Early and accurate detection of brain abnormalities, such as tumors and strokes, is essential for timely intervention and improved patient outcomes. In this study, we present a deep learning-based system capable of identifying both brain tumors and strokes from MRI images, along with their respective stages. We have executed two groundbreaking strategies involving convolutional neural networks, MobileNet V2 and ResNet-50-optimized through transfer learning to classify MRI scans into five diagnostic categories. Our dataset, aggregated and augmented from various publicly available MRI sources, was carefully curated to ensure class balance and image diversity. To enhance model generalization and prevent overfitting, we applied dropout layers and extensive data augmentation. The models achieved strong performance, with training accuracy reaching 93\% and validation accuracy up to 88\%. While ResNet-50 demonstrated slightly better results, Mobile Net V2 remains a promising option for real-time diagnosis in low resource settings due to its lightweight architecture. This research offers a practical AI-driven solution for early brain abnormality detection, with potential for clinical deployment and future enhancement through larger datasets and multi modal inputs.
翻译:早期准确检测脑部异常(如肿瘤和卒中)对于及时干预和改善患者预后至关重要。本研究提出一种基于深度学习的系统,能够从MRI图像中识别脑肿瘤和卒中及其相应分期。我们实施了两种突破性策略,采用通过迁移学习优化的卷积神经网络MobileNet V2和ResNet-50,将MRI扫描分类为五个诊断类别。我们的数据集从多个公开MRI资源中聚合并增强,经过精心筛选以确保类别平衡和图像多样性。为提升模型泛化能力并防止过拟合,我们应用了丢弃层和广泛的数据增强技术。模型表现出色,训练准确率达到93%,验证准确率最高达88%。虽然ResNet-50结果略优,但MobileNet V2因其轻量级架构,在资源有限环境下仍是有前景的实时诊断选择。本研究为早期脑部异常检测提供了实用的AI驱动解决方案,具备临床部署潜力,并可通过更大规模数据集和多模态输入进行未来改进。