McConnell Brain Imaging Center, Montreal Neurological Institute, McGill University, Montreal, Canada.
Med Image Anal. 2013 Jan;17(1):1-18. doi: 10.1016/j.media.2012.09.004. Epub 2012 Sep 29.
Magnetic resonance (MR) imaging is often used to characterize and quantify multiple sclerosis (MS) lesions in the brain and spinal cord. The number and volume of lesions have been used to evaluate MS disease burden, to track the progression of the disease and to evaluate the effect of new pharmaceuticals in clinical trials. Accurate identification of MS lesions in MR images is extremely difficult due to variability in lesion location, size and shape in addition to anatomical variability between subjects. Since manual segmentation requires expert knowledge, is time consuming and is subject to intra- and inter-expert variability, many methods have been proposed to automatically segment lesions. The objective of this study was to carry out a systematic review of the literature to evaluate the state of the art in automated multiple sclerosis lesion segmentation. From 1240 hits found initially with PubMed and Google scholar, our selection criteria identified 80 papers that described an automatic lesion segmentation procedure applied to MS. Only 47 of these included quantitative validation with at least one realistic image. In this paper, we describe the complexity of lesion segmentation, classify the automatic MS lesion segmentation methods found, and review the validation methods applied in each of the papers reviewed. Although many segmentation solutions have been proposed, including some with promising results using MRI data obtained on small groups of patients, no single method is widely employed due to performance issues related to the high variability of MS lesion appearance and differences in image acquisition. The challenge remains to provide segmentation techniques that work in all cases regardless of the type of MS, duration of the disease, or MRI protocol, and this within a comprehensive, standardized validation framework. MS lesion segmentation remains an open problem.
磁共振成像(MR)常用于对脑和脊髓中的多发性硬化症(MS)病变进行特征描述和量化。病变的数量和体积被用于评估 MS 疾病负担,跟踪疾病进展,以及评估临床试验中新型药物的效果。由于病变位置、大小和形状的变化以及受试者之间的解剖结构差异,MR 图像中 MS 病变的准确识别极其困难。由于手动分割需要专业知识,耗时且容易受到专家内和专家间变异性的影响,因此已经提出了许多方法来自动分割病变。本研究的目的是对文献进行系统综述,以评估自动 MS 病变分割的最新技术。通过 PubMed 和 Google Scholar 最初发现的 1240 个命中,我们的选择标准确定了 80 篇描述了应用于 MS 的自动病变分割程序的论文。其中只有 47 篇论文包括至少使用一张真实图像进行的定量验证。在本文中,我们描述了病变分割的复杂性,对找到的自动 MS 病变分割方法进行分类,并回顾了每篇综述论文中应用的验证方法。尽管已经提出了许多分割解决方案,包括一些使用小样本组患者的 MRI 数据的结果很有前途的方法,但由于与 MS 病变外观高度变化和图像采集差异相关的性能问题,没有一种方法得到广泛应用。仍然存在的挑战是提供适用于所有情况的分割技术,无论 MS 的类型、疾病持续时间或 MRI 方案如何,并且要在一个全面的标准化验证框架内实现这一点。MS 病变分割仍然是一个未解决的问题。