# DualDistill: a dual-guided self-distillation approach for carotid plaque analysis

**Authors:** Xiaoman Zhang, Jiang Xie, Haibing Chen, Haiya Wang

PMC · DOI: 10.3389/fmed.2025.1554578 · Frontiers in Medicine · 2025-05-15

## TL;DR

DualDistill is a new self-distillation framework that improves accuracy in classifying carotid plaques from ultrasound videos, helping assess cardiovascular disease risk.

## Contribution

DualDistill introduces a dual-guided self-distillation framework with novel intra-frame and spatial-temporal attention strategies for better carotid plaque classification.

## Key findings

- DualDistill achieved an average accuracy improvement of 2.97% across 13 models.
- The maximum accuracy improvement reached 4.74% on 3D ResNet50.
- The framework effectively reduces overfitting and improves generalization in limited datasets.

## Abstract

Accurate classification of carotid plaques is critical to assessing the risk of cardiovascular disease. However, this task remains challenging due to several factors: temporal discontinuity caused by probe motion, the small size of plaques combined with interference from surrounding tissue, and the limited availability of annotated data, which often leads to overfitting in deep learning models. To address these challenges, this study introduces a structured self-distillation framework, named DualDistill, designed to improve classification accuracy and generalization performance in analyzing ultrasound videos of carotid plaques. DualDistill incorporates two novel strategies to address the identified challenges. First, an intra-frame relationship-guided strategy is proposed to capture long-term temporal dependencies, effectively addressing temporal discontinuity. Second, a spatial-temporal attention-guided strategy is developed to reduce the impact of irrelevant features and noise by emphasizing relevant regions within both spatial and temporal dimensions. These strategies jointly act as supervisory signals within the self-distillation process, guiding the student layers to better align with the critical features identified by the teacher layers. Besides, the self-distillation process acts as an implicit regularization mechanism, which decreases overfitting in limited datasets. DualDistill is designed as a plug-and-play framework, enabling seamless integration with various existing models. Extensive experiments were conducted on 317 carotid plaque ultrasound videos collected from a collaborating hospital. The proposed framework demonstrated its versatility and effectiveness. It achieved consistent improvements in classification accuracy across 13 representative models. Specifically, the average accuracy improvement is 2.97%, with the maximum improvement reaching 4.74% on 3D ResNet50. These results highlight the robustness and generalizability of DualDistill. It shows strong potential for reliable cardiovascular risk assessment through automated carotid plaque classification.

## Linked entities

- **Diseases:** cardiovascular disease (MONDO:0004995)

## Full-text entities

- **Diseases:** cardiovascular disease (MESH:D002318), carotid plaques (MESH:D016893)

## Full text

_Full body text omitted from this summary view._ Fetch the complete paper as Markdown: https://tomesphere.com/paper/PMC12119313/full.md

## Figures

7 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12119313/full.md

## References

28 references — full list in the complete paper: https://tomesphere.com/paper/PMC12119313/full.md

---
Source: https://tomesphere.com/paper/PMC12119313