Brain Tumor Detection and Classification Using VGG16 Deep Learning Algorithm and Python Imaging Library

Sulejman Karamehić, Samed Jukic
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Abstract

Early diagnosis and treatment of brain cancer depend on the detection and categorization of brain tumors. Deep learning algorithms have produced amazing results in medical imaging applications including tumor identification. Most of this field's research has concentrated on applying CNN algorithms like VGG16, DNN, and ANN to this problem. This work describes the identification and classification of brain tumors using the Python Imaging Library (PIL) and the VGG16 deep learning algorithm. A dataset of 7000 MRI pictures categorized by tumor type served as the foundation for the research. The main objective of this study was to develop a high-efficiency, high-accuracy model. We suggested utilizing the VGG16 architecture and preprocessing images with PIL to ensure consistent images for training on a sizable dataset of brain magnetic resonance imaging (MRI) images. A novel technique we have used in our work is one that can analyze a single image and predict the presence of a tumor from the results. The research's methods produced robust tumor detection across the dataset with 96, 9% accuracy, indicating the value of the method in helping medical professionals make informed decisions when diagnosing the presence of tumors.
使用 VGG16 深度学习算法和 Python 图像库进行脑肿瘤检测和分类
脑癌的早期诊断和治疗取决于脑肿瘤的检测和分类。深度学习算法在包括肿瘤识别在内的医学成像应用中取得了令人惊叹的成果。这一领域的大部分研究都集中在将 VGG16、DNN 和 ANN 等 CNN 算法应用于这一问题上。本作品介绍了使用 Python Imaging Library (PIL) 和 VGG16 深度学习算法对脑肿瘤进行识别和分类。研究以一个包含 7000 张按肿瘤类型分类的核磁共振成像图片的数据集为基础。这项研究的主要目标是开发一种高效率、高准确度的模型。我们建议利用 VGG16 架构和 PIL 对图像进行预处理,以确保图像的一致性,从而在相当大的脑磁共振成像(MRI)图像数据集上进行训练。我们在工作中使用的一项新技术可以分析单张图像,并根据结果预测肿瘤的存在。这项研究的方法在整个数据集中实现了稳健的肿瘤检测,准确率高达 96.9%,这表明该方法在帮助医疗专业人员在诊断是否存在肿瘤时做出明智决策方面具有重要价值。
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