基于磁共振图像的多类脑疾病分类双线性移动网络

Dewinda Julianensi Rumala, Eko Mulyanto Yuniarno, R. F. Rachmadi, Supeno Mardi Susiki Nugroho, Yudhi Adrianto, A. Sensusiati, I. Ketut Eddy Purnama
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引用次数: 3

摘要

早期发现脑部疾病对于提供进一步和适当的治疗以挽救患者的生命是必要的。借助成像技术和深度学习方法,脑部疾病的自动诊断成为可能。近年来,许多研究人员对医学图像分类问题感兴趣,包括使用深度学习的卷积神经网络(CNN)算法基于磁共振图像(MRI)的脑部疾病检测。与传统的机器学习相比,CNN在进行自动图像特征提取方面具有独特的优势。然而,如果提供大量的数据集,CNN的表现会更好。不幸的是,由于隐私导致的数据缺乏仍然是医学图像分析领域的一个问题。为了解决这个问题,许多研究人员已经实现了一种迁移学习技术来训练小数据的CNN模型。本研究提出了基于CNN的双线性模型,将脑MR图像分为五类。本研究以MobileNetV1和MobileNetV2为骨干网络,通过迁移学习提取特征,并采用双线性方法对两个网络的特征进行整合。该方法提高了CNN模型的分类性能,测试准确率达到98.03%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bilinear MobileNets for Multi-class Brain Disease Classification Based on Magnetic Resonance Images
Early detection of brain diseases is necessary to deliver further and suitable treatment to save the patient life. Automated brain disease diagnosis is possible to be carried out with the availability of imaging techniques and the Deep Learning method. In recent years, many researchers have been interested in medical image classification problems, including brain disease detection based on Magnetic Resonance Images (MRI) using the Convolutional Neural Network (CNN) algorithm of Deep Learning. CNN has a unique advantage compared with traditional Machine Learning to do automated image feature extraction. However, CNN will perform better if numerous datasets are provided. Unfortunately, the lack of data due to privacy is still a problem in the medical image analysis topic. In order to solve that problem, many researchers have implemented a transfer learning technique to train the CNN models with small data. This study has proposed bilinear models based on CNN to distinguish brain MR images into five classes. In this study, MobileNetV1 and MobileNetV2 are employed as backbone networks to extract features via transfer learning, and the bilinear method is implemented to integrate the features from both networks. The proposed method improved the classification performance of the CNN model with a testing accuracy of 98.03%.
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