[Invited speech]A Deep Learning Framework for Detecting Aortic Dissection based on Non-Contrast-Enhanced CT images

A Deep Learning Framework for Detecting Aortic Dissection based on Non-Contrast-Enhanced CT images
ID:33 View Protection:ATTENDEE Updated Time:2021-11-05 16:56:23 Hits:731 Invited speech

Start Time:2021-11-14 14:45 (Asia/Shanghai)

Duration:25min

Session:[PS2] Plenary Session 2 & CT Session » [MR2] Workshop on MRI Session 2

No files

Abstract
Aortic dissection (AD) is a dangerous disease with a high mortality which requires contrast enhanced computed tomography (CE-CT) for clinical diagnosis. However, CE-CT needs injecting contrast agents which may cause allergic reactions or renal failure. To address this issue, a cascaded multi-task generative framework was proposed to detect AD based on NCE-CT images. The framework jointly learns non-contrast to contrast (NC2C) transformation, true and false lumen segmentation, and AD or non-AD classification to improve the accuracy of AD detection. We evaluated the framework and compared it with state-of-the-art algorithms based on a clinical dataset collected from two hospitals. Experiment results demonstrate that the proposed framework outperforms state-of-the-art algorithms and is able to detect AD with accuracy of 84.4%, sensitivity of 93.8%, and specificity of 75.0%. The framework is valuable to alleviate the misdiagnosis when only NCE-CT images are available for detecting AD.
Keywords
Speaker
Guoxi Xie
Professor Guangzhou Medical University

* Director of the Department of Biomedical Engineering, Guangzhou Medical University
* Member of International Society of Magnetic Resonance In Medicine
* Member of Chinese Society of Biomedical Engineering

Comment submit
Verification code Change another
All comments

Countdown

  • 00

    Days

  • 00

    Hours

  • 00

    Minutes

  • 00

    Seconds

Important Dates

Abstract submission date:

2021-08-31

2021-10-25

Full paper submission date:

2021-09-15

2021-10-25

Notification of acceptance date: 

2021-09-30

2021-11-01

Conference date: 2021-11-12~2021-11-14

 

Contact Us

Jinying Yang +86 13675518597
Debo Zhi +86 15056085235
Song Gao +86 13121880288
Le Cao +86 15910809908