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一种基于新型混合无图谱层级图的小波滤波器组对新生儿脑 MRI 的分割方法。

A novel hybrid atlas-free hierarchical graph-based segmentation of newborn brain MRI using wavelet filter banks.

机构信息

R. C. Patel Institute of Technology, Shirpur, India.

Shri Sant Gajanan Maharaj COE, Shegaon, India.

出版信息

Int J Neurosci. 2020 May;130(5):499-514. doi: 10.1080/00207454.2019.1695609. Epub 2019 Dec 1.

DOI:10.1080/00207454.2019.1695609
PMID:31790318
Abstract

: The newborn brain MRI (magnetic resonance imaging) tissue segmentation plays a vital part in assessment of primary brain growth. In the newborn stage (nearly less than 28 days old), in T1- as well as T2-weighted MR images similar levels of intensity are exhibited by WM and GM, makes segmentation of the tissue extremely challenging. In this newborn stage for tissue segmentation, very few methods are developed. Hence the development of accurate brain tissue segmentation of neonate is prime objective of this paper.: In this research work, we propose a novel hybrid atlas-free hierarchical graph-based tissue segmentation method for newborn infants. Wavelet filter banks are a class of deep models wherein filters and local neighborhood processes are used alternately for efficient segmentation on the raw input images, and fuzzy-based SVM (support vector machine) is used for precise tissue classification.: Specifically, from T1, T2 images multimodality information are used as inputs and then as outputs the segmentation maps are generated. The proposed approach considerably outperforms preceding methods of tissue segmentation as reflected in results. With this approach, the newborn MRI images that are even suffered from noise, poor resolution or the low contrasted images are also segmented more effectively with precision of 90% and sensitivity 98%.: In addition, our findings indicate that the incorporation of multi-modality image led to significant improvements in performance. Thus, the proposed work effectively tackles the unreliability as well as the other issues faced with the prior methodologies with an interactive accurate segmentation outline.

摘要

: 新生儿脑 MRI(磁共振成像)组织分割在评估原发性脑生长中起着至关重要的作用。在新生儿期(不到 28 天),T1 加权和 T2 加权 MR 图像中 WM 和 GM 的强度水平相似,使得组织分割极具挑战性。在这个新生儿阶段,很少有方法可以用于组织分割。因此,准确地对新生儿进行脑组织分割是本文的主要目标。: 在这项研究工作中,我们提出了一种新颖的混合无图谱分层图基组织分割方法,用于新生儿。小波滤波器组是一类深度模型,其中滤波器和局部邻域过程被交替使用,以便在原始输入图像上进行有效的分割,并使用基于模糊的 SVM(支持向量机)进行精确的组织分类。: 具体来说,从 T1、T2 图像的多模态信息作为输入,然后生成分割图作为输出。与先前的组织分割方法相比,所提出的方法在结果中表现出了相当大的优势。通过这种方法,即使是受到噪声、低分辨率或对比度低的新生儿 MRI 图像也可以更有效地进行分割,其精度达到 90%,灵敏度达到 98%。: 此外,我们的研究结果表明,多模态图像的引入显著提高了性能。因此,与之前的方法相比,所提出的工作有效地解决了不可靠性以及其他问题,并提供了一个交互式的准确分割轮廓。

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