Simultaneous Virtual Prediction of Anti-Escherichia
coli Activities and ADMET Profiles: A Chemoinformatic Complementary
Approach for High-Throughput Screening
posted on 2014-02-10, 00:00authored byAlejandro Speck-Planche, M. N. D. S. Cordeiro
Escherichia coli remains one of the principal
pathogens that cause nosocomial infections, medical conditions that
are increasingly common in healthcare facilities. E. coli is intrinsically resistant to many antibiotics, and multidrug-resistant
strains have emerged recently. Chemoinformatics has been a great ally
of experimental methodologies such as high-throughput screening, playing
an important role in the discovery of effective antibacterial agents.
However, there is no approach that can design safer anti-E.
coli agents, because of the multifactorial nature and complexity
of bacterial diseases and the lack of desirable ADMET (absorption,
distribution, metabolism, elimination, and toxicity) profiles as a
major cause of disapproval of drugs. In this work, we introduce the
first multitasking model based on quantitative–structure biological
effect relationships (mtk-QSBER) for simultaneous virtual prediction
of anti-E. coli activities and ADMET properties of
drugs and/or chemicals under many experimental conditions. The mtk-QSBER
model was developed from a large and heterogeneous data set of more
than 37800 cases, exhibiting overall accuracies of >95% in both
training
and prediction (validation) sets. The utility of our mtk-QSBER model
was demonstrated by performing virtual prediction of properties for
the investigational drug avarofloxacin (AVX) under 260 different experimental
conditions. Results converged with the experimental evidence, confirming
the remarkable anti-E. coli activities and safety
of AVX. Predictions also showed that our mtk-QSBER model can be a
promising computational tool for virtual screening of desirable anti-E. coli agents, and this chemoinformatic approach could
be extended to the search for safer drugs with defined pharmacological
activities.