Computational Modeling of Anatomical Shape Distributions
Project Number5R01NS051826-02
Contact PI/Project LeaderGRIMSON, WILLIAM ERIC
Awardee OrganizationMASSACHUSETTS INSTITUTE OF TECHNOLOGY
Description
Abstract Text
DESCRIPTION (provided by applicant): Segmentation of detailed, patient-specific models from medical imagery can provide invaluable assistance for surgical planning and navigation. Current segmentation methods often make errors when confronted with subtle intensity boundaries. Adding knowledge of expected shape of a structure, and the range of normal variations in shape, can greatly improve segmentation, by guiding it towards the most likely shape consistent with the image information. The resulting segmentations can be used to plan surgical procedures, and when registered to the patient, can provide navigational guidance around critical structures. Many neurological diseases, such as Alzheimer's, schizophrenia, and Fetal Growth Restriction, affect the shape of specific anatomical areas. To understand the development and progression of these diseases, as well as to develop methods for classifying instances into diseased or normal classes, 1 needs methods that capture differences in shape distributions between populations. Our goal is to develop and validate methods for learning from images concise representations of anatomical shape and its variability, Modeling shape distributions will improve segmentation algorithms by biasing the search towards more likely shapes. It will also enable quantitative analysis based on shape in population studies, where imaging is used to study differences in anatomy between populations, as well as changes within a population, for example with age. The proposed research builds on prior methods for segmentation and shape analysis, using tools from computer vision and machine learning applied to questions of shape representation, shape based segmentation and shape analysis for population studies. We plan to further develop the methods and to validate them with our collaborators in several different applications, including surgical planning, neonatal imaging and image-based studies of aging and Alzheimer's disease.
National Institute of Neurological Disorders and Stroke
CFDA Code
853
DUNS Number
001425594
UEI
E2NYLCDML6V1
Project Start Date
15-February-2005
Project End Date
31-January-2010
Budget Start Date
01-February-2006
Budget End Date
31-January-2007
Project Funding Information for 2006
Total Funding
$289,590
Direct Costs
$203,234
Indirect Costs
$86,356
Year
Funding IC
FY Total Cost by IC
2006
National Institute of Neurological Disorders and Stroke
$289,590
Year
Funding IC
FY Total Cost by IC
Sub Projects
No Sub Projects information available for 5R01NS051826-02
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