Diagnosing Brain Tumors from MRI images through a Multi-Fused CNN with Auxiliary Layers

A. Alkhatib, Mohamad Alharoun, Areej Alzoubi, Esraa Muqdadi, Aseel Abu Aqoulah, Almo’men Bellah Alawnah, Razan Abedulhammeed Youn's
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Abstract

In this study, we proposed a novel Multi-Fused Residual Convolutional Neural Network (MFR-CNN) with Auxiliary Fusing Layers (AuxFL) to diagnose various types of brain tumor MRI images. The MFR-CNN was designed to handle four specific cases, namely glioma, meningioma, pituitary, and healthy brain images, obtained from reliable Kaggle databases. Our proposed model integrated three state-of-the-art models into a single feature extraction pipeline, incorporating partially frozen and truncated layers. This strategic fusion enabled the propagation of robust features and improved diagnostic performance without incurring significant computing costs, unlike most existing state-of-the-art models. Moreover, the MFR-CNN effectively mitigated overfitting and performance saturation issues, providing a notable advantage over models lacking these components. Upon evaluation, our proposed model achieved an outstanding accuracy of 94%, surpassing the efficiency and accuracy of conventionally trained DCNNs. Notably, the MFR-CNN demonstrated potential in enhancing brain tumor diagnosis more cost-efficiently than ensembles and outperforming conventional pre-trained and fine-tuned DCNNs. In conclusion, the proposed MFR-CNN with AuxFL and FuRB exhibits promising capabilities to improve the diagnosis of brain tumors, offering better cost-efficiency and accuracy compared to existing methods.
通过带辅助层的多融合 CNN 从核磁共振成像诊断脑肿瘤
在这项研究中,我们提出了一种带有辅助融合层(Auxiliary Fusing Layers,AuxFL)的新型多融合残差卷积神经网络(Multi-Fused Residual Convolutional Neural Network,MFR-CNN),用于诊断各种类型的脑肿瘤核磁共振图像。MFR-CNN 设计用于处理从可靠的 Kaggle 数据库中获取的四种特定病例,即胶质瘤、脑膜瘤、垂体瘤和健康大脑图像。我们提出的模型将三种最先进的模型整合到一个单一的特征提取管道中,并结合了部分冻结层和截断层。与大多数现有的先进模型不同,这种策略性融合能够传播稳健的特征并提高诊断性能,而不会产生大量计算成本。此外,MFR-CNN 还有效缓解了过拟合和性能饱和问题,与缺乏这些组件的模型相比优势明显。经过评估,我们提出的模型达到了 94% 的出色准确率,超过了传统 DCNN 的效率和准确率。值得注意的是,MFR-CNN 在增强脑肿瘤诊断方面的潜力比集合模型更具成本效益,而且优于传统的预训练和微调 DCNN。总之,与现有方法相比,带有 AuxFL 和 FuRB 的拟议 MFR-CNN 在改善脑肿瘤诊断方面表现出更高的性价比和准确性。
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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