MIRALab, University of Geneva, Battelle, Building A, 7 rte de Drize, 1227 Carouge, Switzerland.
Int J Comput Assist Radiol Surg. 2011 Jan;6(1):47-57. doi: 10.1007/s11548-010-0474-z. Epub 2010 May 13.
Professional ballet dancers are subject to constant extreme motion which is known to be at the origin of many articular disorders. To analyze their extreme motion, we exploit a unique magnetic resonance imaging (MRI) protocol, denoted as 'dual-posture' MRI, which scans the subject in both the normal (supine) and extreme (split) postures. However, due to inhomogeneous tissue intensities and image artifacts in these scans, coupled with unique acquisition protocol (split posture), segmentation of these scans is difficult. We present a novel algorithm that exploits the correlation between scans (bone shape invariance, appearance similarity) in automatically segmenting the dancer MRI images.
While validated segmentation algorithms are available for standard supine MRI, these algorithms cannot be applied to the split scan which exhibits a unique posture and strong inter-subject variations. In this study, the supine MRI is segmented with a deformable models method. The appearance and shape of the segmented supine models are then re-used to segment the split MRI of the same subject. Models are first registered to the split image using a novel constrained global optimization, before being refined with the deformable models technique.
Experiments with 10 dual-posture MRI datasets in the segmentation of left and right femur bones reported accurate and robust results (mean distance error: 1.39 ± 0.31 mm).
The use of segmented models from the supine posture to assist the split posture segmentation was found to be equally accurate and consistent to supine results. Our results suggest that dual-posture MRI can be efficiently and robustly segmented.
专业芭蕾舞演员经常进行极端运动,这会导致许多关节疾病。为了分析他们的极端运动,我们利用一种独特的磁共振成像(MRI)协议,称为“双姿势”MRI,它可以在正常(仰卧)和极端(分裂)姿势下对受试者进行扫描。然而,由于这些扫描中的组织强度不均匀和图像伪影,再加上独特的采集协议(分裂姿势),这些扫描的分割很困难。我们提出了一种新的算法,利用扫描之间的相关性(骨骼形状不变性、外观相似性)来自动分割舞者的 MRI 图像。
虽然有用于标准仰卧 MRI 的验证分割算法,但这些算法不能应用于分裂扫描,因为分裂扫描具有独特的姿势和强烈的个体间变化。在这项研究中,仰卧 MRI 是使用可变形模型方法进行分割的。然后,将分割的仰卧模型的外观和形状重新用于分割同一受试者的分裂 MRI。模型首先使用新的约束全局优化方法注册到分裂图像,然后使用可变形模型技术进行细化。
在 10 个左右双姿势 MRI 数据集的左侧和右侧股骨分割实验中,报告了准确和稳健的结果(平均距离误差:1.39 ± 0.31 毫米)。
使用仰卧姿势的分割模型来辅助分裂姿势的分割被发现与仰卧结果同样准确和一致。我们的结果表明,双姿势 MRI 可以高效且稳健地分割。