Home
Events
Government
Orientation
Services
Academics
Executive
Sports
ASUS
Feedback
Links
 
Events
 


Apr.5: School of Computing Seminar!
Apr.7:COMPSA Banquet

 
 
Welcome to the Events page. Here you can find out about upcoming COMPSA events. We'd love to see you there!
 

      Coffee With Profs
 
Come out on Thursdays for free coffee and treats with professors and graduate students in the 6th floor coffee room.  Coffee with Profs will be held every Thursday from 1:00 to 2:30 p.m.

top

 

      End of Year COMPSA Banquet
 

The annual End of Year Banquet will be held on Thursday, April 7 at 5:00
pm at Megalo's. Tickets will be available shortly from your friendly
COMPSA exec! The banquet will have mingling profs and grad students, award
presentations, and a slideshow, so let's celebrate the year end together!

top

 

      School of Computing Seminar
 

Hosted by David Skillicorn

DANIEL CATCHPOOLE
HEAD, TUMOUR BANK
THE CHILDREN'S HOSPITAL AT WESTMEAD
SYDNEY, AUSTRALIA

TUESDAY, APRIL 5, 2005
DUP215
2:30-3:30

cDNA microarrays and childhood acute lymphoblastic leukaemia:
developing a simplified molecular diagnosis for a complex illness

The optimal treatment of patients with childhood acute lymphoblastic leukaemia (ALL) depends on establishing accurate diagnosis. Recently, researchers have attempted to assess global transcription using microarray technology to identify gene expression 'signatures' that correlate with known ALL subtypes based on clinical presentation, immunophenotype and chromosomal rearrangement. Our investigations seek to strategically develop the application of microarray gene expression profiling to identify ALL patients with clinically homogenous presentations but which may respond differently to established treatment regimens. We have determined the gene expression profiles of ALL bone marrow (BM) samples taken from patients at diagnosis. Data analysis has focussed on the use of a novel and innovative statistical technology, Gene_RaVE. This series of patent protected algorithms builds a multinomial regression model using Bayesian variable selection. Gene_RaVE leads to the generation of a parsimonious and simple diagnostic gene expression signature, but which provides increased predictive ability over current analysis approaches. We describe our analysis of both Affymetrix (HU133A) and cDNA (10.5K) microarray gene expression profiles generated from diagnostic BM from paediatric ALL patients covering the broad leukaemia subtypes including T and B lineage as well as T cell lymphoma leukaemia as compared to pooled normal BM specimens. Gene expression profiles from a cohort of 39 ALL patients, identified as 'standard risk' at diagnosis, were compared on the basis of clinical outcome: relapse within 2 yrs vs non_relapse. Gene_RaVE analysis identified a small subset of genes whose expression was distinct between the two outcome groups. The Gene_RaVE algorithm also provides a generic framework for survival analysis and indicated that this small numbers of genes, which included Nedd4BP3 and Ribosomal Protein L38, were able to build a survival index using expression profiles from diagnosis BM, which correlated with the time to a relapse event. Our results are suggestive of a way forward in the development of an informative, yet efficient diagnostic tool for this childhood malignancy using microarrays.

REFRESHMENTS WILL BE SERVED IN GOODWIN 620 FOLLOWING THE SEMINAR

top

 


  Recent News  
 
Government
Assembly Minutes

Academics
Howard Staveley Award
Tutor Listing - Use it!

Events
Hi-Tech Opportunities!

Services
Merchandise Pictures

ASUS
Notes from Last Assembly

Sports
Ball Hockey Tournament
 

  Search  
 

WWW cs.queensu.ca
 

  Weather  
 
 

*Remember to insert @ wherever it says [at]. top