Glioblastoma brain tumors are highly malignant and often require early detection and accurate segmentation for effective treatment. We are proposing two deep learning models in this paper, namely UNet and Deeplabv3, for the detection and segmentation of glioblastoma brain tumors using preprocessed brain MRI images. The performance evaluation is done for these models in terms of accuracy and computational efficiency. Our experimental results demonstrate that both UNet and Deeplabv3 models achieve accurate detection and segmentation of glioblastoma brain tumors. However, Deeplabv3 outperforms UNet in terms of accuracy, albeit at the cost of requiring more computational resources. Our proposed models offer a promising approach for the early detection and segmentation of glioblastoma brain tumors, which can aid in effective treatment strategies. Further research can focus on optimizing the computational efficiency of the Deeplabv3 model while maintaining its high accuracy for real-world clinical applications. Overall, our approach works and contributes to the field of medical image analysis and deep learning-based approaches for brain tumor detection and segmentation. Our suggested models can have a major influence on the prognosis and treatment of people with glioblastoma, a fatal form of brain cancer. It is necessary to conduct more research to examine the practical use of these models in real-life healthcare settings.
翻译:Translated Abstract:
胶质母细胞瘤脑瘤是高度恶性的,需要及早检测和准确分割以实现有效治疗。在本文中,我们提出了两种深度学习模型,分别为UNet和Deeplabv3,利用预处理的脑MRI图像进行胶质母细胞瘤脑瘤的检测和分割。利用准确性和计算效率对这些模型进行了性能评估。我们的实验结果表明,UNet和Deeplabv3模型都能够实现胶质母细胞瘤脑瘤的准确检测和分割。然而,Deeplabv3在准确性方面表现优于UNet,尽管需要更多的计算资源。我们提出的模型为胶质母细胞瘤脑瘤的早期检测和分割提供了一种有前途的方法,可以帮助制定有效的治疗策略。进一步的研究可以集中在优化Deeplabv3模型的计算效率,同时保持其高准确性,以满足实际临床应用的需求。总体而言,我们的方法适用于医学图像分析和基于深度学习的脑部肿瘤检测和分割方法。我们提出的模型可以对胶质母细胞瘤这种致命的脑癌患者的预后和治疗产生重大影响。有必要进行更多的研究,以检查这些模型在实际的医疗保健环境中的实用性。