An Efficient Deep Learning Approach to detect Brain Tumor Using MRI Images

Annur Tasnim Islam, Sakib Mashrafi Apu, Sudipta Sarker, Syeed Alam Shuvo, Inzamam M. Hasan, Ashraful Alam, Shakib Mahmud Dipto
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Abstract

The formation of altered cells in the human brain constitutes a brain tumor. There are numerous varieties of brain tumors in existence today. According to academics and medical professionals, some brain tumors are curable, while others are deadly. In most cases, brain cancer is identified at a late stage, making recovery difficult. This raises the rate of mortality. If this could be identified in its earliest stages, many lives could be saved. Brain cancers are currently identified by automated processes that use AI algorithms and brain imaging data. In this article, we use Magnetic Resonance Imaging (MRI) data and the fusion of learning models to suggest an effective strategy for detecting brain tumors. The suggested system consists of multiple processes, including preprocessing and classification of brain MRI images, performance analysis and optimization of various deep neural networks, and efficient methodologies. The proposed study allows for a more precise classification of brain cancers. We start by collecting the dataset and classifying it with the VGG16, VGG19, ResNet50, ResNet101, and InceptionV3 architectures. We achieved an accuracy rate of 96.72% for VGG16, 96.17% for ResNet50, and 95.55% for InceptionV3 as a result of our analysis. Using the top three classifiers, we created an ensemble model called EBTDM (Ensembled Brain Tumor Detection Model) and achieved an overall accuracy rate of 98.60%.
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一种利用MRI图像检测脑肿瘤的高效深度学习方法
人类大脑中变异细胞的形成构成了脑瘤。目前存在着许多种类的脑瘤。根据学者和医学专家的说法,一些脑肿瘤是可以治愈的,而另一些则是致命的。在大多数情况下,脑癌在晚期才被发现,这使得康复变得困难。这就提高了死亡率。如果能在早期阶段发现这种疾病,就能挽救许多生命。脑癌目前是通过使用人工智能算法和脑成像数据的自动化过程来识别的。在本文中,我们使用磁共振成像(MRI)数据和学习模型的融合来提出一种有效的脑肿瘤检测策略。该系统包括脑MRI图像的预处理和分类,各种深度神经网络的性能分析和优化,以及高效的方法。这项提议的研究允许对脑癌进行更精确的分类。我们首先收集数据集并使用VGG16、VGG19、ResNet50、ResNet101和InceptionV3架构对其进行分类。我们的分析结果表明,VGG16的准确率为96.72%,ResNet50为96.17%,InceptionV3为95.55%。使用前三个分类器,我们创建了一个集成模型,称为EBTDM (Ensembled Brain Tumor Detection model),总体准确率达到98.60%。
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