Difference between revisions of "Projects:GliomaSubtypeClassification"

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= Glioma Subtype Classification from Mass Spectrometry Data =
 
= Glioma Subtype Classification from Mass Spectrometry Data =
  
  
= Description =
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== Description ==
 
Glioma histologies are the primary factor in the prognostic estimates and are used in determining the proper course of treatment. Furthermore, due to the sensitivity of cranial environment, real-time tumor cell classification and boundary detection can aid in the precision and completeness of tumor resection. By a recent improvement in mass spectrometry that allows for data collection in ambient environments without preparation, the goal is to provide surgeons with histopathological information for a resected sample.
 
Glioma histologies are the primary factor in the prognostic estimates and are used in determining the proper course of treatment. Furthermore, due to the sensitivity of cranial environment, real-time tumor cell classification and boundary detection can aid in the precision and completeness of tumor resection. By a recent improvement in mass spectrometry that allows for data collection in ambient environments without preparation, the goal is to provide surgeons with histopathological information for a resected sample.
  
= Result =
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== Result ==
  
= Key Investigators =
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== Key Investigators ==
 
Georgia Tech: Jacob Huang, Behnood Gholami, and Allen Tannenbaum
 
Georgia Tech: Jacob Huang, Behnood Gholami, and Allen Tannenbaum

Latest revision as of 01:15, 16 November 2013

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Glioma Subtype Classification from Mass Spectrometry Data

Description

Glioma histologies are the primary factor in the prognostic estimates and are used in determining the proper course of treatment. Furthermore, due to the sensitivity of cranial environment, real-time tumor cell classification and boundary detection can aid in the precision and completeness of tumor resection. By a recent improvement in mass spectrometry that allows for data collection in ambient environments without preparation, the goal is to provide surgeons with histopathological information for a resected sample.

Result

Key Investigators

Georgia Tech: Jacob Huang, Behnood Gholami, and Allen Tannenbaum