Difference between revisions of "Autoseg 2015"

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== Organizing Committee ==
 
== Organizing Committee ==
Stephen Breen, Princess Margaret Hospital<br>
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Stephen Breen, Princess Margaret Cancer Centre<br>
Vladimir Pekar, Philips Medical Systems<br>
+
Vladimir Pekar, Philips Healthcare<br>
 
Gregory Sharp, Massachusetts General Hospital
 
Gregory Sharp, Massachusetts General Hospital
  

Revision as of 17:14, 18 December 2014

Home < Autoseg 2015
Autoseg 2015 brainstem.jpg
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Introduction

Automatic image segmentation is widely used in biomedical research, and has found use in a growing number of medical applications. Prominent and successful examples include cancer staging, radiotherapy planning, surgical planning, and treatment assessment. However there are many challenges which limit adoption. Segmentation accuracy and reliability still need improvement; many algorithms contain domain-dependent features that cannot be generalized; algorithms must be continuously tuned to match changes in medical practice; and quality assessment methodologies are immature.

We announce the second Automatic Segmentation Algorithm Workshop (Autoseg 2015), to be held in conjunction with the 2015 World Congress on Medical Physics and Biomedical Engineering (http://wc2015.org) in Toronto Canada. The workshop provides the opportunity for medical imaging researchers to meet and exchange ideas in the rapidly advancing field of automatic segmentation.

Organizing Committee

Stephen Breen, Princess Margaret Cancer Centre
Vladimir Pekar, Philips Healthcare
Gregory Sharp, Massachusetts General Hospital

Venue

World congress 2015 logo.png
Held in conjunction with http://wc2015.org/

June 7, 2015, 8:00-17:00
Metro Toronto Convention Center
Toronto, Canada

Participation

The workshop is free and open to the public. No registration is necessary.

Topics

  • Atlas-based segmentation
  • Model-based segmentation
  • Machine learning methods
  • Interactive and hybrid methods
  • Algorithm tuning
  • Quality assessment
  • Other topics