基于ICP的新生儿脑MRI归一化方法

Kento Morita, Syoji Kobashi, Yuki Wakata, K. Ando, R. Ishikura, N. Kamiura
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引用次数: 0

摘要

磁共振(MR)图像被广泛用于诊断脑部疾病。这些疾病可能使大脑形状变形,不同类型疾病的变形区域不同。为了评估大脑的形状变形,使用了磁共振图像配准(IR)。虽然有一些脑磁共振图像的红外方法,但它们主要是基于磁共振信号的似然方法。由于成人脑的MR信号分布和脑形态存在较大差异,我们不能直接将成人脑的方法应用于新生儿脑。针对新生儿脑磁共振图像,提出了一种基于脑沟分布指数(SDI)特征的Hessian矩阵脑沟提取方法。SDI由脑表面的MR信号计算得到。然后,利用提取的脑沟,提出了一种基于迭代最近点(ICP)的脑形状配准方法。由于该方法评估了脑沟分布的对应性,因此对难以准确描绘大脑表面的新生儿大脑是有效的。结果表明,该方法在7例3周龄~ 2岁的新生儿中成功地实现了脑与脑的匹配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ICP based neonatal brain MRI normalization method
Magnetic resonance (MR) images are widely used to diagnose cerebral diseases. The diseases may deform the brain shape, and the deformed region differs among types of diseases. To evaluate the brain shape deformation, MR image registration (IR) has been used. There are some IR methods for brain MR images but they mainly use MR signal based likelihood. We cannot directly apply methods for adult brain to neonatal brain because there are large differences in MR signal distribution and brain shape. This paper focuses on neonatal brain MR images, and introduces a sulcus extraction method using Hessian matrix based on a feature called sulcal-distribution index (SDI). SDI is calculated from MR signal on the cerebral surface. Next, this paper proposes an iterative closest point (ICP) based brain shape registration method using the extracted sulci. The proposed method will be effective for neonatal brain in which the accurate delineation of cerebral surface is difficult because the method evaluates the correspondence of cerebral sulci distribution. Results in seven neonates (modified age was between 3 weeks and 2 years) showed that the method registered one brain with the other brain successfully.
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