Cortical enhanced tissue segmentation of neonatal brain MR images acquired by a dedicated phased array coil

F. Shi, P. Yap, Yong Fan, Jie-Zhi Cheng, L. Wald, G. Gerig, Weili Lin, D. Shen
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引用次数: 4

Abstract

The acquisition of high quality MR images of neonatal brains is largely hampered by their characteristically small head size and low tissue contrast. As a result, subsequent image processing and analysis, especially for brain tissue segmentation, are often hindered. To overcome this problem, a dedicated phased array neonatal head coil is utilized to improve MR image quality by effectively combing images obtained from 8 coil elements without lengthening data acquisition time. In addition, a subject-specific atlas based tissue segmentation algorithm is specifically developed for the delineation of fine structures in the acquired neonatal brain MR images. The proposed tissue segmentation method first enhances the sheet-like cortical gray matter (GM) structures in neonatal images with a Hessian filter for generation of cortical GM prior. Then, the prior is combined with our neonatal population atlas to form a cortical enhanced hybrid atlas, which we refer to as the subject-specific atlas. Various experiments are conducted to compare the proposed method with manual segmentation results, as well as with additional two population atlas based segmentation methods. Results show that the proposed method is capable of segmenting the neonatal brain with the highest accuracy, compared to other two methods.
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由专用相控阵线圈获得的新生儿脑MR图像的皮质增强组织分割
新生儿脑部的高质量磁共振图像的获取在很大程度上受到其特征性的小头部尺寸和低组织对比度的阻碍。因此,后续的图像处理和分析,特别是脑组织分割,往往受到阻碍。为了克服这一问题,利用专用的相控阵新生儿头部线圈,在不延长数据采集时间的情况下,有效地将8个线圈单元获得的图像进行组合,从而提高MR图像质量。此外,我们还开发了一种基于主题特异性图谱的组织分割算法,用于描绘获得性新生儿脑MR图像中的精细结构。提出的组织分割方法首先利用Hessian滤波器对新生儿图像中的片状皮质灰质(GM)结构进行增强。然后,先验与我们的新生儿种群图谱相结合,形成皮质增强杂交图谱,我们称之为主题特异性图谱。进行了各种实验,将该方法与人工分割结果以及另外两种基于种群图谱的分割方法进行了比较。结果表明,与其他两种方法相比,该方法能够以最高的准确率对新生儿大脑进行分割。
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