Deep Learning-Based Artificial Intelligence Model for Automatic Carotid Plaque Identification
10.12455/j.issn.1671-7104.240009
- VernacularTitle:基于深度学习的人工智能模型自动识别颈动脉斑块
- Author:
Lan HE
1
;
E SHEN
;
Zekun YANG
;
Ying ZHANG
;
Yudong WANG
;
Weidao CHEN
;
Yitong WANG
;
Yongming HE
Author Information
1. 上海市胸科医院/上海交通大学医学院附属胸科医院超声科,上海市,200030
- Keywords:
single-input BCNN-ResNet network model;
carotid ultrasound;
deep learning
- From:
Chinese Journal of Medical Instrumentation
2024;48(4):361-366
- CountryChina
- Language:Chinese
-
Abstract:
This study aims at developing a dataset for determining the presence of carotid artery plaques in ultrasound images,composed of 1761 ultrasound images from 1165 participants.A deep learning architecture that combines bilinear convolutional neural networks with residual neural networks,known as the single-input BCNN-ResNet model,was utilized to aid clinical doctors in diagnosing plaques using carotid ultrasound images.Following training,internal validation,and external validation,the model yielded an ROC AUC of 0.99(95%confidence interval:0.91 to 0.84)in internal validation and 0.95(95%confidence interval:0.96 to 0.94)in external validation,surpassing the ResNet-34 network model,which achieved an AUC of 0.98(95%confidence interval:0.99 to 0.95)in internal validation and 0.94(95%confidence interval:0.95 to 0.92)in external validation.Consequently,the single-input BCNN-ResNet network model has shown remarkable diagnostic capabilities and offers an innovative solution for the automatic detection of carotid artery plaques.