Automated Quality Assessment of Medical Images in Echocardiography Using Neural Networks with Adaptive Ranking and Structure-Aware Learning.

International journal of neural systems Pub Date : 2024-10-01 Epub Date: 2024-07-10 DOI:10.1142/S0129065724500540
Gadeng Luosang, Zhihua Wang, Jian Liu, Fanxin Zeng, Zhang Yi, Jianyong Wang
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Abstract

The quality of medical images is crucial for accurately diagnosing and treating various diseases. However, current automated methods for assessing image quality are based on neural networks, which often focus solely on pixel distortion and overlook the significance of complex structures within the images. This study introduces a novel neural network model designed explicitly for automated image quality assessment that addresses pixel and semantic distortion. The model introduces an adaptive ranking mechanism enhanced with contrast sensitivity weighting to refine the detection of minor variances in similar images for pixel distortion assessment. More significantly, the model integrates a structure-aware learning module employing graph neural networks. This module is adept at deciphering the intricate relationships between an image's semantic structure and quality. When evaluated on two ultrasound imaging datasets, the proposed method outshines existing leading models in performance. Additionally, it boasts seamless integration into clinical workflows, enabling real-time image quality assessment, crucial for precise disease diagnosis and treatment.

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利用具有自适应排序和结构感知学习功能的神经网络自动评估超声心动图医学影像的质量
医学图像的质量对于准确诊断和治疗各种疾病至关重要。然而,目前评估图像质量的自动方法都是基于神经网络,这些方法往往只关注像素失真,而忽略了图像中复杂结构的重要性。本研究介绍了一种新的神经网络模型,该模型专门为自动图像质量评估而设计,可解决像素和语义失真问题。该模型引入了一种自适应排序机制,通过对比度灵敏度加权来完善相似图像中微小差异的检测,从而进行像素失真评估。更重要的是,该模型集成了一个采用图神经网络的结构感知学习模块。该模块善于解读图像语义结构与质量之间错综复杂的关系。在两个超声成像数据集上进行评估时,所提出的方法在性能上超越了现有的领先模型。此外,它还能无缝集成到临床工作流程中,实现实时图像质量评估,这对精确诊断和治疗疾病至关重要。
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