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  <title><![CDATA[Georgia Tech Develops Computational Algorithm to Assist in Cancer Treatments]]></title>
  <body><![CDATA[<p>High-throughput DNA sequencing technologies are leading to
a revolution in how clinicians diagnose and treat cancer. The molecular
profiles of individual tumors are beginning to be used in the design of
chemotherapeutic programs optimized for the treatment of individual patients. The
real revolution, however, is coming with the emerging capability to
inexpensively and accurately sequence the entire genome of cancers, allowing
for the identification of specific mutations responsible for the disease in
individual patients.</p>

<p>There is only one downside. Those sequencing technologies
provide massive amounts of data that are not easily processed and translated by
scientists. That’s why Georgia Tech has created a new data analysis algorithm
that quickly transforms complex RNA sequence data into usable content for
biologists and clinicians. The RNA-Seq analysis pipeline (R-SAP) was developed
by School of Biology Professor John McDonald and Ph.D. Bioinformatics candidate
Vinay Mittal. Details of the pipeline are published in the journal <a href="http://nar.oxfordjournals.org/cgi/reprint/gks047?%20ijkey=Fd2USew6iX9nbaM&amp;keytype=ref">Nucleic
Acids Research</a>. 

</p><p>“A major bottleneck in the realization of the dream of
personalized medicine is no longer technological. It’s computational,” said
McDonald, director of Georgia Tech’s newly created Integrated Cancer Research
Center. “R-SAP follows a hierarchical decision-making procedure to accurately characterize
various classes of gene transcripts in cancer samples.” 

</p><p>There are at least 23,000 pieces of RNA in the human
genome that encode the sequence of proteins. Millions of other pieces help
regulate the production of proteins. R-SAP is able to quickly determine every
gene’s level of RNA expression and provide information about splice variants,
biomarkers and chimeric RNAs. Biologists and clinicians will be able to more
readily use this data to compare the RNA profiles or “transcriptomes” of normal
cells with those of individual cancers and thereby be in a better position to
develop optimized personal therapies. 

</p><p>Personalized approaches to cancer medicine are already in
widespread use for a few “cancer biomarkers” including variants of the BRAC 1
gene that can be used to identify women with a high risk of developing breast
and ovarian cancer. 

</p><p>“Our goal was to design a pipeline that is easily
installable with parallel processing capabilities,” said Mittal. “R-SAP can
make 100 million reads in just 90 minutes. Running the program simultaneously
on multiple CPUs can further decrease that time.”

</p><p>R-SAP is open source software, freely accessible at the
McDonald Lab <a href="http://www.mcdonaldlab.biology.gatech.edu/r-sap.htm">website</a>.


</p><p>“This is another example of Georgia Tech’s ability to
merge computer technology with science to create an essential feature of
next-generation bioinformatics tools,” said McDonald. “We hope that R-SAP will
be a useful and user-friendly instrument for scientists and clinicians in the
field of cancer biology.” 

</p><p>&nbsp;</p>]]></body>
  <field_subtitle>
    <item>
      <value><![CDATA[New software key for personalized cancer medicine]]></value>
    </item>
  </field_subtitle>
  <field_dateline>
    <item>
      <value>2012-02-13T00:00:00-05:00</value>
      <timezone><![CDATA[America/New_York]]></timezone>
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  <field_summary_sentence>
    <item>
      <value><![CDATA[Georgia Tech has created a new data analysis algorithm that quickly transforms complex RNA sequence data into usable content for cancer biologists and clinicians.]]></value>
    </item>
  </field_summary_sentence>
  <field_summary>
    <item>
      <value><![CDATA[<p>Georgia Tech has created a new data analysis algorithm that quickly 
transforms complex RNA sequence data into usable content for biologists 
and clinicians. Scientists will be able to more readily use this data to
 compare the RNA profiles or “transcriptomes” of normal cells with those
 of individual cancers and thereby be in a better position to develop 
optimized personal therapies.</p>]]></value>
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            <title><![CDATA[John McDonald]]></title>
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  <field_contact_email>
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      <email><![CDATA[maderer@gatech.edu]]></email>
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      <value><![CDATA[<p>Jason Maderer<br />Georgia Tech Media Relations<br />404-385-2966<br /><a href="mailto:maderer@gatech.edu">maderer@gatech.edu</a></p>]]></value>
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        <![CDATA[Cancer Research]]>
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