A Precise Computational Method for Hippocampus Segmentation from MRI of Brain to Assist Physicians in the Diagnosis of Alzheimer's Disease

T. Genish, S. Kavitha, S. Vijayalakshmi
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Abstract

Hippocampus segmentation on magnetic resonance imaging is more significant for diagnosis, treatment and analyzing of neuropsychiatric disorders. Automatic segmentation is an active research field. Previous state-of-the-art hippocampus segmentation methods train their methods on healthy or Alzheimer’s disease patients from public datasets. It arises the question whether these methods are capable for recognizing the hippocampus in a different domain. Therefore, this study proposes a precise computational method for hippocampus segmentation from MRI of brain to assist physicians in the diagnosis of Alzheimer’s disease (HCS-MRI-DAD-LBP). Initially, the input images are pre-processed by Trimmed mean filter for image quality enhancement. Then the pre-processed images are given to ROI detection, ROI detection utilizes Weber’s law which determines the luminance factor of the image. In the region extraction process, Chan–Vese active contour model (ACM) and level sets are used (UACM). Finally, local binary pattern (LBP) is utilized to remove the erroneous pixel that maximizes the segmentation accuracy. The proposed model is implemented in MATLAB, and its performance is analyzed with performance metrics, like precision, recall, mean, variance, standard deviation and disc similarity coefficient. The proposed HCS-MRI-DAD-LBP method attains in OASIS dataset provides high disc similarity coefficient of 12.64%, 10.11% and 1.03% compared with the existing methods, like HCS-DAS-MLT, HCS-DAS-RNN and HCS-DAS-GMM and in ADNI dataset provides high precision of 20%, 9.09% and 1.05% compared with existing methods like HCS-MRI-DAD-CNN-ADNI, HCS-MRI-DAD-MCNN-ADNI and HCS-MRI-DAD-CNN-RNN-ADNI, respectively.
脑MRI海马区分割的精确计算方法协助医生诊断阿尔茨海默病
磁共振成像海马分割对神经精神疾病的诊断、治疗和分析具有重要意义。自动分割是一个活跃的研究领域。以前最先进的海马体分割方法对来自公共数据集的健康或阿尔茨海默病患者进行训练。这就产生了一个问题,这些方法是否能够识别海马体在不同的领域。因此,本研究提出了一种精确的脑MRI海马分割计算方法(HCS-MRI-DAD-LBP),以协助医生诊断阿尔茨海默病。首先,对输入图像进行trim均值滤波预处理,增强图像质量。然后将预处理后的图像进行感兴趣点检测,感兴趣点检测利用韦伯定律确定图像的亮度系数。在区域提取过程中,采用了Chan-Vese活动轮廓模型(ACM)和水平集模型(UACM)。最后,利用局部二值模式(LBP)去除错误像素,使分割精度最大化。在MATLAB中实现了该模型,并利用精度、召回率、均值、方差、标准差和圆盘相似系数等性能指标对其性能进行了分析。与现有的hcs - mri - dad - mlt、HCS-DAS-RNN和HCS-DAS-GMM方法相比,本文提出的HCS-MRI-DAD-CNN-ADNI、HCS-MRI-DAD-MCNN-ADNI和HCS-MRI-DAD-CNN-RNN-ADNI方法相比,在OASIS数据集中实现的磁盘相似系数分别为12.64%、10.11%和1.03%,在ADNI数据集中实现的磁盘相似系数分别为20%、9.09%和1.05%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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