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Related Concept Videos

Toxicity Testing in Animals01:23

Toxicity Testing in Animals

Toxicity tests in animals are grounded on two main assumptions: first, the effects observed in laboratory animals can be extrapolated to humans, especially when adjusted for body surface area; second, high-dose exposure in animals is essential to identify potential human hazards from lower doses. This is based on the quantal dose-response concept, which faces the challenge of extrapolating results from relatively few test animals to much larger human populations. For example, a 0.01% incidence...

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Related Experiment Video

Updated: May 16, 2026

Augmenting Large Language Models via Vector Embeddings to Improve Domain-Specific Responsiveness
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Augmenting Large Language Models via Vector Embeddings to Improve Domain-Specific Responsiveness

Published on: December 6, 2024

Transforming animal study toxicology reports into structured, harmonized data using large language models.

Tatyana Y Doktorova1, Ilya Schneider Chernov2, Alberto Formaggio2

  • 1Predictive Modelling, pRED, Roche, Basel, Switzerland. tatyana.doktorova@roche.com.

Archives of Toxicology
|May 14, 2026
PubMed
Summary
This summary is machine-generated.

We developed a Large Language Model (LLM) pipeline to structure preclinical toxicology reports, making safety data more accessible for computational analysis and drug development. This enhances data reuse and predictive toxicology modeling.

Keywords:
Animal study reportsLLM-supported text extractionTreatment-related findings

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Area of Science:

  • Computational toxicology
  • Data science in drug safety
  • Pharmacology and toxicology

Background:

  • Preclinical toxicology reports contain valuable expert interpretations but are often unstructured.
  • Unstructured data limits systematic reuse and integration with computational safety approaches.

Purpose of the Study:

  • To develop a Large Language Model (LLM)-supported pipeline for converting unstructured toxicology reports into structured, machine-readable datasets.
  • To harmonize extracted data with Standard for Exchange of Nonclinical Data (SEND) terminology.

Main Methods:

  • The pipeline integrates automated document preprocessing, section identification, schema-constrained information extraction, and semantic harmonization.
  • Targeted human curation complements the automated processes.
  • System performance was evaluated on 200 Roche toxicology study reports.

Main Results:

  • The pipeline demonstrated strong extraction performance across domains, with high sensitivity and precision for most parameters.
  • Histopathology, organ weight, and No Observed Adverse Effect Level (NOAEL)-related endpoints showed high robustness (sensitivity >95%, precision >97%).
  • Lower performance for certain parameters was attributed to heterogeneous reporting, not LLM limitations.

Conclusions:

  • LLM-assisted extraction reliably captures expert toxicological interpretations at scale.
  • Structured datasets enable cross-study querying, identification of toxicological liabilities, and development of predictive toxicology models.
  • This approach provides a foundation for data-centric safety assessment and translational toxicology research.