基于深度变分聚类的专家不可知超声图像质量评估

Deepak Raina, Dimitrios Ntentia, S. Chandrashekhara, R. Voyles, S. Saha
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引用次数: 0

摘要

超声成像是一种常用的诊断和治疗方法。然而,超声诊断在很大程度上依赖于超声医师手动评估的图像质量,这降低了诊断的客观性,使其依赖于操作员。基于监督学习的自动化质量评估方法需要人工注释的数据集,这是高度劳动密集型的。这些超声图像质量较低,并且由于观察者之间的感知变化而受到噪声注释的影响,从而影响了学习效率。我们提出了一个无监督超声图像质量评估网络,US2QNet,消除了人工注释的负担和不确定性。US2QNet使用嵌入预处理、聚类和后处理三个模块的变分自编码器,共同增强、提取、聚类和可视化超声图像的质量特征表示。预处理模块使用图像过滤将网络的注意力指向显著的质量特征,而不是被噪声分散注意力。提出了一种在二维空间中可视化特征表示簇的后处理方法。我们验证了所提出的膀胱超声图像质量评估框架。该框架的准确率达到78%,性能优于目前最先进的聚类方法。带有源代码的项目页面可在https://sites.google.com/view/US2QNet上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Expert-Agnostic Ultrasound Image Quality Assessment using Deep Variational Clustering
Ultrasound imaging is a commonly used modality for several diagnostic and therapeutic procedures. However, the diagnosis by ultrasound relies heavily on the quality of images assessed manually by sonographers, which diminishes the objectivity of the diagnosis and makes it operator-dependent. The supervised learning-based methods for automated quality assessment require manually annotated datasets, which are highly labour-intensive to acquire. These ultrasound images are low in quality and suffer from noisy annotations caused by inter-observer perceptual variations, which hampers learning efficiency. We propose an UnSupervised UltraSound image Quality assessment Network, US2QNet, that eliminates the burden and uncertainty of manual annotations. US2QNet uses the variational autoencoder embedded with the three modules, pre-processing, clustering and post-processing, to jointly enhance, extract, cluster and visualize the quality feature representation of ultrasound images. The pre-processing module uses filtering of images to point the network's attention towards salient quality features, rather than getting distracted by noise. Post-processing is proposed for visualizing the clusters of feature representations in 2D space. We validated the proposed framework for quality assessment of the urinary bladder ultrasound images. The proposed framework achieved 78% accuracy and superior performance to state-of-the-art clustering methods. The project page with source codes is available at https://sites.google.com/view/US2QNet.
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