Comparison Analysis of Brain Image Classification Based on Thresholding Segmentation With Convolutional Neural Network

Alwas Muis, S. Sunardi, A. Yudhana
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Abstract

Brain tumor is one of the most fatal diseases that can afflict anyone regardless of gender or age necessitating prompt and accurate treatment as well as early discovery of symptoms. Brain tumors can be identified using Magnetic Resonance Imaging (MRI) to detect abnormal tissue or cell development in the brain and surrounding the brain. Biopsy is another option, but it takes approximately 10 to 15 days after the inspection, so technology is required to classify the image. The goal of this study is to conduct a comparative analysis of the greatest accuracy value attained while classifying using segmentation with thresholding versus segmentation without thresholding on the CNN method. Images are assigned threshold values of 150, 100, and 50. The dataset consists of 7023 MRI scans of four types of brain tumors: glioma, notumor, meningioma, and pituitary. Without utilising thresholding segmentation, the classification yielded the highest degree of accuracy, 92%. At the threshold of 100, classification by segmentation received the highest score of 88%. This demonstrates that thresholding segmentation during CNN model preprocessing is less effective for brain image classification
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基于阈值分割与卷积神经网络的脑图像分类比较分析
脑瘤是最致命的疾病之一,它可以折磨任何人,无论性别或年龄,都需要及时准确的治疗以及早期发现症状。脑肿瘤可以使用磁共振成像(MRI)来检测大脑和大脑周围的异常组织或细胞发育。活检是另一种选择,但检查后大约需要10到15天,因此需要技术对图像进行分类。本研究的目的是对CNN方法中使用带阈值的分割与不使用阈值的分割进行分类时获得的最大精度值进行比较分析。图像被分配了150、100和50的阈值。该数据集包括四种类型脑肿瘤的7023次MRI扫描:神经胶质瘤、非肿瘤、脑膜瘤和垂体。在不使用阈值分割的情况下,分类产生了最高的准确度,92%。在100的阈值下,通过分割进行分类获得了88%的最高分数。这表明,在CNN模型预处理过程中,阈值分割对大脑图像分类的效果较差
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CiteScore
1.50
自引率
0.00%
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0
审稿时长
4 weeks
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