Artificial intelligence in mitral valve analysis

Background: Echocardiographic analysis of mitral valve (MV) has become essential for diagnosis and management of patients with MV disease. Currently, the various software used for MV analysis require manual input and are prone to interobserver variability in the measurements. Aim: The aim of this st...

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Main Authors: Jelliffe Jeganathan, Ziyad Knio, Yannis Amador, Ting Hai, Arash Khamooshian, Robina Matyal, Kamal R Khabbaz, Feroze Mahmood
Format: Article
Language:English
Published: Wolters Kluwer Medknow Publications 2017-01-01
Series:Annals of Cardiac Anaesthesia
Subjects:
Online Access:http://www.annals.in/article.asp?issn=0971-9784;year=2017;volume=20;issue=2;spage=129;epage=134;aulast=Jeganathan
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spelling doaj-b6720fb1dff74c32b4882f7eb7d6ecd12020-11-25T01:59:27ZengWolters Kluwer Medknow PublicationsAnnals of Cardiac Anaesthesia0971-97842017-01-0120212913410.4103/aca.ACA_243_16Artificial intelligence in mitral valve analysisJelliffe JeganathanZiyad KnioYannis AmadorTing HaiArash KhamooshianRobina MatyalKamal R KhabbazFeroze MahmoodBackground: Echocardiographic analysis of mitral valve (MV) has become essential for diagnosis and management of patients with MV disease. Currently, the various software used for MV analysis require manual input and are prone to interobserver variability in the measurements. Aim: The aim of this study is to determine the interobserver variability in an automated software that uses artificial intelligence for MV analysis. Settings and Design: Retrospective analysis of intraoperative three-dimensional transesophageal echocardiography data acquired from four patients with normal MV undergoing coronary artery bypass graft surgery in a tertiary hospital. Materials and Methods: Echocardiographic data were analyzed using the eSie Valve Software (Siemens Healthcare, Mountain View, CA, USA). Three examiners analyzed three end-systolic (ES) frames from each of the four patients. A total of 36 ES frames were analyzed and included in the study. Statistical Analysis: A multiple mixed-effects ANOVA model was constructed to determine if the examiner, the patient, and the loop had a significant effect on the average value of each parameter. A Bonferroni correction was used to correct for multiple comparisons, and P = 0.0083 was considered to be significant. Results: Examiners did not have an effect on any of the six parameters tested. Patient and loop had an effect on the average parameter value for each of the six parameters as expected (P < 0.0083 for both). Conclusion: We were able to conclude that using automated analysis, it is possible to obtain results with good reproducibility, which only requires minimal user intervention.http://www.annals.in/article.asp?issn=0971-9784;year=2017;volume=20;issue=2;spage=129;epage=134;aulast=JeganathanArtificial intelligenceeSie Valve Softwareinterobserver variabilitymitral valvemitral valve analysis
collection DOAJ
language English
format Article
sources DOAJ
author Jelliffe Jeganathan
Ziyad Knio
Yannis Amador
Ting Hai
Arash Khamooshian
Robina Matyal
Kamal R Khabbaz
Feroze Mahmood
spellingShingle Jelliffe Jeganathan
Ziyad Knio
Yannis Amador
Ting Hai
Arash Khamooshian
Robina Matyal
Kamal R Khabbaz
Feroze Mahmood
Artificial intelligence in mitral valve analysis
Annals of Cardiac Anaesthesia
Artificial intelligence
eSie Valve Software
interobserver variability
mitral valve
mitral valve analysis
author_facet Jelliffe Jeganathan
Ziyad Knio
Yannis Amador
Ting Hai
Arash Khamooshian
Robina Matyal
Kamal R Khabbaz
Feroze Mahmood
author_sort Jelliffe Jeganathan
title Artificial intelligence in mitral valve analysis
title_short Artificial intelligence in mitral valve analysis
title_full Artificial intelligence in mitral valve analysis
title_fullStr Artificial intelligence in mitral valve analysis
title_full_unstemmed Artificial intelligence in mitral valve analysis
title_sort artificial intelligence in mitral valve analysis
publisher Wolters Kluwer Medknow Publications
series Annals of Cardiac Anaesthesia
issn 0971-9784
publishDate 2017-01-01
description Background: Echocardiographic analysis of mitral valve (MV) has become essential for diagnosis and management of patients with MV disease. Currently, the various software used for MV analysis require manual input and are prone to interobserver variability in the measurements. Aim: The aim of this study is to determine the interobserver variability in an automated software that uses artificial intelligence for MV analysis. Settings and Design: Retrospective analysis of intraoperative three-dimensional transesophageal echocardiography data acquired from four patients with normal MV undergoing coronary artery bypass graft surgery in a tertiary hospital. Materials and Methods: Echocardiographic data were analyzed using the eSie Valve Software (Siemens Healthcare, Mountain View, CA, USA). Three examiners analyzed three end-systolic (ES) frames from each of the four patients. A total of 36 ES frames were analyzed and included in the study. Statistical Analysis: A multiple mixed-effects ANOVA model was constructed to determine if the examiner, the patient, and the loop had a significant effect on the average value of each parameter. A Bonferroni correction was used to correct for multiple comparisons, and P = 0.0083 was considered to be significant. Results: Examiners did not have an effect on any of the six parameters tested. Patient and loop had an effect on the average parameter value for each of the six parameters as expected (P < 0.0083 for both). Conclusion: We were able to conclude that using automated analysis, it is possible to obtain results with good reproducibility, which only requires minimal user intervention.
topic Artificial intelligence
eSie Valve Software
interobserver variability
mitral valve
mitral valve analysis
url http://www.annals.in/article.asp?issn=0971-9784;year=2017;volume=20;issue=2;spage=129;epage=134;aulast=Jeganathan
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