Literature DB >> 21947526

The segmentation of the left ventricle of the heart from ultrasound data using deep learning architectures and derivative-based search methods.

Gustavo Carneiro1, Jacinto C Nascimento, António Freitas.   

Abstract

We present a new supervised learning model designed for the automatic segmentation of the left ventricle (LV) of the heart in ultrasound images. We address the following problems inherent to supervised learning models: 1) the need of a large set of training images; 2) robustness to imaging conditions not present in the training data; and 3) complex search process. The innovations of our approach reside in a formulation that decouples the rigid and nonrigid detections, deep learning methods that model the appearance of the LV, and efficient derivative-based search algorithms. The functionality of our approach is evaluated using a data set of diseased cases containing 400 annotated images (from 12 sequences) and another data set of normal cases comprising 80 annotated images (from two sequences), where both sets present long axis views of the LV. Using several error measures to compute the degree of similarity between the manual and automatic segmentations, we show that our method not only has high sensitivity and specificity but also presents variations with respect to a gold standard (computed from the manual annotations of two experts) within interuser variability on a subset of the diseased cases. We also compare the segmentations produced by our approach and by two state-of-the-art LV segmentation models on the data set of normal cases, and the results show that our approach produces segmentations that are comparable to these two approaches using only 20 training images and increasing the training set to 400 images causes our approach to be generally more accurate. Finally, we show that efficient search methods reduce up to tenfold the complexity of the method while still producing competitive segmentations. In the future, we plan to include a dynamical model to improve the performance of the algorithm, to use semisupervised learning methods to reduce even more the dependence on rich and large training sets, and to design a shape model less dependent on the training set.

Mesh:

Year:  2011        PMID: 21947526     DOI: 10.1109/TIP.2011.2169273

Source DB:  PubMed          Journal:  IEEE Trans Image Process        ISSN: 1057-7149            Impact factor:   10.856


  23 in total

1.  Automated detection of coarctation of aorta in neonates from two-dimensional echocardiograms.

Authors:  Franklin Pereira; Alejandra Bueno; Andrea Rodriguez; Douglas Perrin; Gerald Marx; Michael Cardinale; Ivan Salgo; Pedro Del Nido
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Authors:  Shuai Wang; Kelei He; Dong Nie; Sihang Zhou; Yaozong Gao; Dinggang Shen
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Authors:  Sarah A Mason; Ingrid M White; Susan Lalondrelle; Jeffrey C Bamber; Emma J Harris
Journal:  Ultrasound Med Biol       Date:  2020-01-08       Impact factor: 2.998

4.  Automated estimation of echocardiogram image quality in hospitalized patients.

Authors:  Christina Luong; Zhibin Liao; Amir Abdi; Purang Abolmaesumi; Teresa S M Tsang; Hany Girgis; Robert Rohling; Kenneth Gin; John Jue; Darwin Yeung; Elena Szefer; Darby Thompson; Michael Yin-Cheung Tsang; Pui Kee Lee; Parvathy Nair
Journal:  Int J Cardiovasc Imaging       Date:  2020-11-19       Impact factor: 2.357

5.  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

6.  A convolutional neural network to filter artifacts in spectroscopic MRI.

Authors:  Saumya S Gurbani; Eduard Schreibmann; Andrew A Maudsley; James Scott Cordova; Brian J Soher; Harish Poptani; Gaurav Verma; Peter B Barker; Hyunsuk Shim; Lee A D Cooper
Journal:  Magn Reson Med       Date:  2018-03-09       Impact factor: 4.668

Review 7.  Machine learning for medical ultrasound: status, methods, and future opportunities.

Authors:  Laura J Brattain; Brian A Telfer; Manish Dhyani; Joseph R Grajo; Anthony E Samir
Journal:  Abdom Radiol (NY)       Date:  2018-04

8.  Deformable MR Prostate Segmentation via Deep Feature Learning and Sparse Patch Matching.

Authors:  Yanrong Guo; Yaozong Gao; Dinggang Shen
Journal:  IEEE Trans Med Imaging       Date:  2015-12-11       Impact factor: 10.048

9.  Generalizability and quality control of deep learning-based 2D echocardiography segmentation models in a large clinical dataset.

Authors:  Xiaoyan Zhang; Alvaro E Ulloa Cerna; Joshua V Stough; Yida Chen; Brendan J Carry; Amro Alsaid; Sushravya Raghunath; David P vanMaanen; Brandon K Fornwalt; Christopher M Haggerty
Journal:  Int J Cardiovasc Imaging       Date:  2022-02-24       Impact factor: 2.357

10.  Left ventricle analysis in echocardiographic images using transfer learning.

Authors:  Hafida Belfilali; Frédéric Bousefsaf; Mahammed Messadi
Journal:  Phys Eng Sci Med       Date:  2022-09-21
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