Literature DB >> 18955180

Automatic construction of 3D-ASM intensity models by simulating image acquisition: application to myocardial gated SPECT studies.

Catalina Tobon-Gomez1, Constantine Butakoff, Santiago Aguade, Federico Sukno, Gloria Moragas, Alejandro F Frangi.   

Abstract

Active shape models bear a great promise for model-based medical image analysis. Their practical use, though, is undermined due to the need to train such models on large image databases. Automatic building of point distribution models (PDMs) has been successfully addressed and a number of autolandmarking techniques are currently available. However, the need for strategies to automatically build intensity models around each landmark has been largely overlooked in the literature. This work demonstrates the potential of creating intensity models automatically by simulating image generation. We show that it is possible to reuse a 3D PDM built from computed tomography (CT) to segment gated single photon emission computed tomography (gSPECT) studies. Training is performed on a realistic virtual population where image acquisition and formation have been modeled using the SIMIND Monte Carlo simulator and ASPIRE image reconstruction software, respectively. The dataset comprised 208 digital phantoms (4D-NCAT) and 20 clinical studies. The evaluation is accomplished by comparing point-to-surface and volume errors against a proper gold standard. Results show that gSPECT studies can be successfully segmented by models trained under this scheme with subvoxel accuracy. The accuracy in estimated LV function parameters, such as end diastolic volume, end systolic volume, and ejection fraction, ranged from 90.0% to 94.5% for the virtual population and from 87.0% to 89.5% for the clinical population.

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Year:  2008        PMID: 18955180     DOI: 10.1109/TMI.2008.2004819

Source DB:  PubMed          Journal:  IEEE Trans Med Imaging        ISSN: 0278-0062            Impact factor:   10.048


  5 in total

1.  Automatic model-based contour detection of left ventricle myocardium from cardiac CT images.

Authors:  Takamasa Sugiura; Tomoyuki Takeguchi; Yukinobu Sakata; Shuhei Nitta; Tomoya Okazaki; Nobuyuki Matsumoto; Yasuko Fujisawa
Journal:  Int J Comput Assist Radiol Surg       Date:  2012-05-01       Impact factor: 2.924

2.  Automatic segmentation of intra-cochlear anatomy in post-implantation CT of unilateral cochlear implant recipients.

Authors:  Fitsum A Reda; Theodore R McRackan; Robert F Labadie; Benoit M Dawant; Jack H Noble
Journal:  Med Image Anal       Date:  2014-02-18       Impact factor: 8.545

3.  Pre to Intraoperative Data Fusion Framework for Multimodal Characterization of Myocardial Scar Tissue.

Authors:  Antonio R Porras; Gemma Piella; Antonio Berruezo; Juan Fernández-Armenta; Alejandro F Frangi
Journal:  IEEE J Transl Eng Health Med       Date:  2014-09-04       Impact factor: 3.316

4.  A deep learning approach with temporal consistency for automatic myocardial segmentation of quantitative myocardial contrast echocardiography.

Authors:  Mingqi Li; Dewen Zeng; Qiu Xie; Ruixue Xu; Yu Wang; Dunliang Ma; Yiyu Shi; Xiaowei Xu; Meiping Huang; Hongwen Fei
Journal:  Int J Cardiovasc Imaging       Date:  2021-02-17       Impact factor: 2.357

5.  Myocardial Segmentation of Cardiac MRI Sequences With Temporal Consistency for Coronary Artery Disease Diagnosis.

Authors:  Yutian Chen; Wen Xie; Jiawei Zhang; Hailong Qiu; Dewen Zeng; Yiyu Shi; Haiyun Yuan; Jian Zhuang; Qianjun Jia; Yanchun Zhang; Yuhao Dong; Meiping Huang; Xiaowei Xu
Journal:  Front Cardiovasc Med       Date:  2022-02-25
  5 in total

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