Stroke risk study based on deep learning-based magnetic resonance imaging carotid plaque automatic segmentation algorithm

被引:6
作者
Chen, Ya-Fang [1 ]
Chen, Zhen-Jie [2 ]
Lin, You-Yu [3 ]
Lin, Zhi-Qiang [3 ]
Chen, Chun-Nuan [1 ]
Yang, Mei-Li [1 ]
Zhang, Jin-Yin [1 ]
Li, Yuan-zhe [4 ]
Wang, Yi [4 ]
Huang, Yin-Hui [3 ]
机构
[1] Fujian Med Univ, Affiliated Hosp 2, Dept Neurol, Quanzhou, Fujian, Peoples R China
[2] Anxi Cty Hosp, Dept Neurol, Quanzhou, Fujian, Peoples R China
[3] Shanghai Sixth Peoples Hosp, Jinjiang Municipal Hosp, Dept Neurol, Fujian Campus, Quanzhou, Fujian, Peoples R China
[4] Fujian Med Univ, Affiliated Hosp 2, Dept CT MRI, Quanzhou, Peoples R China
来源
FRONTIERS IN CARDIOVASCULAR MEDICINE | 2023年 / 10卷
关键词
stroke risk; MRI carotid plaque; deep learning; transfer learning; YOLO V3;
D O I
10.3389/fcvm.2023.1101765
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
IntroductionThe primary factor for cardiovascular disease and upcoming cardiovascular events is atherosclerosis. Recently, carotid plaque texture, as observed on ultrasonography, is varied and difficult to classify with the human eye due to substantial inter-observer variability. High-resolution magnetic resonance (MR) plaque imaging offers naturally superior soft tissue contrasts to computed tomography (CT) and ultrasonography, and combining different contrast weightings may provide more useful information. Radiation freeness and operator independence are two additional benefits of M RI. However, other than preliminary research on MR texture analysis of basilar artery plaque, there is currently no information addressing MR radiomics on the carotid plaque. MethodsFor the automatic segmentation of MRI scans to detect carotid plaque for stroke risk assessment, there is a need for a computer-aided autonomous framework to classify MRI scans automatically. We used to detect carotid plaque from MRI scans for stroke risk assessment pre-trained models, fine-tuned them, and adjusted hyperparameters according to our problem. ResultsOur trained YOLO V3 model achieved 94.81% accuracy, RCNN achieved 92.53% accuracy, and MobileNet achieved 90.23% in identifying carotid plaque from MRI scans for stroke risk assessment. Our approach will prevent incorrect diagnoses brought on by poor image quality and personal experience. ConclusionThe evaluations in this work have demonstrated that this methodology produces acceptable results for classifying magnetic resonance imaging (MRI) data.
引用
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页数:8
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