Deep Learning strategies for Ultrasound in Pregnancy.

P. H. B. Diniz, Yi Yin, S. Collins
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引用次数: 13

Abstract

Ultrasound is one of the most ubiquitous imaging modalities in clinical practice. It is cheap, does not require ionizing radiation and can be performed at the bedside, making it the most commonly utilized imaging technique in pregnancy. Despite these advantages, it does have some drawbacks such as relatively low imaging quality, low contrast, and high variability. With these constraints, automating the interpretation of ultrasound images is challenging. However, successful automated identification of structures within 3D ultrasound volumes has the potential to revolutionize clinical practice. For example, a small placental volume in the first trimester has been shown to be correlated to adverse outcome later in pregnancy. If the placenta could be segmented reliably and automatically from a static 3D ultrasound volume, it would facilitate the use of its estimated volume, and other morphological metrics, as part of a screening test for increased risk of pregnancy complications potentially improving clinical outcomes. Recently, deep learning has emerged, achieving state-of-the-art performance in various research fields, notably medical image analysis involving classification, segmentation, object detection, and tracking tasks. Due to its increased performance with large datasets, it has gained great interest in medical imaging applications. In this review, we present an overview of deep learning methods applied to ultrasound in pregnancy, introducing their architectures and analyzing their strategies. We then present some common problems and provide some perspectives into potential future research.
妊娠超声的深度学习策略。
超声是临床实践中最普遍的成像方式之一。它便宜,不需要电离辐射,可以在床边进行,使其成为孕期最常用的成像技术。尽管有这些优点,但它也有一些缺点,如成像质量相对较低、对比度低和可变性大。由于这些限制,自动化超声图像的解释是具有挑战性的。然而,在三维超声体积内成功的结构自动识别有可能彻底改变临床实践。例如,孕早期胎盘体积小已被证明与妊娠后期的不良后果有关。如果胎盘能够从静态3D超声体积中可靠、自动地分割出来,它将有助于使用其估计体积和其他形态学指标,作为妊娠并发症风险增加的筛查试验的一部分,可能会改善临床结果。最近,深度学习已经出现,在各个研究领域取得了最先进的性能,特别是涉及分类、分割、目标检测和跟踪任务的医学图像分析。由于其在大数据集上的性能提高,它在医学成像应用中获得了极大的兴趣。在这篇综述中,我们概述了深度学习方法在妊娠超声中的应用,介绍了它们的结构并分析了它们的策略。然后,我们提出了一些常见的问题,并为潜在的未来研究提供了一些观点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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