利用深度学习模型对核磁共振成像扫描进行脑肿瘤检测和分类

L. Chandra, Sekhar Reddy, Muniyandy Elangovan, M. Vamsikrishna, Ch Ravindra
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引用次数: 0

摘要

引言:人工智能(AI)的主要目标是开发出能表现出类似人类行为和功能的计算机。采用人工智能的计算机活动包括各种额外的功能,而不仅仅是模式检测、规划和问题解决。方法:机器使用一套统称为 "深度学习 "的技术。磁共振成像(MRI)是利用深度学习方法开发的模型,可有效识别脑癌并对其进行分类。这项技术有助于快速、直接地检测脑癌。脑部问题主要源于脑细胞的异常增殖,导致脑部结构发生有害改变,最终发展为脑癌、恶性肿瘤。早期发现脑肿瘤并进行有效干预,可以降低死亡率。本文提出了卷积神经网络(CNN)架构,利用磁共振(MR)图像有效检测脑癌。结果:本研究进一步研究了几种模型,包括 ResNet-50、VGG16 和 Inception V3,并将提出的架构与这些模型进行了比较。对模型的有效性进行了多项评估,包括准确率、召回率、损失率和曲线下面积(AUC)。在分析了几种模型并使用指定指标将它们与建议的模型进行比较后,确定建议的模型比其他模型表现出更优越的性能。结论:CNN 模型的分类精确度高达 93.3%。此外,接收者操作特征曲线下面积(AUC)为 98.43%,召回率为 91.19%。此外,该模型的损失函数值为 0.25。根据与其他模型的比较分析,可以推断所建议的模型在早期检测各种类型的脑癌方面非常可靠。
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Brain Tumor Detection and Classification Using Deep Learning Models on MRI Scans
INTRODUCTION: The primary goal of artificial intelligence (AI) is to develop computers that exhibit human-like behavior and functionality. Computer-based activities employing artificial intelligence encompass a variety of extra features beyond only pattern detection, planning, and problem resolution. METHODOLOGY: Machines use a set of techniques collectively called "deep learning." Magnetic resonance imaging (MRI) is employed with the use of deep learning methods to develop models that can effectively identify and classify brain cancers. This technique facilitates the rapid and straightforward detection of brain cancers. Brain problems mainly arise from the abnormal multiplication of brain cells, leading to detrimental alterations in brain structure and finally culminating in the development of cancer in the brain, malignant. Early detection of brain tumors along with following effective intervention can reduce mortality rates. This paper proposes convolutional neural network (CNN) architecture to effectively detect brain cancers using magnetic resonance (MR) images. RESULTS: This research further examines several models, including ResNet-50, VGG16, and Inception V3, and compares the proposed architecture and these models. For the efficacy of the models, many measures were evaluated, including accuracy, recall, loss, and area under the curve (AUC). After analyzing several models and comparing them with the suggested model using the specified metrics, it was determined that the proposed model exhibited superior performance compared to the alternative models. Based on an analysis conducted on data from 3265 MR images. CONCLUSION: It was seen that the CNN model exhibited a classification precision of 93.3%. Additionally, the area under the receiver operating characteristic curve (AUC) was determined to be 98.43%, while the recall rate was 91.19%. Furthermore, the model's loss function yielded a value of 0.25. Based on a comparative analysis with other models, it can be inferred that the suggested model is highly reliable in detecting various types of brain cancers at an early stage.
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来源期刊
EAI Endorsed Transactions on Pervasive Health and Technology
EAI Endorsed Transactions on Pervasive Health and Technology Computer Science-Computer Science (miscellaneous)
CiteScore
3.50
自引率
0.00%
发文量
14
审稿时长
10 weeks
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