4.4 Article

Deep learning approach for the segmentation of aneurysmal ascending aorta

期刊

BIOMEDICAL ENGINEERING LETTERS
卷 11, 期 1, 页码 15-24

出版社

SPRINGERNATURE
DOI: 10.1007/s13534-020-00179-0

关键词

Deep learning; Segmentation; Aorta; Aneurysm; Aortic valve

资金

  1. USA Army Research Office (ARO) [W911NF-18-1-0281]
  2. National Institute of Health (NIH) [R01-HL-143350]
  3. Italian Ministry of Health [GR-2011-02348129]

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This study investigated the feasibility and efficacy of deep learning for automatic segmentation of ATAAs, comparing the performance of UNet, ENet, and ERFNet. Results showed that ENet and UNet were more accurate than ERFNet, with ENet being significantly faster. Deep learning models can rapidly and accurately segment and quantify the 3D geometry of ATAAs, facilitating personalized approaches to patient management.
Diagnosis of ascending thoracic aortic aneurysm (ATAA) is based on the measurement of the maximum aortic diameter, but size is not a good predictor of the risk of adverse events. There is growing interest in the development of novel image-derived risk strategies to improve patient risk management towards a highly individualized level. In this study, the feasibility and efficacy of deep learning for the automatic segmentation of ATAAs was investigated using UNet, ENet, and ERFNet techniques. Specifically, CT angiography done on 72 patients with ATAAs and different valve morphology (i.e., tricuspid aortic valve, TAV, and bicuspid aortic valve, BAV) were semi-automatically segmented with Mimics software (Materialize NV, Leuven, Belgium), and then used for training of the tested deep learning models. The segmentation performance in terms of accuracy and time inference were compared using several parameters. All deep learning models reported a dice score higher than 88%, suggesting a good agreement between predicted and manual ATAA segmentation. We found that the ENet and UNet are more accurate than ERFNet, with the ENet much faster than UNet. This study demonstrated that deep learning models can rapidly segment and quantify the 3D geometry of ATAAs with high accuracy, thereby facilitating the expansion into clinical workflow of personalized approach to the management of patients with ATAAs.

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