A Deep Learning-Based and Fully Automated Pipeline for Thoracic Aorta Geometric Analysis and Planning for Endovascular Repair from Computed Tomography.

Journal: Journal of digital imaging
PMID:

Abstract

Feasibility assessment and planning of thoracic endovascular aortic repair (TEVAR) require computed tomography (CT)-based analysis of geometric aortic features to identify adequate landing zones (LZs) for endograft deployment. However, no consensus exists on how to take the necessary measurements from CT image data. We trained and applied a fully automated pipeline embedding a convolutional neural network (CNN), which feeds on 3D CT images to automatically segment the thoracic aorta, detects proximal landing zones (PLZs), and quantifies geometric features that are relevant for TEVAR planning. For 465 CT scans, the thoracic aorta and pulmonary arteries were manually segmented; 395 randomly selected scans with the corresponding ground truth segmentations were used to train a CNN with a 3D U-Net architecture. The remaining 70 scans were used for testing. The trained CNN was embedded within computational geometry processing pipeline which provides aortic metrics of interest for TEVAR planning. The resulting metrics included aortic arch centerline radius of curvature, proximal landing zones (PLZs) maximum diameters, angulation, and tortuosity. These parameters were statistically analyzed to compare standard arches vs. arches with a common origin of the innominate and left carotid artery (CILCA). The trained CNN yielded a mean Dice score of 0.95 and was able to generalize to 9 pathological cases of thoracic aortic aneurysm, providing accurate segmentations. CILCA arches were characterized by significantly greater angulation (p = 0.015) and tortuosity (p = 0.048) in PLZ 3 vs. standard arches. For both arch configurations, comparisons among PLZs revealed statistically significant differences in maximum zone diameters (p < 0.0001), angulation (p < 0.0001), and tortuosity (p < 0.0001). Our tool allows clinicians to obtain objective and repeatable PLZs mapping, and a range of automatically derived complex aortic metrics.

Authors

  • Simone Saitta
    Department of Electronics Information and Bioengineering, Politecnico Di Milano, Milan, Italy.
  • Francesco Sturla
    Department of Electronics Information and Bioengineering, Politecnico Di Milano, Milan, Italy.
  • Alessandro Caimi
    Department of Electronics Information and Bioengineering, Politecnico Di Milano, Milan, Italy.
  • Alessandra Riva
    Department of Electronics Information and Bioengineering, Politecnico Di Milano, Milan, Italy.
  • Maria Chiara Palumbo
    Greenberg Division of Cardiology, Department of Medicine, Weill Cornell Medicine, 525 E 68th St, New York, NY, 10065, USA.
  • Giovanni Nano
    Clinical Research Unit and Division of Vascular Surgery, IRCCS Policlinico San Donato, Via Morandi 30, 20097, San Donato Milanese, Italy.
  • Emiliano Votta
    Department of Electronics Information and Bioengineering, Politecnico Di Milano, Milan, Italy.
  • Alessandro Della Corte
    Department of Translational Medical Sciences, University of Campania "L. Vanvitelli", Unit of Cardiac Surgery, V. Monaldi Hospital, Naples, Italy.
  • Mattia Glauber
    Minimally Invasive Cardiac Surgery Unit, Istituto Clinico Sant'Ambrogio, Milan, Italy.
  • Dante Chiappino
    Imaging Department, Fondazione Gabriele Monasterio, Massa, Italy.
  • Massimiliano M Marrocco-Trischitta
    Clinical Research Unit and Division of Vascular Surgery, IRCCS Policlinico San Donato, Via Morandi 30, 20097, San Donato Milanese, Italy. massimiliano.marroccotrischitta@grupposandonato.it.
  • Alberto Redaelli
    Department of Electronics Information and Bioengineering, Politecnico Di Milano, Milan, Italy.