卷积神经网络-机器学习模型:用于脑膜瘤肿瘤和健康大脑分类的混合模型。

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY Journal of Imaging Pub Date : 2024-09-20 DOI:10.3390/jimaging10090235
Simona Moldovanu, Gigi Tăbăcaru, Marian Barbu
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引用次数: 0

摘要

本文以脑磁共振成像(MRI)为背景,介绍了卷积神经网络(CNN)、机器学习(ML)和迁移学习(TL)的混合研究。大脑的解剖结构非常复杂;在头骨内部,脑肿瘤可能在任何部位形成。利用核磁共振成像技术可以生成横截面图像,放射科医生可以检测出异常情况。当肿瘤非常小的时候,人类的视觉系统无法检测到,这就需要使用人工智能工具进行替代分析。众所周知,CNN 会探索图像的结构,并在 SoftMax 全连接(SFC)层上提供特征,然后对属于输入类别的项目进行分类。本文介绍了脑膜瘤肿瘤和健康大脑分类的两项对比研究:(i) 使用原始 CNN 和两个预先训练过的 CNN(DenseNet169 和 EfficientNetV2B0)对 MRI 图像进行分类;(ii) 当 SoftMax 被三个 ML 模型取代时,确定哪个 CNN 和 ML 组合能产生最准确的分类;在这种情况下,提出了随机森林 (RF)、K-最近邻 (KNN) 和支持向量机 (SVM)。在肿瘤和健康大脑的二元分类中,EfficientNetB0-SVM 组合在测试数据集上的准确率达到了 99.5%。对结果进行了泛化,并通过使用装袋集合方法防止了过拟合。
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Convolutional Neural Network-Machine Learning Model: Hybrid Model for Meningioma Tumour and Healthy Brain Classification.

This paper presents a hybrid study of convolutional neural networks (CNNs), machine learning (ML), and transfer learning (TL) in the context of brain magnetic resonance imaging (MRI). The anatomy of the brain is very complex; inside the skull, a brain tumour can form in any part. With MRI technology, cross-sectional images are generated, and radiologists can detect the abnormalities. When the size of the tumour is very small, it is undetectable to the human visual system, necessitating alternative analysis using AI tools. As is widely known, CNNs explore the structure of an image and provide features on the SoftMax fully connected (SFC) layer, and the classification of the items that belong to the input classes is established. Two comparison studies for the classification of meningioma tumours and healthy brains are presented in this paper: (i) classifying MRI images using an original CNN and two pre-trained CNNs, DenseNet169 and EfficientNetV2B0; (ii) determining which CNN and ML combination yields the most accurate classification when SoftMax is replaced with three ML models; in this context, Random Forest (RF), K-Nearest Neighbors (KNN), and Support Vector Machine (SVM) were proposed. In a binary classification of tumours and healthy brains, the EfficientNetB0-SVM combination shows an accuracy of 99.5% on the test dataset. A generalisation of the results was performed, and overfitting was prevented by using the bagging ensemble method.

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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
期刊最新文献
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