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Med-DGTN:用于多标签医学图像分类的具有自适应小波融合的动态图变换器

Med-DGTN: Dynamic Graph Transformer with Adaptive Wavelet Fusion for multi-label medical image classification.

作者信息

Zhang Guanyu, Li Yan, Wang Tingting, Shi Guokun, Jin Li, Gu Zongyun

机构信息

School of Medical Information Engineering, Anhui University of Chinese Medicine, Hefei, China.

Department of Joint Surgery, Hefei First People's Hospital, Hefei, China.

出版信息

Front Med (Lausanne). 2025 Jul 24;12:1600736. doi: 10.3389/fmed.2025.1600736. eCollection 2025.

Abstract

INTRODUCTION

Multi-label classification of medical imaging data aims to enable simultaneous identification and diagnosis of multiple diseases, delivering comprehensive clinical decision support for complex conditions. Current methodologies demonstrate limitations in capturing disease co-occurrence patterns and preserving subtle pathological signatures. To address these challenges, we propose Med-DGTN, a dynamically integrated framework designed to advance multi-label classification performance in clinical imaging analytics.

METHODS

The proposed Med-DGTN (Dynamic Graph Transformer Network with Adaptive Wavelet Fusion) introduces three key innovations: (1) A cross-modal alignment mechanism integrating convolutional visual patterns with graph-based semantic dependencies through conditionally reweighted adjacency matrices; (2) Wavelet-transform-enhanced dense blocks (WTDense) employing multi-frequency decomposition to amplify low-frequency pathological biomarkers; (3) An adaptive fusion architecture optimizing multi-scale feature hierarchies across spatial and spectral domains.

RESULTS

Validated on two public medical imaging benchmarks, Med-DGTN demonstrates superior performance across modalities: (1) Achieving a mean average precision (mAP) of 70.65% on the retinal imaging dataset (MuReD2022), surpassing previous state-of-the-art methods by 2.68 percentage points. (2) On the chest X-ray dataset (ChestXray14), Med-DGTN achieves an average Area Under the Curve (AUC) of 0.841. It outperforms prior state-of-the-art methods in 5 of 14 disease categories.

DISCUSSION

This investigation establishes that joint modeling of dynamic disease correlations and wavelet-optimized feature representation significantly enhances multi-label diagnostic capabilities. Med-DGTN's architecture demonstrates clinical translatability by revealing disease interaction patterns through interpretable graph structures, potentially informing precision diagnostics in multi-morbidity scenarios.

摘要

引言

医学成像数据的多标签分类旨在实现多种疾病的同时识别和诊断,为复杂病情提供全面的临床决策支持。当前的方法在捕捉疾病共现模式和保留细微病理特征方面存在局限性。为应对这些挑战,我们提出了Med-DGTN,这是一个动态集成框架,旨在提高临床成像分析中的多标签分类性能。

方法

所提出的Med-DGTN(具有自适应小波融合的动态图变换器网络)引入了三项关键创新:(1)一种跨模态对齐机制,通过条件加权邻接矩阵将卷积视觉模式与基于图的语义依赖关系相结合;(2)小波变换增强密集块(WTDense),采用多频分解来放大低频病理生物标志物;(3)一种自适应融合架构,可优化跨空间和光谱域的多尺度特征层次结构。

结果

在两个公共医学成像基准上得到验证,Med-DGTN在各模态上均表现出卓越性能:(1)在视网膜成像数据集(MuReD2022)上实现了70.65%的平均精度均值(mAP),比之前的最先进方法高出2.68个百分点。(2)在胸部X光数据集(ChestXray14)上,Med-DGTN的平均曲线下面积(AUC)达到0.841。在14种疾病类别中的5种上优于先前的最先进方法。

讨论

本研究表明,动态疾病相关性和小波优化特征表示的联合建模显著增强了多标签诊断能力。Med-DGTN的架构通过可解释的图结构揭示疾病相互作用模式,展示了临床可翻译性,有可能为多病症场景中的精准诊断提供信息。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ff9b/12328407/a75caa57615a/fmed-12-1600736-g001.jpg

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