BioMedical Engineering and Imaging Institute, Icahn School of Medicine at Mount Sinai, New York, New York, USA.
East River Medical Imaging, New York, New York, USA.
NMR Biomed. 2024 Aug;37(8):e5143. doi: 10.1002/nbm.5143. Epub 2024 Mar 24.
Magnetic resonance imaging (MRI) is a ubiquitous medical imaging technology with applications in disease diagnostics, intervention, and treatment planning. Accurate MRI segmentation is critical for diagnosing abnormalities, monitoring diseases, and deciding on a course of treatment. With the advent of advanced deep learning frameworks, fully automated and accurate MRI segmentation is advancing. Traditional supervised deep learning techniques have advanced tremendously, reaching clinical-level accuracy in the field of segmentation. However, these algorithms still require a large amount of annotated data, which is oftentimes unavailable or impractical. One way to circumvent this issue is to utilize algorithms that exploit a limited amount of labeled data. This paper aims to review such state-of-the-art algorithms that use a limited number of annotated samples. We explain the fundamental principles of self-supervised learning, generative models, few-shot learning, and semi-supervised learning and summarize their applications in cardiac, abdomen, and brain MRI segmentation. Throughout this review, we highlight algorithms that can be employed based on the quantity of annotated data available. We also present a comprehensive list of notable publicly available MRI segmentation datasets. To conclude, we discuss possible future directions of the field-including emerging algorithms, such as contrastive language-image pretraining, and potential combinations across the methods discussed-that can further increase the efficacy of image segmentation with limited labels.
磁共振成像(MRI)是一种普遍应用于疾病诊断、介入和治疗计划的医学成像技术。准确的 MRI 分割对于诊断异常、监测疾病和决定治疗方案至关重要。随着先进的深度学习框架的出现,全自动和准确的 MRI 分割正在取得进展。传统的监督深度学习技术已经取得了巨大的进步,在分割领域达到了临床水平的准确性。然而,这些算法仍然需要大量的标注数据,而这些数据往往不可用或不切实际。一种解决这个问题的方法是利用可以利用有限数量标记数据的算法。本文旨在回顾使用有限数量标注样本的最新算法。我们解释了自监督学习、生成模型、少样本学习和半监督学习的基本原理,并总结了它们在心脏、腹部和脑部 MRI 分割中的应用。在整个综述中,我们根据可用标注数据的数量重点介绍了可采用的算法。我们还提供了一个著名的可公开获取的 MRI 分割数据集的综合列表。最后,我们讨论了该领域可能的未来发展方向,包括新兴的算法,如对比语言图像预训练,以及讨论的方法之间的潜在组合,这些都可以在有限的标签下进一步提高图像分割的效果。