posted on 2020-12-15, 13:49authored byEmily Golden, Mikhail Maertens, Thomas Hartung, Alexandra Maertens
Chemical
respiratory sensitization is an immunological process
that manifests clinically mostly as occupational asthma and is responsible
for 1 in 6 cases of adult asthma, although this may be an underestimate
of the prevalence, as it is under-diagnosed. Occupational asthma results
in unemployment for roughly one-third of those affected due to severe
health issues. Despite its high prevalence, chemical respiratory sensitization
is difficult to predict, as there are currently no validated models
and the mechanisms are not entirely understood, creating a significant
challenge for regulatory bodies and industry alike. The Adverse Outcome
Pathway (AOP) for respiratory sensitization is currently incomplete.
However, some key events have been identified, and there is overlap
with the comparatively well-characterized AOP for dermal sensitization.
Because of this, and the fact that dermal sensitization is often assessed
by in vivo, in chemico, or in silico methods, regulatory bodies are defaulting to the
dermal sensitization status of chemicals as a proxy for respiratory
sensitization status when evaluating chemical safety. We identified
a data set of known human respiratory sensitizers, which we used to
investigate the accuracy of a structural alert model, Toxtree, designed
for skin sensitization and the Centre for Occupational and Environmental
Health (COEH)’s model, a model developed specifically for occupational
asthma. While both models had a reasonable level of accuracy, the
COEH model achieved the highest balanced accuracy at 76%; when the
models agreed, the overall accuracy was 87%. There were important
differences between the models: Toxtree had superior performance for
some structural alerts and some categories of well-characterized skin
sensitizers, while the COEH model had high accuracy in identifying
sensitizers that lacked identified skin sensitization reactivity domains.
Overall, both models achieved respectable accuracy. However, neither
model addresses potency, which, along with data quality, remains a
hurdle, and the field must prioritize these issues to move forward.