Literature DB >> 27046887

A 3-D Active Contour Method for Automated Segmentation of the Left Ventricle From Magnetic Resonance Images.

Mahdi Hajiaghayi, Elliott M Groves, Hamid Jafarkhani, Arash Kheradvar.   

Abstract

OBJECTIVE: This study's objective is to develop and validate a fast automated 3-D segmentation method for cardiac magnetic resonance imaging (MRI). The segmentation algorithm automatically reconstructs cardiac MRI DICOM data into a 3-D model (i.e., direct volumetric segmentation), without relying on prior statistical knowledge.
METHODS: A novel 3-D active contour method was employed to detect the left ventricular cavity in 33 subjects with heterogeneous heart diseases from the York University database. Papillary muscles were identified and added to the chamber using a convex hull of the left ventricle and interpolation. The myocardium was then segmented using a similar 3-D segmentation method according to anatomic information. A multistage approach was taken to determine the method's efficacy.
RESULTS: Our method demonstrated a significant improvement in segmentation performance when compared to manual segmentation and other automated methods. CONCLUSION AND SIGNIFICANCE: A true 3-D reconstruction technique without the need for training datasets or any user-driven segmentation has been developed. In this method, a novel combination of internal and external energy terms for active contour was utilized that exploits histogram matching for improving the segmentation performance. This method takes advantage of full volumetric imaging, does not rely on prior statistical knowledge, and employs a convex-hull interpolation to include the papillary muscles.

Entities:  

Mesh:

Year:  2016        PMID: 27046887     DOI: 10.1109/TBME.2016.2542243

Source DB:  PubMed          Journal:  IEEE Trans Biomed Eng        ISSN: 0018-9294            Impact factor:   4.538


  5 in total

1.  Automated Segmentation of Tissues Using CT and MRI: A Systematic Review.

Authors:  Leon Lenchik; Laura Heacock; Ashley A Weaver; Robert D Boutin; Tessa S Cook; Jason Itri; Christopher G Filippi; Rao P Gullapalli; James Lee; Marianna Zagurovskaya; Tara Retson; Kendra Godwin; Joey Nicholson; Ponnada A Narayana
Journal:  Acad Radiol       Date:  2019-08-10       Impact factor: 3.173

2.  Generalizable fully automated multi-label segmentation of four-chamber view echocardiograms based on deep convolutional adversarial networks.

Authors:  Arghavan Arafati; Daisuke Morisawa; Michael R Avendi; M Reza Amini; Ramin A Assadi; Hamid Jafarkhani; Arash Kheradvar
Journal:  J R Soc Interface       Date:  2020-08-19       Impact factor: 4.118

3.  A Deep Learning Segmentation Approach in Free-Breathing Real-Time Cardiac Magnetic Resonance Imaging.

Authors:  Fan Yang; Yan Zhang; Pinggui Lei; Lihui Wang; Yuehong Miao; Hong Xie; Zhu Zeng
Journal:  Biomed Res Int       Date:  2019-07-30       Impact factor: 3.411

4.  Fully‑automated deep‑learning segmentation of pediatric cardiovascular magnetic resonance of patients with complex congenital heart diseases.

Authors:  Saeed Karimi-Bidhendi; Arghavan Arafati; Andrew L Cheng; Yilei Wu; Arash Kheradvar; Hamid Jafarkhani
Journal:  J Cardiovasc Magn Reson       Date:  2020-11-30       Impact factor: 5.364

5.  Classification of Myocardial 18F-FDG PET Uptake Patterns Using Deep Learning.

Authors:  Nicholas Josselyn; Matthew T MacLean; Christopher Jean; Ben Fuchs; Brianna F Moon; Eileen Hwuang; Srikant Kamesh Iyer; Harold Litt; Yuchi Han; Fatemeh Kaghazchi; Paco E Bravo; Walter R Witschey
Journal:  Radiol Artif Intell       Date:  2021-03-31
  5 in total

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