When Gregory Poore was a freshman in college, his otherwise healthy
grandmother was shocked to learn that she had late-stage pancreatic cancer. The
condition was diagnosed in late December. She died in January.
“She had
virtually no warning signs or symptoms,” Poore said. “No one could say why her
cancer wasn’t detected earlier or why it was resistant to the treatment they
tried.”
As Poore came to
learn through his college studies, cancer has traditionally been considered a
disease of the human genome — mutations in our genes allow cells to avoid
death, proliferate and form tumors.
But when Poore saw a 2017 study in Science that showed how
microbes invaded a majority of pancreatic cancers and were able to break down
the main chemotherapy drug given to these patients, he was intrigued by the
idea that bacteria and viruses might play a bigger role in cancer than anyone
had previously considered.
Poore is
currently an MD/PhD student at University of California San Diego School of
Medicine, where he’s conducting his graduate thesis work in the lab of Rob
Knight, PhD, professor and director of the Center for Microbiome Innovation.
Together with an
interdisciplinary group of collaborators, Poore and Knight have developed a
novel method to identify who has cancer, and often which type, by simply
analyzing patterns of microbial DNA — bacterial and viral — present in their
blood.
The study, published March 11, 2020 in Nature, may change how cancer is
viewed, and diagnosed.
“Almost all
previous cancer research efforts have assumed tumors are sterile environments,
and ignored the complex interplay human cancer cells may have with the
bacteria, viruses and other microbes that live in and on our bodies,” Knight
said.
“The number of
microbial genes in our bodies vastly outnumbers the number of human genes, so
it shouldn’t be surprising that they give us important clues to our health.”
Cancer-associated microbial
patterns
The researchers
first looked at microbial data available from The Cancer Genome Atlas, a
database of the National Cancer Institute containing genomic and other
information from thousands of patient tumors. To the team’s knowledge, it was
the largest effort ever undertaken to identify microbial DNA in human
sequencing data.
From 18,116 tumor samples, representing 10,481 patients with 33
different cancer types, emerged distinct microbial signatures, or patterns,
associated with specific cancer types. Some were expected, such as the
association between human papillomavirus (HPV) and cervical, head and neck
cancers, and the association between Fusobacterium species and
gastrointestinal cancers. But the team also identified previously unknown
microbial signatures that strongly discriminated between cancer types. For
example, the presence of Faecalibacterium species
distinguished colon cancer from other cancers.
Armed with the
microbiome profiles of thousands of cancer samples, the researchers then
trained and tested hundreds of machine learning models to associate certain
microbial patterns with the presence of specific cancers. The machine learning
models were able to identify a patient’s cancer type using only the microbial
data from his or her blood.
The researchers
then removed high-grade (stage III and IV) cancers from the dataset and found
that many cancer types were still distinguishable at earlier stages when
relying solely on blood-derived microbial data. The results held up even when the
team performed the most stringent bioinformatics decontamination on the
samples, which removed more than 90 percent of the microbial data.
Applying the microbial DNA test
To determine if
these microbial patterns could be useful in the real world, Knight, Poore and
team analyzed blood-derived plasma samples from 59 consenting patients with
prostate cancer, 25 with lung cancer and 16 with melanoma, provided by
collaborators at Moores Cancer Center at UC San Diego Health. Employing new
tools they developed to minimize contamination, the researchers developed a
readout of microbial signatures for each cancer patient sample and compared
them to each other and to plasma samples from 69 healthy, HIV-negative
volunteers, provided by the HIV Neurobehavioral Research Center at UC San Diego
School of Medicine.
The team’s
machine learning models were able to distinguish most people with cancer from
those without. For example, the models could correctly identify a person with
lung cancer with 86 percent sensitivity and a person without lung disease with
100 percent specificity. They could often tell which participants had which of
the three cancer types. For example, the models could correctly distinguish
between a person with prostate cancer and a person with lung cancer with 81
percent sensitivity.
“The ability, in
a single tube of blood, to have a comprehensive profile of the tumor’s DNA
(nature) as well as the DNA of the patient’s microbiota (nurture), so to speak,
is an important step forward in better understanding host-environment
interactions in cancer,” said co-author Sandip Pravin Patel, MD, a medical
oncologist and co-leader of experimental therapeutics at Moores Cancer Center
at UC San Diego Health.
“With this
approach, there is the potential to monitor these changes over time, not only
as a diagnostic, but for long-term therapeutic monitoring. This could have
major implications for the care of cancer patients, and in the early detection
of cancer, if these results continue to hold up in further testing.”
Comparison to current cancer
diagnostics
According to
Patel, diagnosis of most cancers currently requires surgical biopsy or removal
of a sample from the suspected cancer site and analysis of the sample by
experts who look for molecular markers associated with certain cancers. This
approach can be invasive, time-consuming and costly.
Several
companies are now developing “liquid biopsies” — methods to quickly diagnose
specific cancers using a simple blood draw and technologies that allow them to
detect cancer-specific human gene mutations in circulating DNA shed by tumors.
This approach can already be used to monitor progression of tumors for some
types of already-diagnosed cancers, but is not yet approved by the U.S. Food
and Drug Administration (FDA) for diagnostic use.
“While there has
been amazing progress in the area of liquid biopsy and early cancer detection,
current liquid biopsies aren’t yet able to reliably distinguish normal genetic
variation from true early cancer, and they can’t pick up cancers where human
genomic alterations aren’t known or aren’t detectable,” said Patel, who also
serves as the deputy director of the San Diego Center for Precision
Immunotherapy.
That’s why
there’s often a risk that current liquid biopsies will return false-negative
results in the setting of low disease burden. “It’s hard to find one very rare
human gene mutation in a rare cell shed from a tumor,” Patel said. “They’re
easy to overlook and you might be told you don’t have cancer, when you really
do.”
According to the
researchers, one advantage of cancer detection based on microbial DNA, compared
to circulating human tumor DNA, is its diversity among different body sites.
Human DNA, in contrast, is essentially the same throughout the body. By not
relying on rare human DNA changes, the study suggests that blood-based
microbial DNA readouts may be able to accurately detect the presence and type
of cancers at earlier stages than current liquid biopsy tests, as well as for
cancers that lack genetic mutations detectable by those platforms.
Limitations and cautions
The researchers
are quick to point out that there’s still the possibility blood-based microbial
DNA readouts could miss signs of cancer and return a false-negative result. But
they expect their new approach will become more accurate as they refine their
machine learning models with more data.
And while false
negatives may be less common with the microbial DNA approach, false positives —
hearing you have cancer when you don’t — are still a risk.
Patel said that
just because a cancer is detected early, it doesn’t mean it always requires
immediate treatment. Some DNA changes are non-cancerous, changes related to
aging, harmless or self-resolve. You would never know about them without the
test. That’s why more screening and more cancer diagnoses might not always be a
good thing, Patel said, and should be determined by expert clinicians.
The team also
cautioned that even if a microbial readout indicates cancer, the patient would
likely require additional tests to confirm the diagnosis, determine the stage
of the tumor and identify its exact location.
Looking ahead
Knight said many
challenges still lay ahead as his team further develops these initial
observations into an FDA-approved diagnostic test for cancer. Most of all, they
need to validate their findings in a much larger and more diverse patient
population, an expensive undertaking. They need to define what a “healthy”
blood-based microbial readout might look like among many, diverse people. They’d
also like to determine whether the microbial signatures they can detect in
human blood are coming from live microbes, dead microbes or dead microbes that
have burst open, dispersing their contents — an insight that might help them
refine and improve their approach.
To advance
blood-based microbial DNA readouts through the next steps toward regulatory
approval, commercialization and clinical application of a diagnostic test,
Knight and Poore have filed patent applications and they founded a spinout
company called Micronoma, with co-author Sandrine Miller-Montgomery, PhD,
professor of practice in the Jacobs School of Engineering and executive
director of the Center for Microbiome Innovation at UC San Diego.
The latest study
may prompt important shifts in the field of cancer biology, Poore said.
“For example,
it’s common practice for microbiologists to use many contamination controls in
their experiments, but these have historically been rarely used in cancer
studies,” he said. “We hope this study will encourage future cancer researchers
to be ‘microbially conscious.'”
The researchers
also suggest cancer diagnostics may only be the beginning for the newly
discovered cancer-associated blood microbiome.
“This new
understanding of the way microbial populations shift with cancer could open a
completely new therapeutic avenue,” Miller-Montgomery said. “We now know the
microbes are there, but what are they doing? And could we manipulate or mimic
these microbes to treat cancer?”
Journal article: https://www.nature.com/articles/s41586-020-2095-1
Source: https://myfusimotors.com/2020/03/22/microbial-dna-in-patient-blood-may-be-tell-tale-sign-of-cancer/
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