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M³ 脊柱图像的回归分割。

Regression Segmentation for M³ Spinal Images.

出版信息

IEEE Trans Med Imaging. 2015 Aug;34(8):1640-8. doi: 10.1109/TMI.2014.2365746. Epub 2014 Oct 29.

DOI:10.1109/TMI.2014.2365746
PMID:25361503
Abstract

Clinical routine often requires to analyze spinal images of multiple anatomic structures in multiple anatomic planes from multiple imaging modalities (M(3)). Unfortunately, existing methods for segmenting spinal images are still limited to one specific structure, in one specific plane or from one specific modality (S(3)). In this paper, we propose a novel approach, Regression Segmentation, that is for the first time able to segment M(3) spinal images in one single unified framework. This approach formulates the segmentation task innovatively as a boundary regression problem: modeling a highly nonlinear mapping function from substantially diverse M(3) images directly to desired object boundaries. Leveraging the advancement of sparse kernel machines, regression segmentation is fulfilled by a multi-dimensional support vector regressor (MSVR) which operates in an implicit, high dimensional feature space where M(3) diversity and specificity can be systematically categorized, extracted, and handled. The proposed regression segmentation approach was thoroughly tested on images from 113 clinical subjects including both disc and vertebral structures, in both sagittal and axial planes, and from both MRI and CT modalities. The overall result reaches a high dice similarity index (DSI) 0.912 and a low boundary distance (BD) 0.928 mm. With our unified and expendable framework, an efficient clinical tool for M(3) spinal image segmentation can be easily achieved, and will substantially benefit the diagnosis and treatment of spinal diseases.

摘要

临床常规经常需要分析来自多种成像模式(M(3))的多个解剖结构的多个解剖平面的脊柱图像。不幸的是,现有的脊柱图像分割方法仍然仅限于一个特定的结构,一个特定的平面或一种特定的模式(S(3))。在本文中,我们提出了一种新的方法,回归分割,它首次能够在一个单一的统一框架中分割 M(3)脊柱图像。该方法创新性地将分割任务表述为边界回归问题:直接从大量不同的 M(3)图像建模到期望目标边界的高度非线性映射函数。利用稀疏核机器的进步,回归分割通过多维支持向量回归器(MSVR)来完成,该回归器在隐式的高维特征空间中运行,在该空间中可以系统地分类、提取和处理 M(3)多样性和特异性。所提出的回归分割方法在来自 113 个临床受试者的图像上进行了全面测试,包括椎间盘和椎体结构,在矢状面和轴面,以及 MRI 和 CT 模式。总体结果达到了较高的骰子相似性指数(DSI)0.912 和较低的边界距离(BD)0.928 毫米。通过我们的统一和可扩展的框架,可以轻松实现用于 M(3)脊柱图像分割的高效临床工具,这将大大有益于脊柱疾病的诊断和治疗。

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