使用标签抗噪声模型的对比增强超声钝性肝损伤鲁棒自动分级。

Tianci Zhang, Rui Li, Zhaoming Zhong, Xuan Zhang, Tuo Liu, Guang-Quan Zhou, Faqin Lv
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引用次数: 0

摘要

最近,对比增强超声(CEUS)在诊断肝损伤方面显示出潜在的价值,肝损伤是钝性腹部创伤的主要死亡原因。然而,钝性肝损伤在超声造影图像中固有的斑点噪声和复杂的视觉特征使得诊断高度依赖放射科医生的专业知识,主观且耗时。此外,观察者内部和观察者之间的差异不可避免地影响超声造影诊断的准确性。在这项研究中,我们提出了一个标签-抗噪声cnn -变压器混合架构(LNRHA)用于CUES肝损伤分类。首先,开发了基于cnn -Transformer的自上下文双变压器(SCDT)模块,该模块是一个共享特征编码器,然后是基于Transformer的双视角模块,从邻居上下文和自关注的角度感知创伤病变的语义。此外,为了减轻由于观察者内部和观察者之间方差引起的注释噪声,我们设计了一个基于置信度的标签过滤器(CLF)模块,以区分基于SCDT集成的潜在标签噪声数据。利用新设计的损失函数对检测到的噪声数据的不确定性进行逐步惩罚,在充分利用所有数据的同时避免了对误导信息的过拟合,从而提高了分类性能。在内部肝外伤CEUS数据集上的大量实验结果表明,我们的网络架构可以取得良好的性能。值得注意的是,我们的LNRHA方法在标签噪声数据上的实验结果也优于大多数最先进的分类方法,表明其在诊断肝损伤方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Automatic Grading of Blunt Liver Trauma in Contrast-Enhanced Ultrasound Using Label-Noise-Resistant Models.

Recently, contrast-enhanced ultrasound (CEUS) has presented a potential value in the diagnosis of liver trauma, the leading cause of death in blunt abdominal trauma. However, the inherent speckle noise and the complicated visual characteristics of blunt liver trauma in CEUS images make the diagnosis highly dependent on the expertise of radiologists, which is subjective and time-consuming. Moreover, the intra- and inter-observer variance inevitably influences the accuracy of diagnosis using CEUS. In this study, we propose a Label-Noisy-Resistant CNN-Transformer Hybrid Architecture (LNRHA) for CUES liver trauma classification. Firstly, a CNN-Transformer-based Self-Contextual Dual Transformer (SCDT) module, a shared feature encoder followed by the dual-perspective Transformer-based modules, is developed to perceive the semantics of trauma lesions from neighbor-contextual and self-attention perspectives. Moreover, to mitigate the annotation noise due to intra- and inter-observer variance, we design a Confidence-Based Label Filter (CLF) module to distinguish potential label noise data based on the ensemble of the SCDT. The uncertainty of the detected noisy data is gradually penalized using a newly designed loss function, making full use of all the data while avoiding overfitting to misleading information, thus improving the classification performance. Extensive experimental results on an in-house liver trauma CEUS dataset show that our network architecture can achieve promising performance. Significantly, the experimental results of our LNRHA method on label noise data also outperform most state-of-the-art classification methods, suggesting its effectiveness in diagnosing liver trauma.

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