Classification of Brain Image Tumor using EfficientNet B1-B2 Deep Learning

Widi Hastomo, Adhitio Satyo Bayangkari Karno, Ellya Sestri, Vany Terisia, Diana Yusuf, Shevty Arbekti Arman, Dodi Arif
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Abstract

In this study, a new neural network model (EfficientNet B1-B2) was sought for the detection of brain tumors in magnetic resonance imaging (MRI) images. The primary objective was to achieve high accuracy rates so as to classify the images. The deep learning techniques meticulously processed and increased the data augmentation as much as possible for the EfficientNet B1-B2 models. Our experimental results show an accuracy of 98% in the B1 version in Table II. This provides a potentially optimistic view of the application of artificial intelligence technology to disease diagnosis based on medical image analysis. Nonetheless, we must remind ourselves that the dataset we used has limitations in terms of the challenges it can pose. Although the number of potential variations of actual medical images constitutes a major challenge, it is not the only one. Most medical datasets are unbalanced, contain highly variable noise, have a slow internal structure, and are often small in size. Hence, our end goal is to help stimulate not only the field of brain tumor detection and treatment but also the development of more sophisticated classification models in the health context.
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利用 EfficientNet B1-B2 深度学习进行脑图像肿瘤分类
本研究寻求一种新的神经网络模型(EfficientNet B1-B2),用于检测磁共振成像(MRI)图像中的脑肿瘤。主要目标是实现高准确率,以便对图像进行分类。深度学习技术对 EfficientNet B1-B2 模型进行了细致的处理,并尽可能地增加了数据扩增。我们的实验结果显示,B1 版本的准确率为 98%(见表二)。这为人工智能技术应用于基于医学图像分析的疾病诊断提供了一个潜在的乐观前景。不过,我们必须提醒自己,我们所使用的数据集在挑战方面有其局限性。虽然实际医学影像的潜在变化数量是一个主要挑战,但这并不是唯一的挑战。大多数医学数据集都是不平衡的,包含高度可变的噪声,内部结构缓慢,而且通常规模较小。因此,我们的最终目标不仅是要促进脑肿瘤检测和治疗领域的发展,而且要在健康领域开发出更复杂的分类模型。
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审稿时长
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