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Using artificial intelligence for device identification and characterization in angiographic sequences of TAVI procedures as radiomic biomarkers for prosthesis deterioration

INTRODUCTION: Transcatheter Aortic Valve Implantation (TAVI) has been established as the preferential option for patients suffering from symptomatic severe aortic stenosis with high surgical risk. Due to the implantation of prosthesis on younger patients, the durability of TAVI devices becomes a cru...

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Autores principales: Busto, L, Veiga, C, Gonzalez-Novoa, J A, Jimenez, V, Juan-Salvadores, P, Baz, J A, Iniguez, A
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9779767/
http://dx.doi.org/10.1093/ehjdh/ztac076.2782
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author Busto, L
Veiga, C
Gonzalez-Novoa, J A
Jimenez, V
Juan-Salvadores, P
Baz, J A
Iniguez, A
author_facet Busto, L
Veiga, C
Gonzalez-Novoa, J A
Jimenez, V
Juan-Salvadores, P
Baz, J A
Iniguez, A
author_sort Busto, L
collection PubMed
description INTRODUCTION: Transcatheter Aortic Valve Implantation (TAVI) has been established as the preferential option for patients suffering from symptomatic severe aortic stenosis with high surgical risk. Due to the implantation of prosthesis on younger patients, the durability of TAVI devices becomes a crucial issue, especially beyond 5 years of follow-up [1]. Therefore, an application of growing interest is the assessment of the prosthesis deterioration, which is directly related to the measurement of the stent tip deflection [2]. In order to extract this parameter from angiographic sequences, a prior requirement relies on the automatic detection of the prosthesis in the image, pointing directly to the use of Artificial Intelligence. PURPOSE: Automatically segment TAVI prostheses in angiographic sequences using Deep Learning [3]. The aim is allowing the extraction of information from these images, as the measurement of the stent tip deflection for evaluating the prosthesis deterioration, to improve the clinical practice. METHODS: A U-Net, which is a Deep Learning architecture designed for the analysis of biomedical imaging, has been trained for the segmentation of TAVI prostheses in angiographies [3]. The self-built dataset includes 50 sequences captured during TAVI from a population of 15 patients, obtaining 2827 frames (examples provided in Fig. 1). This dataset is randomly split into training and test sets using an 80/20 ratio. The U-Net is trained using the training set and its annotations (manually generated), optimised during 50 epochs using Adam optimiser, and binary cross-entropy as the cost function. Once the model has been trained, it is used for the segmentation of the images in the test set. RESULTS: The segmentation results have been evaluated in separate subsets of frames extracted from the test set, regarding the stage of the procedure they correspond. Such subsets are aortic root previous to the device delivery (Fig. 1A), prosthesis deployment (Fig. 1B), prosthesis fully-expanded (Fig. 1C), and contrast agent injection (Fig. 1D). Fig. 2 provides examples of the results obtained for the images in Fig. 1, showing the original frames and the segmentation result overlaid. The results have been evaluated in terms of different classification metrics, obtaining the mean values in the following ranges for the four groups: accuracy 0.99–1.00, recall 0.70–0.97, and area under the receiver operating characteristic curve (AUROC) 0.85–0.98. CONCLUSION: U-Net has been successfully applied to angiographic imaging captured during TAVI procedure for segmenting the prosthesis, with AUROC values between 0.85 and 0.98. The prosthesis identification and characterization allow the extraction of imaging biomarkers of great interest that can be used for the evaluation of the prosthesis deterioration. FUNDING ACKNOWLEDGEMENT: Type of funding sources: Public grant(s) – National budget only. Main funding source(s): Axencia Galega de Innovaciόn (GAIN) (Code Numbers IN845D-2020/29 and IN607B-2021/18)
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spelling pubmed-97797672023-01-27 Using artificial intelligence for device identification and characterization in angiographic sequences of TAVI procedures as radiomic biomarkers for prosthesis deterioration Busto, L Veiga, C Gonzalez-Novoa, J A Jimenez, V Juan-Salvadores, P Baz, J A Iniguez, A Eur Heart J Digit Health Abstracts INTRODUCTION: Transcatheter Aortic Valve Implantation (TAVI) has been established as the preferential option for patients suffering from symptomatic severe aortic stenosis with high surgical risk. Due to the implantation of prosthesis on younger patients, the durability of TAVI devices becomes a crucial issue, especially beyond 5 years of follow-up [1]. Therefore, an application of growing interest is the assessment of the prosthesis deterioration, which is directly related to the measurement of the stent tip deflection [2]. In order to extract this parameter from angiographic sequences, a prior requirement relies on the automatic detection of the prosthesis in the image, pointing directly to the use of Artificial Intelligence. PURPOSE: Automatically segment TAVI prostheses in angiographic sequences using Deep Learning [3]. The aim is allowing the extraction of information from these images, as the measurement of the stent tip deflection for evaluating the prosthesis deterioration, to improve the clinical practice. METHODS: A U-Net, which is a Deep Learning architecture designed for the analysis of biomedical imaging, has been trained for the segmentation of TAVI prostheses in angiographies [3]. The self-built dataset includes 50 sequences captured during TAVI from a population of 15 patients, obtaining 2827 frames (examples provided in Fig. 1). This dataset is randomly split into training and test sets using an 80/20 ratio. The U-Net is trained using the training set and its annotations (manually generated), optimised during 50 epochs using Adam optimiser, and binary cross-entropy as the cost function. Once the model has been trained, it is used for the segmentation of the images in the test set. RESULTS: The segmentation results have been evaluated in separate subsets of frames extracted from the test set, regarding the stage of the procedure they correspond. Such subsets are aortic root previous to the device delivery (Fig. 1A), prosthesis deployment (Fig. 1B), prosthesis fully-expanded (Fig. 1C), and contrast agent injection (Fig. 1D). Fig. 2 provides examples of the results obtained for the images in Fig. 1, showing the original frames and the segmentation result overlaid. The results have been evaluated in terms of different classification metrics, obtaining the mean values in the following ranges for the four groups: accuracy 0.99–1.00, recall 0.70–0.97, and area under the receiver operating characteristic curve (AUROC) 0.85–0.98. CONCLUSION: U-Net has been successfully applied to angiographic imaging captured during TAVI procedure for segmenting the prosthesis, with AUROC values between 0.85 and 0.98. The prosthesis identification and characterization allow the extraction of imaging biomarkers of great interest that can be used for the evaluation of the prosthesis deterioration. FUNDING ACKNOWLEDGEMENT: Type of funding sources: Public grant(s) – National budget only. Main funding source(s): Axencia Galega de Innovaciόn (GAIN) (Code Numbers IN845D-2020/29 and IN607B-2021/18) Oxford University Press 2022-12-22 /pmc/articles/PMC9779767/ http://dx.doi.org/10.1093/ehjdh/ztac076.2782 Text en Reproduced from: European Heart Journal, Volume 43, Issue Supplement_2, October 2022, ehac544.2782, https://doi.org/10.1093/eurheartj/ehac544.2782 by permission of Oxford University Press on behalf of the European Society of Cardiology. The opinions expressed in the Journal item reproduced as this reprint are those of the authors and contributors, and do not necessarily reflect those of the European Society of Cardiology, the editors, the editorial board, Oxford University Press or the organization to which the authors are affiliated. The mention of trade names, commercial products or organizations, and the inclusion of advertisements in this reprint do not imply endorsement by the Journal, the editors, the editorial board, Oxford University Press or the organization to which the authors are affiliated. The editors and publishers have taken all reasonable precautions to verify drug names and doses, the results of experimental work and clinical findings published in the Journal. The ultimate responsibility for the use and dosage of drugs mentioned in this reprint and in interpretation of published material lies with the medical practitioner, and the editors and publisher cannot accept liability for damages arising from any error or omissions in the Journal or in this reprint. Please inform the editors of any errors. © The Author(s) 2022. https://creativecommons.org/licenses/by-nc/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (https://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com
spellingShingle Abstracts
Busto, L
Veiga, C
Gonzalez-Novoa, J A
Jimenez, V
Juan-Salvadores, P
Baz, J A
Iniguez, A
Using artificial intelligence for device identification and characterization in angiographic sequences of TAVI procedures as radiomic biomarkers for prosthesis deterioration
title Using artificial intelligence for device identification and characterization in angiographic sequences of TAVI procedures as radiomic biomarkers for prosthesis deterioration
title_full Using artificial intelligence for device identification and characterization in angiographic sequences of TAVI procedures as radiomic biomarkers for prosthesis deterioration
title_fullStr Using artificial intelligence for device identification and characterization in angiographic sequences of TAVI procedures as radiomic biomarkers for prosthesis deterioration
title_full_unstemmed Using artificial intelligence for device identification and characterization in angiographic sequences of TAVI procedures as radiomic biomarkers for prosthesis deterioration
title_short Using artificial intelligence for device identification and characterization in angiographic sequences of TAVI procedures as radiomic biomarkers for prosthesis deterioration
title_sort using artificial intelligence for device identification and characterization in angiographic sequences of tavi procedures as radiomic biomarkers for prosthesis deterioration
topic Abstracts
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9779767/
http://dx.doi.org/10.1093/ehjdh/ztac076.2782
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