New cell profiling method could speed TB drug discovery
Technology combines rapid imaging and machine learning to uncover patterns in how antibacterials kill; can be applied to many pathogens
BOSTON (July 23, 2020)—A new technology that combines high
throughput imaging and machine learning could speed discovery of
drugs to fight tuberculosis, which for generations has killed
more people worldwide than any other disease caused by a single
agent—4,000 people every day.
Current treatment
requires multiple drugs for at least six months and sometimes
years, and antibiotic resistance is growing, increasing urgency
for finding new treatments.
However, drug discovery
typically requires production of hundreds of derivatives of an
original compound in order to find the most effective version.
The new technology—dubbed MorphEUS (Morphological
Evaluation and Understanding of drug Stress)—provides a
rapid, efficient, cost-effective way to determine how specific
compounds act to destroy Mycobcterium tuberculosis (M. tb), the
bacterium that causes tuberculosis.
“We
urgently need shorter, more effective TB therapies, and
MorphEUS enables us to screen through drug candidates, see how
they actually affect the cell, and learn which drugs have unique
ways to kill the M. tb,” said Bree Aldridge, associate
professor of molecular biology and microbiology at Tufts
University School of Medicine and senior author on the
associated paper about the new platform published online in the
Proceedings of the National Academies of Sciences (PNAS) on July
17.
Aldridge and her colleagues applied MorphEUS to
34 currently available antibiotics for which modes of action
were already established and three non-commercial compounds.
MorphEUS categorized the drugs correctly 94 percent of the time.
In the remaining instances, MorphEUS identified previously
unknown target pathways.
The search for new TB
treatments has been stymied by difficulties in identifying the
biological activity of compounds early in the drug discovery
process and the need to clarify the mechanism of action of
existing therapies. Antibacterials kill pathogens via specific
molecular actions, for example, by destroying the
microbe’s cell wall or inhibiting protein synthesis. The
drugs leave clues to their particular modus operandi:
characteristic physical unraveling of the bacterial cells, which
may affect length, width, shape of structures like the
chromosome, staining ability, and other properties.
Morphological profiling to categorize drugs by these changes is
well-established with pathogens such as E. coli, but
Aldridge’s team was the first to test it with M. tb.
“We
found that conventional morphological profiling approaches
didn’t work with M. tb, because the bacterium’s
inherent response to treatment was extremely variable, and
changes in morphology were much less obvious than in bacteria
like E. coli,” said Trever C. Smith II, co-first author on
the paper and a postdoctoral researcher in the Aldridge
laboratory.
MorphEUS harnesses this variation by
incorporating measurements of heterogeneity itself into
morphological profiles and combining this enhanced feature set
with machine learning and other complex analytical tools.
Network webs and matrices visualize the data analysis. For
example, much of the heterogeneity in staining patterns in M. tb
is due to its thick, complex cell wall. There is increased
staining and less variation in staining patterns when M. tb is
treated with cell-wall targeting antibiotics compared with other
classes of antibiotics. “With MorphEUS, we used the
distribution of staining across a large number of bacilli to
learn how each drug acts on M. tb,” said Aldridge.
“Similarly, we looked at staining intensity and the spread
of that brightness across thousands of cells to identify more
subtle patterns.”
MorphEUS can also determine
if drugs have off-target or secondary effects that are otherwise
hard to identify. Such complex mechanisms of drug action can be
key in designing multidrug therapies.
“We
expect that the success of MorphEUS in profiling drug action in
an organism like M. tb with significant inherent heterogeneity
and subtle cytological responsiveness will make it useful in
other pathogens and cell types,” said Aldridge, who
is also a core faculty member of Tufts Center for Integrated
Management of Antimicrobial Resistance, member of the immunology
and molecular microbiology program faculties at Tufts Graduate
School of Biomedical Sciences, and an adjunct associate
professor at Tufts University’s School of Engineering.
MorphEUS,
like all cytological profiling techniques, is data-driven and
based on classification among a pool of other profiles. It
requires multiple representative profiles from M. tb treated
with compounds known to target the same broad cellular target.
As the drug set expands, the accuracy and resolution of MorphEUS
will improve. MorphEUS is also limited in its ability to
identify target pathways of compounds with novel mechanisms of
action that are unlike the other profiled drugs in the reference
set.
Authors and funding
Co-first author is Krista Pullen, former research
technician in Aldridge’s lab at Tufts and now a student at
MIT.
Additional authors are Michaela C. Olson and
Morgan E. McNellis of Tufts University School of Medicine; Ian
Richardson, a former high school research assistant in
Aldridge’s lab and graduate of The Roxbury Latin School;
Jonah Larkins-Ford of Tufts Graduate School of Biomedical
Sciences and the Laboratory of Systems Pharmacology at Harvard
Medical School, where Aldridge is also an investigator; Sophia
Hu of University of Maryland; Xin Wang and Joel S. Freundlich of
Rutgers University; and Michael Ando of Google Research.
This
work was supported by a National Institutes of Health
Director’s New Innovator Award (1DP2LM011952), the
National Institutes of Health’s National Institute of
Allergies and Infectious Diseases (U19AI109713, 5T32AI007329)
and National Institute of General Medical Sciences
(P50GM107618), the Bill and Melinda Gates Foundation, and the
National Science Foundation. Content is solely the
responsibility of the authors and does not necessarily represent
the official views of the funders.
Smith, T.C., et
al. (2020). Morphological profiling of tubercle bacilli
identifies drug pathways of action, PNAS. doi:
https://doi.org/10.1073/pnas.2002738117
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About Tufts University School of Medicine
Tufts University School of Medicine is an
international leader in medical and population health education
and advanced research. It emphasizes rigorous fundamentals in a
dynamic learning environment to educate physicians, scientists,
and public health professionals to become leaders in their
fields. The School of Medicine is renowned for excellence in
education in general medicine, the biomedical sciences, and
public health, as well as for research at the cellular,
molecular, and population health level. It is affiliated with
more than twenty teaching hospitals and health care facilities.
Tufts University School of Medicine undertakes research that is
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effect on the advancement of medical and prevention science.
Source:
Tufts University