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 <title>all Stephen Cannistra stories</title>
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 <title>Gene expression profiling helps in ovarian cancer prognosis</title>
 <link>http://harvardscience.harvard.edu/medicine-health/articles/gene-expression-profiling-helps-ovarian-cancer-prognosis</link>
 <description>&lt;!--paging_filter--&gt;&lt;p&gt;Steven A. Cannistra, M.D., director of Gynecologic Medical  Oncology at BIDMC and associate professor of medicine at  Harvard Medical School, says ovarian cancer is often not  detectable until its later stages. At that point, he adds, doctors  typically use clinical data to assess a patient&#039;s prognosis and  determine her course of therapy, a method that Cannistra notes  is imperfect.
&lt;p&gt;Knowing that the behavior of cancers is partly dependent upon  gene activity in tumor cells, researchers have long suspected  that a better understanding of the genetic profile of the tumors  of individual patients could help in making a more accurate  prognosis. Cannistra explains that as microarray analysis  advances, genetic knowledge of tumor cells also becomes more  accessible.
&lt;p&gt;Using tumor tissue from ovarian cancer patients, Cannistra&#039;s  team employed microarray analysis to develop a &quot;genetic  snapshot&quot; of ovarian cancer.
&lt;p&gt;&quot;We were ultimately able to identify 115 genes, which we refer to  collectively as the Ovarian Cancer Prognostic Profile,&quot; Cannistra  says. &quot;Simply knowing the expression pattern of these genes  from the original tumor sample provided us with important  information about prognosis that could not be gleaned from  standard clinical features.&quot;
&lt;p&gt;According to Cannistra, future research will further evaluate this  technology through prospective studies of patients with both  advanced ovarian cancer, as well as early stage disease.&lt;/p&gt;
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 <pubDate>Mon, 26 Mar 2007 07:10:08 -0400</pubDate>
 <dc:creator>70652986</dc:creator>
 <guid isPermaLink="false">3856 at http://harvardscience.harvard.edu</guid>
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