Akhondi-Asl Alireza, Hoyte Lennox, Lockhart Mark E, Warfield Simon K
IEEE Trans Med Imaging. 2014 Oct;33(10):1997-2009. doi: 10.1109/TMI.2014.2329603. Epub 2014 Jun 12.
Pelvic floor dysfunction is common in women after childbirth and precise segmentation of magnetic resonance images (MRI) of the pelvic floor may facilitate diagnosis and treatment of patients. However, because of the complexity of its structures, manual segmentation of the pelvic floor is challenging and suffers from high inter and intra-rater variability of expert raters. Multiple template fusion algorithms are promising segmentation techniques for these types of applications, but they have been limited by imperfections in the alignment of templates to the target, and by template segmentation errors. A number of algorithms sought to improve segmentation performance by combining image intensities and template labels as two independent sources of information, carrying out fusion through local intensity weighted voting schemes. This class of approach is a form of linear opinion pooling, and achieves unsatisfactory performance for this application. We hypothesized that better decision fusion could be achieved by assessing the contribution of each template in comparison to a reference standard segmentation of the target image and developed a novel segmentation algorithm to enable automatic segmentation of MRI of the female pelvic floor. The algorithm achieves high performance by estimating and compensating for both imperfect registration of the templates to the target image and template segmentation inaccuracies. A local image similarity measure is used to infer a local reliability weight, which contributes to the fusion through a novel logarithmic opinion pooling. We evaluated our new algorithm in comparison to nine state-of-the-art segmentation methods and demonstrated our algorithm achieves the highest performance.
盆底功能障碍在产后女性中很常见,盆底磁共振成像(MRI)的精确分割有助于患者的诊断和治疗。然而,由于其结构复杂,盆底的手动分割具有挑战性,并且专家评分者之间和评分者内部的变异性很高。多种模板融合算法是这类应用中很有前景的分割技术,但它们受到模板与目标对齐不完善以及模板分割误差的限制。一些算法试图通过将图像强度和模板标签作为两个独立的信息源进行组合,并通过局部强度加权投票方案进行融合,来提高分割性能。这类方法是线性意见汇总的一种形式,在该应用中性能并不理想。我们假设,通过评估每个模板相对于目标图像的参考标准分割的贡献,可以实现更好的决策融合,并开发了一种新颖的分割算法,以实现女性盆底MRI的自动分割。该算法通过估计和补偿模板与目标图像的不完全配准以及模板分割不准确之处,实现了高性能。使用局部图像相似性度量来推断局部可靠性权重,该权重通过一种新颖的对数意见汇总对融合做出贡献。我们将我们的新算法与九种最先进的分割方法进行了比较评估,结果表明我们的算法具有最高的性能。