Classification of Spine Image from MRI Image Using Convolutional Neural Network

G. Raja, J. Mohan
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引用次数: 1

Abstract

The spine tumor is a fast-growing abnormal cell in the spinal canal or vertebrae of the spine, it affected many people. Thousands of researchers have focused on this disease for better understanding of tumor classification to provide more effective treatment to the patients. The main objective of this paper is to form a methodology for classification of spine image. We proposed an efficient and effective method that helpful for classifying the spine image and identified tumor region without any human assistance. Basically, Contrast Limited Adaptive Histogram Equalization used to improve the contrast of spine images and to eliminate the effect of unwanted noise. The proposed methodology will classify spine images as Normal or Abnormal using Convolutional Neural Network (CNN) model algorithm. The CNN model can classify spine image as Normal or Abnormal with 99.4% Accuracy, 94.5% Sensitivity, 95.6% Precision, and 99.9% specificity. Compared with the previous existing methods, our proposed solution achieved the highest performance in terms of classification based on the spine dataset. From the experimental results performed on the different images, it is clear that the analysis for the spine tumor detection is fast and accurate when compared with the manual detection performed by radiologists or clinical experts, So, anyone can easily identify the tumor affected area also determine abnormal images.
基于卷积神经网络的MRI脊柱图像分类
脊柱肿瘤是一种在椎管或脊椎骨内生长迅速的异常细胞,它影响了许多人。为了更好地了解肿瘤的分类,为患者提供更有效的治疗,成千上万的研究人员一直在关注这种疾病。本文的主要目的是形成一种脊柱图像的分类方法。提出了一种无需人工辅助即可进行脊柱图像分类和肿瘤区域识别的高效方法。对比度有限的自适应直方图均衡化基本上用于提高脊柱图像的对比度和消除不必要的噪声的影响。提出的方法将使用卷积神经网络(CNN)模型算法将脊柱图像分类为正常或异常。CNN模型对脊柱图像进行正常或异常分类的准确率为99.4%,灵敏度为94.5%,精度为95.6%,特异性为99.9%。与之前的方法相比,我们提出的方法在基于脊柱数据集的分类方面取得了最高的性能。从对不同图像进行的实验结果可以看出,与放射科医生或临床专家进行人工检测相比,脊柱肿瘤检测的分析是快速准确的,因此,任何人都可以轻松地识别肿瘤的影响区域,也可以确定异常图像。
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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