The impact of image augmentation techniques of MRI patients in deep transfer learning networks for brain tumor detection

Peshraw Ahmed Abdalla, Bashdar Abdalrahman Mohammed, Ari M. Saeed
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Abstract

Abstract The exponential growth of deep learning networks has enabled us to handle difficult tasks, even in the complex field of medicine. Nevertheless, for these models to be extremely generalizable and perform well, they need to be applied to a vast corpus of data. In order to train transfer learning networks with limited datasets, data augmentation techniques are frequently used due to the difficulties in getting data. The use of these methods is crucial in the medical industry in order to enhance the number of cancer-related magnetic resonance imaging pathology scans. This study evaluates the results of data augmentation methods on three deep transfer learning networks, such as InceptionV3, VGG16, and DenseNet169, for brain tumor identification. To demonstrate how data augmentation approaches affect the performance of the models, networks were trained both before and after the application of these methods. The outcomes revealed that the image augmentation strategies have a big impact on the networks before and after using techniques, such as the accuracy of VGG16 is 77.33% enhanced to 96.88%, and InceptionV3 changed from 86.66 to 98.44%, and DenseNet169 changed from 85.33 to 96.88% the accuracy percentage increase of the models are 19.55%, 11.78%, and 11.55%, respectively.
MRI患者图像增强技术对脑肿瘤检测的深度迁移学习网络的影响
深度学习网络的指数级增长使我们能够处理困难的任务,甚至在复杂的医学领域。然而,为了使这些模型具有极强的通用性并表现良好,它们需要应用于大量的数据库。为了训练具有有限数据集的迁移学习网络,由于获取数据的困难,经常使用数据增强技术。为了增加与癌症相关的磁共振成像病理扫描的数量,这些方法的使用在医疗行业至关重要。本研究评估了三种深度迁移学习网络(InceptionV3、VGG16和DenseNet169)的数据增强方法用于脑肿瘤识别的结果。为了演示数据增强方法如何影响模型的性能,在应用这些方法之前和之后都对网络进行了训练。结果表明,使用技术前后,图像增强策略对网络的影响较大,VGG16的准确率从77.33%提高到96.88%,InceptionV3的准确率从86.66提高到98.44%,DenseNet169的准确率从85.33提高到96.88%,模型的准确率分别提高了19.55%、11.78%和11.55%。
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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