利用基于形态学区域的主动轮廓模型进行脑肿瘤预测和分割,并利用波尔兹曼蒙特卡洛方法对核磁共振成像图像进行细化

K. R. Srivaishnavi, T. P. Perumal, P. Anishiya
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引用次数: 0

摘要

研究目标研究工作的主要目标是利用分割方法,在人脑的放射磁共振成像(MRI)图像中准确检测出脑肿瘤的精确位置。方法:在这项研究工作中,我们主要介绍了基于形态学区域的主动轮廓模型和波尔兹曼蒙特卡洛方法(MACB 模型),其中涉及对大脑、核磁共振成像图像进行分割以检测脑肿瘤的综合三步法。第一步涉及预处理,包括用于降噪的高斯滤波和用于增强图像特征的对比度受限自适应直方图均衡化(CLAHE)技术。第二步,我们使用形态学操作识别与肿瘤相关的集群,并使用主动轮廓(Snake)模型划分肿瘤区域,从而得到分割后的图像。最后一步,我们使用波尔兹曼蒙特卡洛方法来细化分割图像的边缘。为了评估这种方法的有效性,我们使用了公共领域的二维脑肿瘤数据集。第一个数据集来自 Kaggle 网站,包含 3064 幅核磁共振成像人脑图像和用于分割的相应地面实况图像。第二个数据集用于对分割后的肿瘤进行可视化,可在同一 Kaggle 网站上获取。研究结果在第一个数据集中,使用提出的 MACB 模型生成的分割图像与地面实况图像之间的相似度表现出更高的值。也就是说,提议的方法获得了更高的骰子相似系数(DSC)值:93.26%、Jaccard 系数:86.44%、灵敏度:97.27%、特异度:99.43% 和像素准确率:98.95%。新颖性:在这项研究工作中,通过将波尔兹曼蒙特卡洛方法与基于形态区域的主动轮廓模型相结合,提出了用于脑肿瘤检测、分割和细化过程的 MACB 模型。这种新方法提高了脑肿瘤分割过程的精度和效率。关键词脑肿瘤分割、形态学操作、主动轮廓、玻尔兹曼蒙特卡罗方法、磁共振成像
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Brain Tumor Prediction and Segmentation with Morphological Region-based Active Contour Model and Refinement using Boltzmann Monte Carlo Method in MRI Images
Objectives: The primary goal of the research work is to accurately detect the precise location of the brain tumor in the radiological Magnetic Resonance Imaging (MRI) images of human brain using segmentation method. Methods: In this research work, we introduce mainly the Morphological Region-based Active Contour model and Boltzmann Monte Carlo method (MACB model), involving a comprehensive three-step methodology for the segmentation of the brain, MRI images in order to detect brain tumor. The initial step involves pre-processing which includes Gaussian filtering for noise reduction and Contrast Limited Adaptive Histogram Equalization (CLAHE) technique to enhance image features. In the second step, we identify tumor-related clusters using morphological operations and delineate the tumor regions using Active Contour (Snake) model to get a segmented image. In the final step, the Boltzmann Monte Carlo method is used to refine the edges of the segmented image. To evaluate the effectiveness of this approach, the 2D brain tumor datasets, available in the public domain, are used. The first dataset is taken from Kaggle website and has 3064 MRI human brain images and its respective ground truth images which is used for segmentation. The second dataset is used for visualization of segmented tumor, available in the same Kaggle website. Findings: The Performance metrics for finding similarity between the segmented images generated using the proposed MACB model and the ground truth images, available in the first dataset, exhibit higher values. That is, the proposed method has achieved higher values of Dice Similarity Coefficient (DSC): 93.26%, Jaccard Co-efficient: 86.44%, Sensitivity: 97.27%, Specificity: 99.43% and Pixel accuracy: 98.95%. Novelty: In this research work, MACB model is proposed for the detection, segmentation, and refinement process of brain tumor by incorporating Boltzmann Monte Carlo method with Morphological Region-Based Active Contour model. This novel approach has resulted in enhanced precision and efficiency in the brain tumor segmentation process. Keywords: Brain Tumor Segmentation, Morphological Operation, Active Contour, Boltzmann Monte Carlo Method, Magnetic Resonance Imaging
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