增强乳腺 X 射线摄影:全面回顾提高图像质量的计算机方法。

IF 5 Q1 ENGINEERING, BIOMEDICAL
Joana Cristo Santos, Miriam Seoane Santos, Pedro Henriques Abreu
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引用次数: 0

摘要

乳房x线摄影成像仍然是乳腺癌检测和诊断的金标准,但图像质量的挑战可能导致误诊,增加辐射暴露和更高的医疗保健费用。这篇全面的综述评估了传统和基于机器学习的技术,以提高乳房x光检查图像质量,旨在使临床医生受益并提高诊断准确性。我们从2015年到2024年的文献检索中发现了115篇关于对比度增强和降噪方法的文章,包括直方图均衡化、滤波、非锐利掩蔽、模糊逻辑、基于变换的技术和先进的机器学习方法。机器学习,特别是集成去噪自动编码器和卷积神经网络的架构,在不影响细节的情况下提高图像质量方面非常有效。讨论强调了这些技术在提高乳房x线摄影图像视觉质量方面的成功。然而,诸如高噪声比、不一致的评估指标和有限的开源数据集等挑战仍然存在。解决这些问题为进一步推进乳房x光图像增强方法的未来研究提供了机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing mammography: a comprehensive review of computer methods for improving image quality.

Mammography imaging remains the gold standard for breast cancer detection and diagnosis, but challenges in image quality can lead to misdiagnosis, increased radiation exposure, and higher healthcare costs. This comprehensive review evaluates traditional and machine learning-based techniques for improving mammography image quality, aiming to benefit clinicians and enhance diagnostic accuracy. Our literature search, spanning 2015 - 2024, identified 115 articles focusing on contrast enhancement and noise reduction methods, including histogram equalization, filtering, unsharp masking, fuzzy logic, transform-based techniques, and advanced machine learning approaches. Machine learning, particularly architectures integrating denoising autoencoders with convolutional neural networks, emerged as highly effective in enhancing image quality without compromising detail. The discussion highlights the success of these techniques in improving mammography images' visual quality. However, challenges such as high noise ratios, inconsistent evaluation metrics, and limited open-source datasets persist. Addressing these issues offers opportunities for future research to further advance mammography image enhancement methodologies.

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