Deep learning-based carotid plaque vulnerability classification with multicentre contrast-enhanced ultrasound video: a comparative diagnostic study
Yanli Guo,
Hongxia Zhang,
Yang Guang,
Wen He,
Bin Ning,
Chen Yin,
Mingchang Zhao,
Fang Nie,
Pintong Huang,
Rui-Fang Zhang,
Qiang Yong,
Jianjun Yuan,
Yicheng Wang,
Lijun Yuan,
Litao Ruan,
Tengfei Yu,
Haiman Song,
Yukang Zhang
Affiliations
Yanli Guo
Department of Ultrasound, Third Military Medical University Southwest Hospital, Chongqing, China
Hongxia Zhang
Research Division, Joslin Diabetes Center, Boston, Massachusetts, USA
Yang Guang
Department of Ultrasound, Beijing Tiantan Hospital, Beijing, China
Wen He
Department of Ultrasound, Beijing Tiantan Hospital, Beijing, China
Bin Ning
Department of Ultrasound, Beijing Tiantan Hospital, Beijing, China
Chen Yin
1 Vanke School of Public Health, Tsinghua University, Beijing, China
Mingchang Zhao
Department of R&D, CHISON Medical Technologies Co Ltd, Wuxi, China
Fang Nie
School of Public Health, the Key Laboratory of Environmental Pollution Monitoring and Disease Control, Ministry of Education, Guizhou Medical University, Guiyang, Guizhou, China
Pintong Huang
Department of Ultrasound, Zhejiang University School of Medicine Second Affiliated Hospital, Hangzhou, Zhejiang, China
Rui-Fang Zhang
Department of Ultrasound, Zhengzhou University First Affiliated Hospital, Zhengzhou, Henan, China
Qiang Yong
Department of Ultrasound, Beijing An Zhen Hospital, Chaoyang-qu, Beijing, China
Jianjun Yuan
Department of Ultrasound, Henan Provincial People`s Hospital, Zhengzhou, Henan, China
Yicheng Wang
Department of Ultrasound, Hebei North University Basic Medical College, Zhangjiakou, Hebei, China
Lijun Yuan
Hospital of Chengdu University of Traditional Chinese Medicine, Chengdu, Sichuan, China
Litao Ruan
Department of Ultrasound, Xi`an Jiaotong University Medical College First Affiliated Hospital, Xi`an, Shaanxi, China
Tengfei Yu
Department of Ultrasound, Beijing Tiantan Hospital, Beijing, China
Haiman Song
Department of Ultrasound, Beijing Tiantan Hospital, Beijing, China
Yukang Zhang
Department of Ultrasound, Beijing Tiantan Hospital, Beijing, China
Objectives The aim of this study was to evaluate the performance of deep learning-based detection and classification of carotid plaque (DL-DCCP) in carotid plaque contrast-enhanced ultrasound (CEUS).Methods and analysis A prospective multicentre study was conducted to assess vulnerability in patients with carotid plaque. Data from 547 potentially eligible patients were prospectively enrolled from 10 hospitals, and 205 patients with CEUS video were finally enrolled for analysis. The area under the receiver operating characteristic curve (AUC) was used to evaluate the effectiveness of DL-DCCP and two experienced radiologists who manually examined the CEUS video (RA-CEUS) in diagnosing and classifying carotid plaque vulnerability. To evaluate the influence of dynamic video input on the performance of the algorithm, a state-of-the-art deep convolutional neural network (CNN) model for static images (Xception) was compared with DL-DCCP for both training and holdout validation cohorts.Results The AUCs of DL-DCCP were significantly better than those of the experienced radiologists for both the training and holdout validation cohorts (training, DL-DCCP vs RA-CEUS, AUC: 0.85 vs 0.69, p<0.01; holdout validation, DL-DCCP vs RA-CEUS, AUC: 0.87 vs 0.66, p<0.01), that is, also better than the best deep CNN model Xception we had performed, for both the training and holdout validation cohorts (training, DL-DCCP vs Xception, AUC:0.85 vs 0.82, p<0.01; holdout validation, DL-DCCP vs Xception, AUC: 0.87 vs 0.77, p<0.01).Conclusion DL-DCCP shows better overall performance in assessing the vulnerability of carotid atherosclerotic plaques than RA-CEUS. Moreover, with a more powerful network structure and better utilisation of video information, DL-DCCP provided greater diagnostic accuracy than a state-of-the-art static CNN model.Trial registration number ChiCTR1900021846,