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From Beaker to Bits: Unique Collaboration Between Biologists and Computer Scientists Creates Computational Model of Human Tissue
New “Cell Graphs” Developed at Rensselaer
Polytechnic Institute Link Tissue Structure to Its
Corresponding Biological Function
Computer scientists and biologists in the Data
Science Research Center at Rensselaer Polytechnic Institute
have developed a rare collaboration between the two very
different fields to pick apart a fundamental roadblock to
progress in modern medicine. Their unique partnership has
uncovered a new computational model called “cell graphs” that
links the structure of human tissue to its corresponding
biological function. The tool is a promising step in the effort
to bring the power of computational science together with
traditional biology to the fight against human diseases such as
cancer.
The discovery follows a more than six-year collaboration,
breaking ground in both fields. The work will serve as a new
method to understand and predict relationships between the
cells and tissues in the human body, which is essential to
detect, diagnose, and treat human disease. It also serves as an
important reminder of the power of collaboration in the
scientific process.
The new research led by Professor of Biology George Plopper
and Professor of Computer Science Bulent Yener is
published in the March 30, 2012, edition of the journal
PLoS One in a paper titled, “
Coupled Analysis of in Vitro and Histology Tissue Samples to
Quantify Structure-Function Relationship.” They were joined
in the research by Evrim Acar a graduate student at Rensselaer
in Yener’s lab currently at the University of Copenhagen. The
research is funded by the National Institutes of Health and the
Villum Foundation.
The new, purely computational tool models the relationship
between the structure and function of different tissues in
body. As an example of this process, the new paper analyzes the
structure and function of healthy and cancerous brain, breast,
and bone tissues. The model can be used to determine
computationally whether a tissue sample is cancerous or not,
rather than relying on the human eye as is currently done by
pathologists around the world each day. The objective technique
can be used to eliminate differences of opinion between doctors
and as a training tool for new cancer pathologists, according
to Yener and Plopper. The tool also helps fill an important gap
in biological knowledge, they said.
Every budding biologist is taught a central concept: there
is a relationship between biological structures like cells or
organs and their functions. This structure/function
relationship is well understood at some levels. For example, we
know what individual brain cells are structurally comprised of
and the functions they perform in the body. It is when you
delve deeper into interactions between millions of different
types of cells and dozens of specialized organs that our
limited understanding of human biology is quickly brought to
light.
“Previous biological analysis techniques simply ground up
tissues and looked at things like gene expression. This is like
looking at poll numbers after a vote. You don’t know who voted
for what or why, you only know who won the race,” Plopper said.
“With this new analysis we can explain how individual cells
function in the system while still focusing on the entire
system as a whole.”
The ability to understand the complex relationship between
cells in our tissues required an entirely new way to do
biology, according to the scientists.
“We needed to take biology out of the Petri dish and
microscope slide and lift it into a different space. We needed
to integrate the interactions in the body on multiple scales,”
Yener said.
Yener and his computational counterparts did this by
building a computational model using graph theory that linked
several different biological data sets from Plopper and his
biology counterparts. The biological data came from tissue
samples physically removed from the human body and samples
grown outside the body in the lab.
In the diagnosis of cancer, a pathologist removes a section
of suspicious-looking tissue from a patient. The tissue sample
is then sliced and stained for easier viewing and looked at
through the age-old tool of biology, the microscope. This
process is called histology. The pathologist is literally
looking for cancer. When looking through the microscope,
trained pathologists simply know cancer when they see it. They
don’t know how it came to be or where it is going, just that it
is present in the tissue in front of them. In other words, they
can see the structure of the cancer, but not know its function.
In order to truly know the roots of diseases like cancer,
scientists need to know how it arose in the tissue in the first
place.
One way of seeing how cancer functions is to literally grow
and watch cancerous tissue form in the lab. This process of
growing cells in something like a test tube outside of the body
is called cell culturing. It is a way to simplify and control
the elaborate symphony of what is going on within the body,
outside the body. But, a cell culture is only one small part of
the symphony of our bodies. It can never tell the whole
story.
Therefore, tools like histology and cell culture needed to
be combined to get a fuller picture of the transition from
healthy cells to full-fledged cancer. But no laboratory
experiments exist to make the connection between the two. This
is where computation can play a significant role, according to
Plopper and Yener. Through computation Plopper and Yener
were able to, for the first time ever, quantitatively compare
histology samples with lab cultures.
The new computational method uses graph theory. Instead of
looking at tissue as a series of cells, graph theory simplifies
the system into a series of dots and lines with the dots being
the cells and the lines their interactions. The program links
and compares the accuracy of data from actual human tissue
samples from histology with those grown in the controlled
laboratory setting. The result is a new tool that can detect
and distinguish cancer and quantify the actual differences
between different tissues analyzed.
“Currently, biology is a lot of trial and error,” Yener
said. “With a mathematical model of something like cancerous
tissue, you can computationally represent the relationships
between cells. That model can then be predictive and eliminate
time and energy lost in trial and error.”
To non-scientists, interactions between two different types
of scientists seems like the norm. But, there are no two groups
of scientists more disparate than biologists and computer
scientists, according to both Yener and Plopper. For
biologists, discovery is in the details. How many genes are
being expressed in a tissue? What protein is involved in the
disease? Computer scientists seek to represent the larger
relationship between different data points. What those data
points actually represent is largely irrelevant.
“We have a very unique relationship,” Plopper said. “I think
it will take my whole career to get people in both fields who
currently don’t talk to even accept the fact that they should.
But if all scientists understand how to generate and use
numeric data of some sort, that would really lower the barriers
between fields.”
Plopper has even created a class, “Cell-Extracellular Matrix
Interactions,” to develop a new type of data-savvy
biologist.
“These discoveries have to come from both fields,” Yener
said. “Scientists need to trust computational methodologies and
that trust will only come when we go back to the basic biology
that can be fed into the modeling and tested.”
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Published
April 2,
2012 |
Contact: Gabrielle DeMarco
Phone: (518) 276-6542
E-mail: demarg@rpi.edu |
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