Gene Expression
profiling advance for Lung Cancer prognosis
Newswise — Mayo Clinic Cancer Center
researchers have identified two non-cell
type-specific gene expression biomarker
profiles that provide improved survival
prediction for non-small-cell lung cancer.
Their findings will be published in the Feb.
20 issue of the Journal of Clinical
Oncology.
Gene expression
profiling allows identification of a tumor’s
molecular signature and can lead to better
subclassification of patients. In 2006, Mayo
Clinic Cancer Center researchers reported
that gene expression profiling methods were
not better than existing conventional
methods of assessing survival in lung cancer
patients. They based that conclusion on
their evaluation of literature published
since this promising technology started
about 10 years ago. Today’s study findings
appear to change this conclusion.
“While we have seen a
number of exciting results from gene
expression profiling in lung cancer outcome
prediction, none provided value-added,
unique information,” says Zhifu Sun, M.D.,
Mayo Clinic cancer researcher and the
study’s lead author. “By saying that, we
mean that none of the previously identified
genetic biomarkers provided more information
than conventional methods, and their
clinical applications were limited. Our goal
was to identify a biomarker or panels of
markers that would add to our current
knowledge of patient management, allowing
much more refined prognostic
subclassification, and eventually leading to
better personalized treatment options.”
When the human genome
project was completed in 2003, interest in
gene expression profiling rapidly developed,
as scientists sought to find the molecular
roots of disease. Dr. Sun says while
clinical application from gene expression
profiling is still in its infancy,
particularly in lung cancer, this finding is
a big step forward.
Before this study’s
findings, gene expression profiling in lung
cancer provided no additional information
than that gleaned from conventional methods
that factor in age, gender, stage, cell type
and tumor grade, performance status or
treatment. The studies did not consider
these factors in marker selection;
therefore, molecular markers or signatures
identified were often surrogates of what the
research community already knew. Dr. Sun and
the Mayo research team took a different
approach. They looked at adenocarcinoma and
squamous cell carcinoma separately and first
selected two nonoverlapping sets of
survival-related gene signatures from two
large microarray datasets. This was done by
adjusting for the conventional predictors.
The signatures were then evaluated in two
large independent datasets of non-small-cell
lung cancer. Each signature was evaluated in
the same cell type it was derived from, and
also validated for survival prediction in
other cell types.
The team found two
survival-related 50-gene signatures, one for
each of the two cancer types. These were
nonoverlapping and largely unique in gene
content compared to previously identified
predictive gene expression signatures for
lung cancer developed by other researchers.
When the two signatures
were evaluated in two independent sets of
non-small-cell lung cancer patients, the
research team found that the adenocarcinoma
gene expression profile was able to predict
survival for both adenocarcinoma and
squamous cell carcinoma patients.
Conversely, the squamous cell carcinoma
profile could also predict for
adenocarcinoma, although interestingly, not
as well for squamous cell carcinoma.
However, both sets of 50 genes were able to
provide significantly improved survival
prediction for non-small-cell lung cancers
independent of other traditional variables.
These genes were most likely related to
tumor aggressiveness regardless of
histologic features or stage.
Dr. Sun and his fellow
researchers caution that their research will
need to be further validated with additional
studies, but they are hopeful that the
results will lead to improved outcome
prediction and treatment selection for lung
cancer patients. They say the next step is
to discover the underlying mechanisms for
some or all of the 50 genes in the profiles.
The researchers say
that eventually these profiles will allow
physicians to further subclassify patients
using the unique genetic characteristics of
individual tumors. Following that, they’ll
be able to determine the optimal course of
treatment for the best predicted outcome,
personalizing the cure for each patient.
Researchers on the team
included Dennis Wigle, M.D., Ph.D., and Ping
Yang, M.D., Ph.D. The study was funded by a
National Cancer Institute award to Dr. Yang,
the study’s senior author.