Evidence-Grounded Frontier Mapping and Agentic Hypothesis Generation in Nanomedicine
Christiaan G.A. Viviers, Koen de Bruin, Mirre M. Trines, Ayla M. Hokke, Roy van der Meel, Avi Schroeder, Twan Lammers, Willem J.M. Mulder, Fons van der Sommen

TL;DR
The paper introduces pArticleMap, an AI system that maps nanomedicine literature and generates research hypotheses grounded in evidence, aiming to support discovery and research direction selection.
Contribution
It presents a novel system combining article embeddings, graph analysis, and large language models for evidence-grounded hypothesis generation in nanomedicine.
Findings
Generated hypotheses with a 10.8% gold recovery rate.
Achieved a 15.9% recall@10 in hypothesis retrieval.
System often identified relevant future research neighborhoods.
Abstract
Nanomedicine research spans delivery chemistry, immunology, imaging, biomaterials, and disease-specific translational science, yet its conceptual design space remains fragmented across a large and heterogeneous literature. To date, artificial intelligence in nanomedicine has focused primarily on property prediction and formulation optimization, with much less attention to evidence-grounded discovery support at the level of research direction selection. We introduce pArticleMap, a literature-mapping and research-hypothesis-generation system that combines article embeddings, similarity-graph analysis, sparse frontier extraction, structured evidence-pack retrieval, and an audited large-language-model (LLM) workflow for grounded ideation. Rather than forecasting future concept co-occurrence, pArticleMap targets low-density article-level bridge regions and cluster interfaces, then generates…
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