Literature DB >> 32175861

Real-Time Automatic Ejection Fraction and Foreshortening Detection Using Deep Learning.

Erik Smistad, Andreas Ostvik, Ivar Mjaland Salte, Daniela Melichova, Thuy Mi Nguyen, Kristina Haugaa, Harald Brunvand, Thor Edvardsen, Sarah Leclerc, Olivier Bernard, Bjornar Grenne, Lasse Lovstakken.   

Abstract

Volume and ejection fraction (EF) measurements of the left ventricle (LV) in 2-D echocardiography are associated with a high uncertainty not only due to interobserver variability of the manual measurement, but also due to ultrasound acquisition errors such as apical foreshortening. In this work, a real-time and fully automated EF measurement and foreshortening detection method is proposed. The method uses several deep learning components, such as view classification, cardiac cycle timing, segmentation and landmark extraction, to measure the amount of foreshortening, LV volume, and EF. A data set of 500 patients from an outpatient clinic was used to train the deep neural networks, while a separate data set of 100 patients from another clinic was used for evaluation, where LV volume and EF were measured by an expert using clinical protocols and software. A quantitative analysis using 3-D ultrasound showed that EF is considerably affected by apical foreshortening, and that the proposed method can detect and quantify the amount of apical foreshortening. The bias and standard deviation of the automatic EF measurements were -3.6 ± 8.1%, while the mean absolute difference was measured at 7.2% which are all within the interobserver variability and comparable with related studies. The proposed real-time pipeline allows for a continuous acquisition and measurement workflow without user interaction, and has the potential to significantly reduce the time spent on the analysis and measurement error due to foreshortening, while providing quantitative volume measurements in the everyday echo lab.

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Year:  2020        PMID: 32175861     DOI: 10.1109/TUFFC.2020.2981037

Source DB:  PubMed          Journal:  IEEE Trans Ultrason Ferroelectr Freq Control        ISSN: 0885-3010            Impact factor:   2.725


  5 in total

1.  Automatic morphological classification of mitral valve diseases in echocardiographic images based on explainable deep learning methods.

Authors:  Majid Vafaeezadeh; Hamid Behnam; Ali Hosseinsabet; Parisa Gifani
Journal:  Int J Comput Assist Radiol Surg       Date:  2021-12-12       Impact factor: 2.924

2.  A machine learning framework for the evaluation of myocardial rotation in patients with noncompaction cardiomyopathy.

Authors:  Marcelo Dantas Tavares de Melo; Jose de Arimatéia Batista Araujo-Filho; José Raimundo Barbosa; Camila Rocon; Carlos Danilo Miranda Regis; Alex Dos Santos Felix; Roberto Kalil Filho; Edimar Alcides Bocchi; Ludhmila Abrahão Hajjar; Mahdi Tabassian; Jan D'hooge; Vera Maria Cury Salemi
Journal:  PLoS One       Date:  2021-11-29       Impact factor: 3.240

3.  Real-time echocardiography image analysis and quantification of cardiac indices.

Authors:  Ghada Zamzmi; Sivaramakrishnan Rajaraman; Li-Yueh Hsu; Vandana Sachdev; Sameer Antani
Journal:  Med Image Anal       Date:  2022-06-09       Impact factor: 13.828

4.  Automatic view classification of contrast and non-contrast echocardiography.

Authors:  Ye Zhu; Junqiang Ma; Zisang Zhang; Yiwei Zhang; Shuangshuang Zhu; Manwei Liu; Ziming Zhang; Chun Wu; Xin Yang; Jun Cheng; Dong Ni; Mingxing Xie; Wufeng Xue; Li Zhang
Journal:  Front Cardiovasc Med       Date:  2022-09-14

5.  Technology trends and applications of deep learning in ultrasonography: image quality enhancement, diagnostic support, and improving workflow efficiency.

Authors:  Jonghyon Yi; Ho Kyung Kang; Jae-Hyun Kwon; Kang-Sik Kim; Moon Ho Park; Yeong Kyeong Seong; Dong Woo Kim; Byungeun Ahn; Kilsu Ha; Jinyong Lee; Zaegyoo Hah; Won-Chul Bang
Journal:  Ultrasonography       Date:  2020-09-14
  5 in total

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