资源类型:
期刊
Pubmed体系:
Journal Article
文章类型:
论著
单位:
[1]Graduate School of Engineering, Chiba University, Chiba, Japan,
[2]College of Life Science and Bioengineering, Beijing University of Technology, Beijing, China,
[3]Department of Interventional Radiology, Beijing Friendship Hospital, Capital Medical University, Beijing, China
医技科室
影像中心
放射介入科
首都医科大学附属北京友谊医院
ISSN:
1664-042X
关键词:
carotid artery stenosis (CAS)
stroke
hemodynamics
deep learning (DL)
computational fluid dynamics (CFD)
摘要:
Hemodynamic prediction of carotid artery stenosis (CAS) is of great clinical significance in the diagnosis, prevention, and treatment prognosis of ischemic strokes. While computational fluid dynamics (CFD) is recognized as a useful tool, it shows a crucial issue that the high computational costs are usually required for real-time simulations of complex blood flows. Given the powerful feature-extraction capabilities, the deep learning (DL) methodology has a high potential to implement the mapping of anatomic geometries and CFD-driven flow fields, which enables accomplishing fast and accurate hemodynamic prediction for clinical applications. Based on a brain/neck CT angiography database of 280 subjects, image based three-dimensional CFD models of CAS were constructed through blood vessel extraction, computational domain meshing and setting of the pulsatile flow boundary conditions; a series of CFD simulations were undertaken. A DL strategy was proposed and accomplished in terms of point cloud datasets and a DL network with dual sampling-analysis channels. This enables multimode mapping to construct the image-based geometries of CAS while predicting CFD-based hemodynamics based on training and testing datasets. The CFD simulation was validated with the mass flow rates at two outlets reasonably agreed with the published results. Comprehensive analysis and error evaluation revealed that the DL strategy enables uncovering the association between transient blood flow characteristics and artery cavity geometric information before and after surgical treatments of CAS. Compared with other methods, our DL-based model trained with more clinical data can reduce the computational cost by 7,200 times, while still demonstrating good accuracy (error<12.5%) and flow visualization in predicting the two hemodynamic parameters. In addition, the DL-based predictions were in good agreement with CFD simulations in terms of mean velocity in the stenotic region for both the preoperative and postoperative datasets. This study points to the capability and significance of the DL-based fast and accurate hemodynamic prediction of preoperative and postoperative CAS. For accomplishing real-time monitoring of surgical treatments, further improvements in the prediction accuracy and flexibility may be conducted by utilizing larger datasets with specific real surgical events such as stent intervention, adopting personalized boundary conditions, and optimizing the DL network.Copyright © 2023 Wang, Wu, Li, Zhang, Xiao, Li, Qiao, Jin and Liu.
基金:
This work was partly supported by JST SPRING, Grant
Number JPMJSP2109 and Fujii Sechiro Memorial Osaka Basic
Medical Research Foundation in 2020.
PubmedID:
36703930
中科院(CAS)分区:
出版当年[2021]版:
大类
|
2 区
医学
小类
|
2 区
生理学
最新[2025]版:
大类
|
3 区
医学
小类
|
2 区
生理学
JCR分区:
出版当年[2020]版:
Q1
PHYSIOLOGY
影响因子:
最新[2023版] 3.2
最新五年平均[2021-2025] 4
出版当年[2020版] 4.566
出版当年五年平均[2016-2020] 4.805
出版前一年[2019版] 3.367
出版后一年[2021版] 4.755
第一作者:
Wang Sirui
第一作者单位:
[1]Graduate School of Engineering, Chiba University, Chiba, Japan,
通讯作者:
Jin Long;Liu Hao
推荐引用方式(GB/T 7714):
Wang Sirui,Wu Dandan,Li Gaoyang,et al.Deep learning-based hemodynamic prediction of carotid artery stenosis before and after surgical treatments[J].Frontiers In Physiology.2022,13:1094743.doi:10.3389/fphys.2022.1094743.
APA:
Wang Sirui,Wu Dandan,Li Gaoyang,Zhang Zhiyuan,Xiao Weizhong...&Liu Hao.(2022).Deep learning-based hemodynamic prediction of carotid artery stenosis before and after surgical treatments.Frontiers In Physiology,13,
MLA:
Wang Sirui,et al."Deep learning-based hemodynamic prediction of carotid artery stenosis before and after surgical treatments".Frontiers In Physiology 13.(2022):1094743