SBIR-STTR Award

System for Automatic Segmentation of Male Pelvis Structures from CT Images
Award last edited on: 6/13/11

Sponsored Program
SBIR
Awarding Agency
NIH : NCI
Total Award Amount
$2,527,869
Award Phase
2
Solicitation Topic Code
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Principal Investigator
Edward Chaney

Company Information

Morphormics Inc

6320 Quadrangle Drive Suite 380
Chapel Hill, NC 27517
   (919) 361-2148
   info@morphormics.com
   www.morphormics.com
Location: Single
Congr. District: 04
County: Orange

Phase I

Contract Number: 1R44CA119571-01A2
Start Date: 00/00/00    Completed: 00/00/00
Phase I year
2007
Phase I Amount
$180,151
Image segmentation is a commonly performed clinical practice for extracting geometrical descriptions of internal anatomical objects from volume images such as computed tomography and magnetic resonance images. Shortcomings of current practice have motivated an important area of research involving statistically trainable deformable-shape models (DSMs) for automatic segmentation. The general approach is to apply a DSM to an image and cause the model to undergo a series of deformations converging to a close match between the model and the target anatomical object(s). The deformations are driven, in an appropriate statistical framework, by mathematical optimization. The overall aim is to develop and clinically evaluate a workstation for automatic segmentation of anatomical structures in the male pelvis from CT images for image- guided applications in radiation therapy using technology based on a particularly powerful class of DSMs called m-reps. Segmented CT images provide guidance for critical treatment planning and radiation delivery decisions in radiation therapy. It is likely that segmentation is performed more often for these purposes than for all the other medical applications combined. Current interactive contouring methods in clinical practice are extremely time consuming and expensive, and the contours demonstrate significant inter- and intra-user variabilities that adversely affect the clinical decisions that rely on them. The proposed methodology will overcome these shortcomings and improve the effectiveness of radiation therapy for treating cancer.

Phase II

Contract Number: 4R44CA119571-02
Start Date: 8/1/08    Completed: 7/31/11
Phase II year
2008
(last award dollars: 2010)
Phase II Amount
$2,347,718

Image segmentation is a commonly performed clinical practice for extracting geometrical descriptions of internal anatomical objects from volume images such as computed tomography and magnetic resonance images. Shortcomings of current practice have motivated an important area of research involving statistically trainable deformable-shape models (DSMs) for automatic segmentation. The general approach is to apply a DSM to an image and cause the model to undergo a series of deformations converging to a close match between the model and the target anatomical object(s). The deformations are driven, in an appropriate statistical framework, by mathematical optimization. The overall aim is to develop and clinically evaluate a workstation for automatic segmentation of anatomical structures in the male pelvis from CT images for image- guided applications in radiation therapy using technology based on a particularly powerful class of DSMs called m-reps. Segmented CT images provide guidance for critical treatment planning and radiation delivery decisions in radiation therapy. It is likely that segmentation is performed more often for these purposes than for all the other medical applications combined. Current interactive contouring methods in clinical practice are extremely time consuming and expensive, and the contours demonstrate significant inter- and intra-user variabilities that adversely affect the clinical decisions that rely on them. The proposed methodology will overcome these shortcomings and improve the effectiveness of radiation therapy for treating cancer.

Public Health Relevance:
There is no text on file for this Public Health Relevance.

Thesaurus Terms:
Male, Pelvis, Training Base, Birth, Computer, Density, Emotion, Handbook, Hospital, Housing, Human, Magnetic Resonance Imaging, Magnetism, Model, Motivation, Neoplasm /Cancer, Neoplasm /Cancer Radiation Therapy, Performance, Preference, Prostate, Radiation, Radiation Therapy, Rectum /Anus, Tomography, University