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利用体素强度与空间位置之间的不一致性从单一磁共振成像模态检测梗死病变——一种三维自动方法。

Detection of infarct lesions from single MRI modality using inconsistency between voxel intensity and spatial location--a 3-D automatic approach.

作者信息

Shen Shan, Szameitat André J, Sterr Annette

机构信息

Department of Psychology, University of Surrey, Guildford GU27XH, UK.

出版信息

IEEE Trans Inf Technol Biomed. 2008 Jul;12(4):532-40. doi: 10.1109/TITB.2007.911310.

DOI:10.1109/TITB.2007.911310
PMID:18632333
Abstract

Detection of infarct lesions using traditional segmentation methods is always problematic due to intensity similarity between lesions and normal tissues, so that multispectral MRI modalities were often employed for this purpose. However, the high costs of MRI scan and the severity of patient conditions restrict the collection of multiple images. Therefore, in this paper, a new 3-D automatic lesion detection approach was proposed, which required only a single type of anatomical MRI scan. It was developed on a theory that, when lesions were present, the voxel-intensity-based segmentation and the spatial-location-based tissue distribution should be inconsistent in the regions of lesions. The degree of this inconsistency was calculated, which indicated the likelihood of tissue abnormality. Lesions were identified when the inconsistency exceeded a defined threshold. In this approach, the intensity-based segmentation was implemented by the conventional fuzzy c-mean (FCM) algorithm, while the spatial location of tissues was provided by prior tissue probability maps. The use of simulated MRI lesions allowed us to quantitatively evaluate the performance of the proposed method, as the size and location of lesions were prespecified. The results showed that our method effectively detected lesions with 40-80% signal reduction compared to normal tissues (similarity index > 0.7). The capability of the proposed method in practice was also demonstrated on real infarct lesions from 15 stroke patients, where the lesions detected were in broad agreement with true lesions. Furthermore, a comparison to a statistical segmentation approach presented in the literature suggested that our 3-D lesion detection approach was more reliable. Future work will focus on adapting the current method to multiple sclerosis lesion detection.

摘要

使用传统分割方法检测梗死病变总是存在问题,因为病变与正常组织之间的强度相似,因此多光谱磁共振成像(MRI)模态常被用于此目的。然而,MRI扫描的高成本和患者病情的严重程度限制了多幅图像的采集。因此,本文提出了一种新的三维自动病变检测方法,该方法仅需要一种解剖学MRI扫描。它基于这样一种理论:当存在病变时,基于体素强度的分割和基于空间位置的组织分布在病变区域应该不一致。计算这种不一致的程度,其表明组织异常的可能性。当不一致超过定义的阈值时识别病变。在这种方法中,基于强度的分割由传统的模糊c均值(FCM)算法实现,而组织的空间位置由先验组织概率图提供。使用模拟的MRI病变使我们能够定量评估所提出方法的性能,因为病变的大小和位置是预先指定的。结果表明,我们的方法能够有效地检测出与正常组织相比信号降低40 - 80%的病变(相似性指数> 0.7)。所提出方法在实际中的能力也在15名中风患者的真实梗死病变上得到了证明,检测到的病变与真实病变大致相符。此外,与文献中提出的一种统计分割方法的比较表明,我们的三维病变检测方法更可靠。未来的工作将集中于使当前方法适用于多发性硬化症病变检测。

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