Masood Momina, Nazir Tahira, Nawaz Marriam, Mehmood Awais, Rashid Junaid, Kwon Hyuk-Yoon, Mahmood Toqeer, Hussain Amir
Department of Computer Science, University of Engineering and Technology, Taxila 47050, Pakistan.
Department of Computer Science, AIR University Islamabad, Aerospace and Aviation Campus Kamra, Kamra 43570, Pakistan.
Diagnostics (Basel). 2021 Apr 21;11(5):744. doi: 10.3390/diagnostics11050744.
A brain tumor is an abnormal growth in brain cells that causes damage to various blood vessels and nerves in the human body. An earlier and accurate diagnosis of the brain tumor is of foremost important to avoid future complications. Precise segmentation of brain tumors provides a basis for surgical planning and treatment to doctors. Manual detection using MRI images is computationally complex in cases where the survival of the patient is dependent on timely treatment, and the performance relies on domain expertise. Therefore, computerized detection of tumors is still a challenging task due to significant variations in their location and structure, i.e., irregular shapes and ambiguous boundaries. In this study, we propose a custom Mask Region-based Convolution neural network (Mask RCNN) with a densenet-41 backbone architecture that is trained via transfer learning for precise classification and segmentation of brain tumors. Our method is evaluated on two different benchmark datasets using various quantitative measures. Comparative results show that the custom Mask-RCNN can more precisely detect tumor locations using bounding boxes and return segmentation masks to provide exact tumor regions. Our proposed model achieved an accuracy of 96.3% and 98.34% for segmentation and classification respectively, demonstrating enhanced robustness compared to state-of-the-art approaches.
脑肿瘤是脑细胞的异常生长,会对人体的各种血管和神经造成损害。早期准确诊断脑肿瘤对于避免未来并发症至关重要。脑肿瘤的精确分割为医生的手术规划和治疗提供了依据。在患者的生存依赖于及时治疗的情况下,使用MRI图像进行人工检测计算量很大,而且其性能依赖于领域专业知识。因此,由于肿瘤的位置和结构存在显著差异,即形状不规则和边界模糊,计算机化检测肿瘤仍然是一项具有挑战性的任务。在本研究中,我们提出了一种基于自定义掩码区域的卷积神经网络(Mask RCNN),其具有密集连接网络-41骨干架构,通过迁移学习进行训练,用于脑肿瘤的精确分类和分割。我们的方法在两个不同的基准数据集上使用各种定量指标进行评估。比较结果表明,自定义Mask-RCNN可以使用边界框更精确地检测肿瘤位置,并返回分割掩码以提供准确的肿瘤区域。我们提出的模型在分割和分类方面的准确率分别达到了96.3%和98.34%,与现有方法相比显示出更强的鲁棒性。