Vapor Pressure
and Toxicity Prediction for Novichok
Agent Candidates Using Machine Learning Model: Preparation for Unascertained
Nerve Agents after Chemical Weapons Convention Schedule 1 Update
posted on 2022-03-23, 06:29authored byKeunhong Jeong, Jin-Young Lee, Seungmin Woo, Dongwoo Kim, Yonggoon Jeon, Tae In Ryu, Seung-Ryul Hwang, Woo-Hyeon Jeong
The recent terrorist attacks using
Novichok agents and subsequent
operations have necessitated an understanding of its physicochemical
properties, such as vapor pressure and toxicity, as well as unascertained
nerve agent structures. To prevent continued threats from new types
of nerve agents, the organization for the prohibition of chemical
weapons (OPCW) updated the chemical weapons convention (CWC) schedule
1 list. However, this information is vague and may encompass more
than 10 000 possible chemical structures, which makes it almost
impossible to synthesize and measure their properties and toxicity.
To assist this effort, we successfully developed machine learning
(ML) models to predict the vapor pressure to help with escape and
removal operations. The model shows robust and high-accuracy performance
with promising features for predicting vapor pressure when applied
to Novichok materials and accurate predictions with reasonable errors.
The ML classification model was successfully built for the swallow
globally harmonized system class of organophosphorus compounds (OP)
for toxicity predictions. The tuned ML model was used to predict the
toxicity of Novichok agents, as described in the CWC list. Although
its accuracy and linearity can be improved, this ML model is expected
to be a firm basis for developing more accurate models for predicting
the vapor pressure and toxicity of nerve agents in the future to help
handle future terror attacks with unknown nerve agents.