DocumentCode :
3603117
Title :
Fast Computation of Hemodynamic Sensitivity to Lumen Segmentation Uncertainty
Author :
Sankaran, Sethuraman ; Grady, Leo ; Taylor, Charles A.
Author_Institution :
HeartFlow Inc., Redwood City, CA, USA
Volume :
34
Issue :
12
fYear :
2015
Firstpage :
2562
Lastpage :
2571
Abstract :
Patient-specific blood flow modeling combining imaging data and computational fluid dynamics can aid in the assessment of coronary artery disease. Accurate coronary segmentation and realistic physiologic modeling of boundary conditions are important steps to ensure a high diagnostic performance. Segmentation of the coronary arteries can be constructed by a combination of automated algorithms with human review and editing. However, blood pressure and flow are not impacted equally by different local sections of the coronary artery tree. Focusing human review and editing towards regions that will most affect the subsequent simulations can significantly accelerate the review process. We define geometric sensitivity as the standard deviation in hemodynamics-derived metrics due to uncertainty in lumen segmentation. We develop a machine learning framework for estimating the geometric sensitivity in real time. Features used include geometric and clinical variables, and reduced-order models. We develop an anisotropic kernel regression method for assessment of lumen narrowing score, which is used as a feature in the machine learning algorithm. A multi-resolution sensitivity algorithm is introduced to hierarchically refine regions of high sensitivity so that we can quantify sensitivities to a desired spatial resolution. We show that the mean absolute error of the machine learning algorithm compared to 3D simulations is less than 0.01. We further demonstrate that sensitivity is not predicted simply by anatomic reduction but also encodes information about hemodynamics which in turn depends on downstream boundary conditions. This sensitivity approach can be extended to other systems such as cerebral flow, electro-mechanical simulations, etc.
Keywords :
blood vessels; computerised tomography; diseases; electromechanical effects; geometry; haemodynamics; image segmentation; learning (artificial intelligence); medical image processing; regression analysis; reviews; 3D simulation; anisotropic kernel regression method; automated algorithms; blood pressure; boundary conditions; cerebral flow; computational fluid dynamics; coronary artery disease; coronary artery tree; coronary segmentation; downstream boundary conditions; electromechanical simulation; fast computation; geometric sensitivity; hemodynamic sensitivity; hemodynamics-derived metrics; hierarchically refine regions; imaging data; lumen narrowing score assessment; lumen segmentation uncertainty; machine learning algorithm; machine learning framework; mean absolute error; multiresolution sensitivity algorithm; patient-specific blood flow modeling; physiologic modeling; reduced-order models; spatial resolution; standard deviation; Arteries; Bifurcation; Blood; Geometry; Sensitivity; Stochastic processes; Uncertainty; Blood flow simulations; machine learning; multi-resolution analysis; segmentation accuracy; sensitivity analysis;
fLanguage :
English
Journal_Title :
Medical Imaging, IEEE Transactions on
Publisher :
ieee
ISSN :
0278-0062
Type :
jour
DOI :
10.1109/TMI.2015.2445777
Filename :
7124471
Link To Document :
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