基于图像处理的MRI图像自动多模态白质高强度识别

I. Isa, S. N. Sulaiman, N. Tahir, M. F. Abdullah, Z. H. C. Soh, M. Mustapha, N. Karim
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引用次数: 1

摘要

白质高强度(WMH)是通过磁共振成像图像在大脑白质区域观察到的小区域高信号强度。医学专家一般采用人工或半自动方法对脑组织异常进行白质高信号分析。然而,这些方法容易出错,并且由于评级尺度不同,它们建立的结果不可靠。本文采用图像分割和增强相结合的多模态技术,提出了一种全自动识别WMH的方法。该方法是一种对t2加权和FLAIR序列的MRI图像进行WMH自动分割的无监督方法。随后,通过覆盖映射图像对处理后的序列进行整合,以绘制最精确的WMH区域。通过自动和人工方法的相似度指标来评价WMH区域识别的准确性。实验结果表明,该方法在精确检测WMH区域方面取得了显著的效果。该方法适用于白质高信号的分析和识别,可作为放射科医生的计算机辅助工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An automated multimodal white matter hyperintensity identification for MRI images using image processing
White matter hyperintensities (WMH) are small regions of high signal intensity that are observable on the white matter region of the brain through magnetic resonance imaging images. Generally, the medical expert conducts a white matter hyperintensities analysis to investigate brain tissue abnormality using manual or semi-automatic methods. However, those methods are prone to error and they establish unreliable results as different in rating scales. In this paper, a fully automatic method is proposed to identify WMH using the multimodal technique which combining image segmentation and enhancement. This method is introduced as an unsupervised method to automatically segment WMH on MRI images of T2-weighted and FLAIR sequences. Subsequently, the processed sequences are integrated by overlying the mapping images in order to map the most precise WMH regions. The accuracy of the WMH regions identification is assessed through the similarity index between automated and manual approach. The experimental results show that the proposed method has achieved significant results to detect exact WMH area. The proposed method is suitable to be implemented in analyzing white matter hyperintensities identification and it may serves as a computer-aided tool for radiologists.
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