胎盘分割的重新定义:磁共振成像和超声成像的深度学习集成综述。

IF 3.2 4区 计算机科学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Asmaa Jittou, Khalid El Fazazy, Jamal Riffi
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引用次数: 0

摘要

胎盘分割是产前成像应用定量分析的关键。然而,由于胎儿位置、动态胎盘发育和图像质量的变化,使用磁共振成像(MRI)和超声分割胎盘是具有挑战性的。大多数分割方法用不同的形状和强度定义感兴趣的区域,包括整个胎盘或特定结构。最近,深度学习已经成为跨不同数据集提供高分割性能的关键方法。本文重点介绍了医学成像中胎盘分割的深度学习技术的最新进展,特别是MRI和超声模式,并涵盖了2019年至2024年的研究。这篇综述综合了最近的研究,扩大了这一创新领域的知识,并强调了深度学习方法在显著增强产前诊断方面的潜力。这些发现强调了选择合适的成像方式和适合特定临床情况的模型架构的重要性。此外,融合MRI和超声可以利用互补信息增强分割性能。本综述还讨论了与高成本和先进成像技术有限可用性相关的挑战。它提供了对胎盘分割技术现状及其对改善孕产妇和胎儿健康结果的影响的见解,强调了深度学习对产前诊断的变革性影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Placenta segmentation redefined: review of deep learning integration of magnetic resonance imaging and ultrasound imaging.

Placental segmentation is critical for the quantitative analysis of prenatal imaging applications. However, segmenting the placenta using magnetic resonance imaging (MRI) and ultrasound is challenging because of variations in fetal position, dynamic placental development, and image quality. Most segmentation methods define regions of interest with different shapes and intensities, encompassing the entire placenta or specific structures. Recently, deep learning has emerged as a key approach that offer high segmentation performance across diverse datasets. This review focuses on the recent advances in deep learning techniques for placental segmentation in medical imaging, specifically MRI and ultrasound modalities, and cover studies from 2019 to 2024. This review synthesizes recent research, expand knowledge in this innovative area, and highlight the potential of deep learning approaches to significantly enhance prenatal diagnostics. These findings emphasize the importance of selecting appropriate imaging modalities and model architectures tailored to specific clinical scenarios. In addition, integrating both MRI and ultrasound can enhance segmentation performance by leveraging complementary information. This review also discusses the challenges associated with the high costs and limited availability of advanced imaging technologies. It provides insights into the current state of placental segmentation techniques and their implications for improving maternal and fetal health outcomes, underscoring the transformative impact of deep learning on prenatal diagnostics.

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