Hybrid Fusion Approach for Alzheimer’s Disease Progression Employing IHS and Wavelet Transform

Doaa Y . Hussein, Mostafa Y. Makkey, Shimaa A. Abdelrahman
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Abstract

 Abstract — Image fusion has become a commonly utilized technology for boosting the medical information in brain images. Magnetic resonance imaging (MRI) depicts the morphology of the brain tissue, it has great spatial resolution but lacks functional information. Positron emission tomography (PET) displays the brain with great function but low spatial resolution. Hence, a fusion of the two imaging techniques will help the neurologist to accurately identify Alzheimer's disease progression. In this paper, a new fusion method that combines two transformation approaches, triangular intensity-hue-saturation (IHS) and discrete wavelet transform (DWT), is introduced. DWT is applied to the intensity component of the PET image and the smoothed version of the MRI image. Wavelet coefficients are fused using a specific fusion rule for the low and high-frequency bands. Inverse DWT is applied to obtain a new intensity component, and the gray version is subtracted from the new intensity. The fused image is obtained by applying the inverse triangular IHS. For evaluation, quantitative measurement and statistical analysis are determined. The proposed method achieved discrepancy, average gradient, mutual information, and overall fusion performance of 7.0529, 5.3879, 0.6550, and 1.6651 respectively. The final results reveal that the proposed method achieved the highest performance compared with existing methods.
采用 IHS 和小波变换的阿尔茨海默病进展混合融合方法
 摘要--图像融合已成为提高脑图像医学信息的常用技术。磁共振成像(MRI)描绘的是脑组织的形态,具有很高的空间分辨率,但缺乏功能信息。正电子发射断层扫描(PET)显示大脑的功能,但空间分辨率低。因此,融合这两种成像技术将有助于神经学家准确识别阿尔茨海默病的进展。本文介绍了一种新的融合方法,它结合了两种变换方法,即三角强度-色调-饱和度(IHS)和离散小波变换(DWT)。DWT 应用于 PET 图像的强度分量和 MRI 图像的平滑版本。小波系数采用特定的融合规则对低频带和高频带进行融合。应用反 DWT 获得新的强度分量,并从新的强度中减去灰色版本。应用反三角 IHS 可得到融合图像。为了进行评估,确定了定量测量和统计分析。拟议方法的差异度、平均梯度、互信息和整体融合性能分别为 7.0529、5.3879、0.6550 和 1.6651。最终结果表明,与现有方法相比,拟议方法的性能最高。
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