A Classification Method for Brain MRI via AlexNet

Burak Taşcı
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引用次数: 1

Abstract

The number of people dying from brain tumors is increasing day by day. Early diagnosis is very important in the treatment planning and evaluation of the treatment outcome of brain tumors. A patient with a brain tumor may be more likely to survive by applying the right treatment methods if the disease is diagnosed early. Medical imaging methods have an important role in the identification and diagnosis of brain tumors. One of the most popular medical imaging methods is Magnetic Resonance Imaging, MRI. Determining the presence of tumors and tumor characteristics from MRI is done by specialists. In today's technology, computer-assisted detection applications make great contributions to the field of medicine. Computer-Assisted Detection (CAD) software helps radiologists to detect abnormalities in medical images by using advanced pattern recognition and image processing methods. This software not only saves time for radiologists but also minimizes possible errors in the decision-making phase. In this study, deep features were extracted from a total of 942 MRIs with 599 tumor and 343 normal class labels using the AleXNet-based deep learning model, and classification was performed with the K Nearest Neighbor Classifier (KNN) algorithms. In this study, 1000 deep features were extracted from the MRI data with the trained weights of the fully connected layer named “fc8” of the AlexNet model. Then, these features were reduced by Relieff feature selection algorithm, and the performance of the proposed method was increased. A weighted KNN classifier was used in the classification phase. With the proposed method, 87% classification accuracy was achieved.
基于AlexNet的脑MRI分类方法
死于脑瘤的人数日益增加。早期诊断对脑肿瘤的治疗方案制定和疗效评价具有重要意义。如果早期诊断出脑肿瘤,采用正确的治疗方法,患者可能更有可能存活下来。医学影像学方法在脑肿瘤的鉴别和诊断中具有重要作用。最流行的医学成像方法之一是磁共振成像(MRI)。通过MRI确定肿瘤的存在和肿瘤特征是由专家完成的。在当今的技术中,计算机辅助检测的应用为医学领域做出了巨大的贡献。计算机辅助检测(CAD)软件通过使用先进的模式识别和图像处理方法,帮助放射科医生检测医学图像中的异常情况。该软件不仅为放射科医生节省了时间,而且还最大限度地减少了决策阶段可能出现的错误。在本研究中,使用基于alexnet的深度学习模型从942张mri中提取了599个肿瘤和343个正常类别标签的深度特征,并使用K最近邻分类器(KNN)算法进行分类。在本研究中,使用AlexNet模型中名为“fc8”的全连接层的训练权值,从MRI数据中提取1000个深度特征。然后,通过Relieff特征选择算法对这些特征进行约简,提高了该方法的性能。在分类阶段使用加权KNN分类器。该方法的分类准确率达到87%。
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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