Marcel Santaló-Corcoy, Denis Corbin, Olivier Tastet, Frédéric Lesage, Thomas Modine, Anita Asgar et Walid Ben Ali
Article de revue (2023)
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Abstract
Background: Transcatheter aortic valve implantation (TAVI) is a less invasive alternative to open-heart surgery for treating severe aortic stenosis. Despite its benefits, the risk of procedural complications necessitates careful preoperative planning. Methods: This study proposes a fully automated deep learning-based method, TAVI-PREP, for pre-TAVI planning, focusing on measurements extracted from computed tomography (CT) scans. The algorithm was trained on the public MM-WHS dataset and a small subset of private data. It uses MeshDeformNet for 3D surface mesh generation and a 3D Residual U-Net for landmark detection. TAVI-PREP is designed to extract 22 different measurements from the aortic valvular complex. A total of 200 CT-scans were analyzed, and automatic measurements were compared to the ones made manually by an expert cardiologist. A second cardiologist analyzed 115 scans to evaluate inter-operator variability. Results: High Pearson correlation coefficients between the expert and the algorithm were obtained for most parameters (0.90–0.97), except for left and right coronary height (0.8 and 0.72, respectively). Similarly, the mean absolute relative error was within 5% for most measurements, except for left and right coronary height (11.6% and 16.5%, respectively). A greater consensus was observed among experts than when compared to the automatic approach, with TAVI-PREP showing no discernable bias towards either the lower or higher ends of the measurement spectrum. Conclusions: TAVI-PREP provides reliable and time-efficient measurements of the aortic valvular complex that could aid clinicians in the preprocedural planning of TAVI procedures.
Mots clés
transcatheter aortic valve implantation (TAVI); deep neural networks; automatic preoperative planning
Département: | Département de génie électrique |
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URL de PolyPublie: | https://publications.polymtl.ca/56698/ |
Titre de la revue: | Diagnostics (vol. 13, no 20) |
Maison d'édition: | Multidisciplinary Digital Publishing Institute |
DOI: | 10.3390/diagnostics13203181 |
URL officielle: | https://doi.org/10.3390/diagnostics13203181 |
Date du dépôt: | 15 déc. 2023 15:38 |
Dernière modification: | 27 sept. 2024 14:02 |
Citer en APA 7: | Santaló-Corcoy, M., Corbin, D., Tastet, O., Lesage, F., Modine, T., Asgar, A., & Ali, W. B. (2023). TAVI-PREP: A Deep Learning-Based Tool for Automated Measurements Extraction in TAVI Planning. Diagnostics, 13(20), 3181 (16 pages). https://doi.org/10.3390/diagnostics13203181 |
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