The ResNet-50 deep learning model improved automated stroke risk stratification using carotid plaque ultrasound imaging by 9.7% compared to conventional machine learning, achieving an AUC of 0.982.
Cohort (n=666)
No
Does a deep learning model (ResNet-50) improve stroke risk prediction from carotid plaque ultrasound images compared to conventional machine learning models in patients with carotid plaques?
A deep learning model (ResNet-50) using carotid ultrasound images significantly outperforms traditional machine learning models in predicting stroke risk in patients with carotid plaques.
Absolute Event Rate: 0.982% vs 0.885%
p-value: p=<0.05
Background Carotid ultrasound is widely utilized for early risk screening of ischemic stroke. However, the accuracy and reproducibility of assessing plaque vulnerability-related features remain constrained by physicians’ subjective interpretation, underscoring an urgent need to achieve precise and objective assessment of these features through intelligent quantification. Objective This study aims to develop and compare deep learning (DL) and conventional machine learning (ML) models based on carotid plaque ultrasound images, so as to identify the optimal clinically applicable algorithm for precise plaque assessment and risk prediction. Methods In this retrospective cohort study, 666 patient’s carotid plaque ultrasound images (299 stroke patients; 367 non-stroke controls) collected between 2021 and 2025 were analyzed. Five convolutional neural networks (CNNs, e.g., ResNet-50) and two conventional machine learning (ML) classifiers support vector machine (SVM), logistic regression (LR) were trained on region-of-interest annotated plaque images using an 8:2 training-to-validation split. The area under the receiver operating characteristic curve (AUC) served as the primary performance metric, supplemented by accuracy, sensitivity, and specificity as secondary evaluation indices. The stroke risk prediction efficacy of the optimal DL model was subsequently compared with that of the ML models. Results Among five DL models evaluated, ResNet-50 demonstrated optimal diagnostic performance for stroke risk stratification in carotid plaque patients, achieving an AUC of 0.982 (accuracy: 0.925, sensitivity: 0.964, specificity: 0.897) on the independent test set. For traditional ML models, LR marginally outperformed SVM (AUC: 0.885 vs. 0.861), though without statistical significance (DeLong test: z = 0.591, p = 0.554). Critically, the best-performing DL model (ResNet-50) exhibited a 9.7% improvement in AUC over the top ML model (0.982 vs. 0.885), with consistently superior accuracy, sensitivity, and specificity across all metrics. Conclusion This study validates the superiority of the ultrasound image-based lightweight deep learning model (ResNet-50) in predicting stroke risk in patients with carotid plaques, making it a preferred clinical diagnostic tool.
Gao et al. (Tue,) conducted a cohort in Carotid atherosclerotic plaque (n=666). Deep learning model (ResNet-50) vs. Traditional machine learning model (Logistic Regression) was evaluated on Area under the receiver operating characteristic curve (AUC) for stroke risk prediction (95% CI 0.966-0.998, p=<0.05). The ResNet-50 deep learning model improved automated stroke risk stratification using carotid plaque ultrasound imaging by 9.7% compared to conventional machine learning, achieving an AUC of 0.982.
Synapse has enriched 5 closely related papers on similar clinical questions. Consider them for comparative context: