基于迁移学习的脑卒中分类比较

IF 0.3 Q4 COMPUTER SCIENCE, THEORY & METHODS
Rusul Ali Jabbar Alhatemi̇, Serkan Savaş
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引用次数: 7

摘要

中风是一种严重危害人们生命和健康的脑部疾病。脑卒中的诊断和治疗都严重依赖于脑磁共振(MR)图像的定量分析。早期诊断过程对预防脑卒中病例具有重要意义。中风预测是由具有大量数据学习能力的深度神经网络实现的。因此,本研究提出了DenseNet121、ResNet50、Xception、MobileNet、VGG16、EfficientNetB2等深度神经网络模型进行迁移学习,将MR图像分为脑卒中和非脑卒中两类,研究脑卒中病变特征,实现全智能自动检测。研究数据集包括1901张训练图像、475张验证图像和250张测试图像。在训练集和验证集上,使用数据增强来增加图像的数量,以提高模型的学习能力。实验结果优于使用相同数据集的所有技术水平。最佳模型的总体准确率为98.8%,使用迁移学习的EfficientNetB2模型的精度、召回率和f1-score值相同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transfer Learning-Based Classification Comparison of Stroke
One type of brain disease that significantly harms people's lives and health is stroke. The diagnosis and management of strokes both heavily rely on the quantitative analysis of brain Magnetic Resonance (MR) images. The early diagnosis process is of great importance for the prevention of stroke cases. Stroke prediction is made possible by deep neural networks with the capacity for enormous data learning. Therefore, in thus study, several deep neural network models, including DenseNet121, ResNet50, Xception, MobileNet, VGG16, and EfficientNetB2 are proposed for transfer learning to classify MR images into two categories (stroke and non-stroke) in order to study the characteristics of the stroke lesions and achieve full intelligent automatic detection. The study dataset comprises of 1901 training images, 475 validation images, and 250 testing images. On the training and validation sets, data augmentation was used to increase the number of images to improve the models’ learning. The experimental results outperform all the state of arts that were used the same dataset. The overall accuracy of the best model is 98.8% and the same value for precision, recall, and f1-score using the EfficientNetB2 model for transfer learning.
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来源期刊
Computer Science-AGH
Computer Science-AGH COMPUTER SCIENCE, THEORY & METHODS-
CiteScore
1.40
自引率
0.00%
发文量
18
审稿时长
20 weeks
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