亚洲知识产权资讯网为知识产权业界提供一个一站式网上交易平台,协助业界发掘知识产权贸易商机,并与环球知识产权业界建立联系。无论你是知识产权拥有者正在出售您的知识产权,或是制造商需要购买技术以提高操作效能,又或是知识产权配套服务供应商,你将会从本网站发掘到有用的知识产权贸易资讯。

Temporal Dynamic Functional Analysis

技术应用
Standalone software or modulewithin existing image analysis software systemToolto facilitate industry collaboration to support larger radiomics infrastructureand comprehensive database combined with medical and genomic data
详细技术说明
Perfusion and diffusion analysis softwarefor CT and MRI
*Abstract

TemporalDynamic (Functional) Analysis (TDA) is the new standard in advanced functionalimaging analysis for the application of radiotherapy in cancer treatment. 

Theuse of dynamic contrast-enhanced (DCE) imaging in combination withpharmacokinetic modeling of contrast agents into the blood flow is rapidlybecoming an important tool in assessing tissue response to targetedinterventions, as well as efficacy of drug delivery mechanisms. Differentparameter models for contrast material exchange have been developed to describeperfusion, vascular permeability and density. As such, a fast, big dataanalytics platform—TDA—has been developed to combine fundamental tracerkinetics modeling and their resulting microcirculatory properties toeffectively advance functional imaging for a variety of applications.

TDAautomates the segmentation and voxel-based analysis that is essential for everypatient, since manual contouring of the region of interest (e.g. tumor) istime-consuming, but also prone to inter- and intra-observer errors.Furthermore, difficulties exist in image registration of serial functional datain order to derive treatment response metrics because a tumor’s morphology islikely to change (eg, shrink or change non-isotropically) and move over time. Conventionalauto-segmentation methods typically use signal thresholding, which has provendifficult for segmenting vessels and perfused tissue.

TDAuses the temporal density of 4D DCE data, which allows for a conceptuallydifferent approach to analyzing perfused tissue voxels. Instead of evaluatingeach volume in the cine acquisition individually, it exploits the dynamiccontrast behavior of voxels to characterize areas and levels of blood flow andperfusion to automatically classify structures or regions of interest based ontheir functionality. This, in turn,helps to improve the accuracy and robustness of the calculated kineticperfusion and tissue permeability parameters.

TDAleverages a rapid GPU-based framework for automatic analysis of DCE CT and DCEMRI data with the most widely tested accuracy and robustness possible usingcontrollable flow phantom data as well as clinical data in the brain and liver.


*Principal Investigation
Dr. Catherine Coolens, University HealthNetwork
*Publications
Coolens C et al Automated Voxel-BasedAnalysis of Volumetric Dynamic Contrast-Enhanced CT Data Improves Measurementof Serial Changes in Tumor Vascular Biomarkers. Int J Radiat Oncol Biol Phys.2015 Jan 1;91(1):48-57
国家/地区
美国

欲了解更多信息,请点击 这里
移动设备