Difference between revisions of "2016 Winter Project Week/Projects/ChestImagingPlatformWorkflows"

From NAMIC Wiki
Jump to: navigation, search
 
(2 intermediate revisions by the same user not shown)
Line 4: Line 4:
  
 
==Project Description==
 
==Project Description==
 +
The Chest Imaging Platform (CIP) is a collection of C++ libraries, command-line executables, and python modules for segmenting, registering, processing, and quantitatively evaluating medical images of the chest; it is developed with large-scale, batch processing of high-resolution computed tomography (CT) images in mind. Many of the high-level workflows involve executing multiple CIP command-line tools and/or python modules, which imposes a barrier to entry for new users. Nipype is an open-soure, python-based software package that provides the ability to package multiple execution steps into a single workflow. In this project, I will be creating nipype-based workflows of commonly used, high-level tasks in order to make CIP functionality more accessible to new users.
 +
 
{| class="wikitable"
 
{| class="wikitable"
 
! style="text-align: left; width:27%" |  Objective
 
! style="text-align: left; width:27%" |  Objective
Line 18: Line 20:
 
<!-- Progress bullet points -->
 
<!-- Progress bullet points -->
 
* Workflows exist for particle deployment and parenchyma phenotype computation
 
* Workflows exist for particle deployment and parenchyma phenotype computation
 +
* End-to-end workflow created for automatic lobe segmentation
 +
* A few extra nodes to add
 +
* Include in next CIP release
 
|}
 
|}
 +
[[File:jcrProjectWeek2016.jpg|1200px]]

Latest revision as of 02:34, 8 January 2016

Home < 2016 Winter Project Week < Projects < ChestImagingPlatformWorkflows

Key Investigators

  • James Ross
  • Raúl San José

Project Description

The Chest Imaging Platform (CIP) is a collection of C++ libraries, command-line executables, and python modules for segmenting, registering, processing, and quantitatively evaluating medical images of the chest; it is developed with large-scale, batch processing of high-resolution computed tomography (CT) images in mind. Many of the high-level workflows involve executing multiple CIP command-line tools and/or python modules, which imposes a barrier to entry for new users. Nipype is an open-soure, python-based software package that provides the ability to package multiple execution steps into a single workflow. In this project, I will be creating nipype-based workflows of commonly used, high-level tasks in order to make CIP functionality more accessible to new users.

Objective Approach and Plan Progress and Next Steps
  • Implement Nipype workflows for commonly used chest image analysis tasks
  • Focus on automatic lobe segmentation pipeline
  • Workflows exist for particle deployment and parenchyma phenotype computation
  • End-to-end workflow created for automatic lobe segmentation
  • A few extra nodes to add
  • Include in next CIP release

JcrProjectWeek2016.jpg