Prediction of acute mammalian toxicity using QSAR methods: a case study of sulfur mustard and its breakdown products

Molecules. 2012 Jul 27;17(8):8982-9001. doi: 10.3390/molecules17088982.

Abstract

Predicting toxicity quantitatively, using Quantitative Structure Activity Relationships (QSAR), has matured over recent years to the point that the predictions can be used to help identify missing comparison values in a substance's database. In this manuscript we investigate using the lethal dose that kills fifty percent of a test population (LD₅₀) for determining relative toxicity of a number of substances. In general, the smaller the LD₅₀ value, the more toxic the chemical, and the larger the LD₅₀ value, the lower the toxicity. When systemic toxicity and other specific toxicity data are unavailable for the chemical(s) of interest, during emergency responses, LD₅₀ values may be employed to determine the relative toxicity of a series of chemicals. In the present study, a group of chemical warfare agents and their breakdown products have been evaluated using four available rat oral QSAR LD₅₀ models. The QSAR analysis shows that the breakdown products of Sulfur Mustard (HD) are predicted to be less toxic than the parent compound as well as other known breakdown products that have known toxicities. The QSAR estimated break down products LD₅₀ values ranged from 299 mg/kg to 5,764 mg/kg. This evaluation allows for the ranking and toxicity estimation of compounds for which little toxicity information existed; thus leading to better risk decision making in the field.

MeSH terms

  • Animals
  • Computer Simulation*
  • Heterocyclic Compounds / toxicity*
  • Humans
  • Lethal Dose 50
  • Mammals
  • Models, Biological*
  • Multivariate Analysis
  • Mustard Gas / toxicity*
  • Quantitative Structure-Activity Relationship*
  • Software
  • Sulfur Compounds / toxicity*

Substances

  • Heterocyclic Compounds
  • Sulfur Compounds
  • Mustard Gas