthiness in regulatory environments. Gray has explored the use of language embedding models for analyzing and classifying regulatory documents, such as drug labeling information. He has also studied the comparative performance of molecular descriptors and AI-based embeddings for toxicity prediction.
Gray collaborates with researchers at the National Center for Toxicological Research, including Leihong Wu and Joshua Xu, and has published multiple papers with them. His scholarship metrics include an h-index of 6, with a total of 14 publications and 77 citations.
Metrics
- h-index: 6
- Publications: 14
- Citations: 77
Selected Publications
- Comparative Study of Molecular Descriptors and AI-Based Embeddings for Toxicity Prediction (2025) DOI
- Benchmarking bias in embeddings of healthcare AI models: using SD-WEAT for detection and measurement across sensitive populations (2025) DOI
- SD-WEAT: Towards Robustly Measuring Bias in Input Embeddings (2024) DOI
- A framework enabling LLMs into regulatory environment for transparency and trustworthiness and its application to drug labeling document (2024) DOI
- RxBERT: Enhancing drug labeling text mining and analysis with AI language modeling (2023) DOI
- Measurement and Mitigation of Bias in Artificial Intelligence: A Narrative Literature Review for Regulatory Science (2023) DOI
- Classifying Free Texts Into Predefined Sections Using AI in Regulatory Documents: A Case Study with Drug Labeling Documents (2023) DOI
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