|   | CMU-CS-06-103 Computer Science Department
 School of Computer Science, Carnegie Mellon University
 
    
     
 CMU-CS-06-103
 
Cancer Phylogenetics from Single-Cell Assays 
Gregory Pennington, Stanley Shackney*, Russell Schwartz** 
January 2006  
CMU-CS-06-103.pdf Keywords: Computational biology, cancer, FISH, phylogeny
 In the field of cancer biology, there is currently great interest in 
the development of "targeted therapeutics" that attack specific 
molecular abnormalities characterizing subsets of cancers. 
Computational methods have been essential in identifying subsets 
of tumors sharing a common molecular mechanism, making it possible 
to identify meaningful groupings for targeted therapy. To date, 
such approaches have been limited in their ability to infer the 
specific sequences of molecular changes, or progression pathways, 
by which a tumor forms and increases in aggressiveness. In the 
present work, we develop computational methods for inferring 
progression pathways from cell-bycell assays. Our methods bypass 
important limitations of the current approaches by recognizing and 
taking advantage of tumor heterogeneity. We define a model for tumor 
progression and introduce a procedure for cancer phylogenetics based 
on the inference of likely progression pathways in individual patients. 
This procedure is formulated as a set of easily tractable graph problems. 
We demonstrate the methods on a set of fluorescence in situ hybridization 
(FISH) assays, which measure gene and chromosome gain and loss from 
a collection of fifty tumor samples. The results are consistent with 
prior knowledge about the role of the genes examined in cancer 
progression, and they suggest additional features of progression 
pathways involving the genes studied.
 
16 pages 
*Allegheny Singer Research Institute, Allegheny General Hospital, Pittsburgh, 
PA 15212**Department of Biological Sciences, Carnegie Mellon University, Pittsburgh 
PA 15213
 
 
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