Magnetic Resonance Imaging (MRI) is the most commonly used non-intrusive technique for medical image acquisition. Brain tumor segmentation is the process of algorithmically identifying tumors in brain MRI scans. While many approaches have been proposed in the literature for brain tumor segmentation, this paper proposes a lightweight implementation of U-Net. Apart from providing real-time segmentation of MRI scans, the proposed architecture does not need large amount of data to train the proposed lightweight U-Net. Moreover, no additional data augmentation step is required. The lightweight U-Net shows very promising results on BITE dataset and it achieves a mean intersection-over-union (IoU) of 89% while outperforming the standard benchmark algorithms. Additionally, this work demonstrates an effective use of the three perspective planes, instead of the original three-dimensional volumetric images, for simplified brain tumor segmentation.
翻译:磁共振成像(MRI)是最常用的医学图象获取非侵入性技术。脑肿瘤分解是大脑MRI扫描中算法识别肿瘤的过程。虽然文献中为脑肿瘤分解提出了许多方法,但本文建议对 U-Net 进行轻量应用。除了提供MRI 扫描的实时分解外,拟议的结构不需要大量数据来培训拟议的轻量U-Net。此外,不需要额外的数据增强步骤。轻量U-Net显示BITE数据集非常有希望的结果,它取得了89 % 的平均交叉连接(IOU), 并且超过了标准基准算法。此外,这项工作表明,在简化脑肿瘤分解方面,有效使用了三种视角平面, 而不是原来的三维体量图。