Deep learning assisted measurement of echocardiographic left heart parameters: improvement in interobserver variability and workflow efficiency.

MedStar author(s):
Citation: The International Journal of Cardiovascular Imaging. 39(12):2507-2516, 2023 Dec.PMID: 37872467Institution: MedStar Health Research InstituteForm of publication: Journal ArticleMedline article type(s): Journal ArticleSubject headings: *Deep Learning | *Echocardiography, Three-Dimensional | Echocardiography | Echocardiography, Three-Dimensional/mt [Methods] | Heart Ventricles/dg [Diagnostic Imaging] | Humans | Observer Variation | Predictive Value of Tests | Reproducibility of Results | WorkflowYear: 2023ISSN:
  • 1569-5794
Name of journal: The international journal of cardiovascular imagingAbstract: Machine learning techniques designed to recognize views and perform measurements are increasingly used to address the need for automation of the interpretation of echocardiographic images. The current study was designed to determine whether a recently developed and validated deep learning (DL) algorithm for automated measurements of echocardiographic parameters of left heart chamber size and function can improve the reproducibility and shorten the analysis time, compared to the conventional methodology. The DL algorithm trained to identify standard views and provide automated measurements of 20 standard parameters, was applied to images obtained in 12 randomly selected echocardiographic studies. The resultant measurements were reviewed and revised as necessary by 10 independent expert readers. The same readers also performed conventional manual measurements, which were averaged and used as the reference standard for the DL-assisted approach with and without the manual revisions. Inter-reader variability was quantified using coefficients of variation, which together with analysis times, were compared between the conventional reads and the DL-assisted approach. The fully automated DL measurements showed good agreement with the reference technique: Bland-Altman biases 0-14% of the measured values. Manual revisions resulted in only minor improvement in accuracy: biases 0-11%. This DL-assisted approach resulted in a 43% decrease in analysis time and less inter-reader variability than the conventional methodology: 2-3 times smaller coefficients of variation. In conclusion, DL-assisted approach to analysis of echocardiographic images can provide accurate left heart measurements with the added benefits of improved reproducibility and time savings, compared to conventional methodology. Copyright © 2023. The Author(s), under exclusive licence to Springer Nature B.V.All authors: Mor-Avi V, Blitz A, Schreckenberg M, Addetia K, Kebed K, Scalia G, Badano LP, Kirkpatrick JN, Gutierrez-Fajardo P, Tude Rodrigues AC, Sadeghpour A, Tucay ES, Prado AD, Tsang W, Ogunyankin KO, Rossmanith A, Schummers G, Laczik D, Asch FM, Lang RMFiscal year: FY2024Digital Object Identifier: Date added to catalog: 2024-01-16
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Journal Article MedStar Authors Catalog Article 37872467 Available 37872467

Machine learning techniques designed to recognize views and perform measurements are increasingly used to address the need for automation of the interpretation of echocardiographic images. The current study was designed to determine whether a recently developed and validated deep learning (DL) algorithm for automated measurements of echocardiographic parameters of left heart chamber size and function can improve the reproducibility and shorten the analysis time, compared to the conventional methodology. The DL algorithm trained to identify standard views and provide automated measurements of 20 standard parameters, was applied to images obtained in 12 randomly selected echocardiographic studies. The resultant measurements were reviewed and revised as necessary by 10 independent expert readers. The same readers also performed conventional manual measurements, which were averaged and used as the reference standard for the DL-assisted approach with and without the manual revisions. Inter-reader variability was quantified using coefficients of variation, which together with analysis times, were compared between the conventional reads and the DL-assisted approach. The fully automated DL measurements showed good agreement with the reference technique: Bland-Altman biases 0-14% of the measured values. Manual revisions resulted in only minor improvement in accuracy: biases 0-11%. This DL-assisted approach resulted in a 43% decrease in analysis time and less inter-reader variability than the conventional methodology: 2-3 times smaller coefficients of variation. In conclusion, DL-assisted approach to analysis of echocardiographic images can provide accurate left heart measurements with the added benefits of improved reproducibility and time savings, compared to conventional methodology. Copyright © 2023. The Author(s), under exclusive licence to Springer Nature B.V.

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