Nawaz Marriam, Nazir Tahira, Masood Momina, Mehmood Awais, Mahum Rabbia, Khan Muhammad Attique, Kadry Seifedine, Thinnukool Orawit
Department of Computer Science, University of Engineering and Technology, Taxila 47050, Pakistan.
Department of Computer Science, HITEC University Taxila, Taxila 47080, Pakistan.
Diagnostics (Basel). 2021 Oct 8;11(10):1856. doi: 10.3390/diagnostics11101856.
The brain tumor is a deadly disease that is caused by the abnormal growth of brain cells, which affects the human blood cells and nerves. Timely and precise detection of brain tumors is an important task to avoid complex and painful treatment procedures, as it can assist doctors in surgical planning. Manual brain tumor detection is a time-consuming activity and highly dependent on the availability of area experts. Therefore, it is a need of the hour to design accurate automated systems for the detection and classification of various types of brain tumors. However, the exact localization and categorization of brain tumors is a challenging job due to extensive variations in their size, position, and structure. To deal with the challenges, we have presented a novel approach, namely, DenseNet-41-based CornerNet framework. The proposed solution comprises three steps. Initially, we develop annotations to locate the exact region of interest. In the second step, a custom CornerNet with DenseNet-41 as a base network is introduced to extract the deep features from the suspected samples. In the last step, the one-stage detector CornerNet is employed to locate and classify several brain tumors. To evaluate the proposed method, we have utilized two databases, namely, the Figshare and Brain MRI datasets, and attained an average accuracy of 98.8% and 98.5%, respectively. Both qualitative and quantitative analysis show that our approach is more proficient and consistent with detecting and classifying various types of brain tumors than other latest techniques.
脑肿瘤是一种致命疾病,由脑细胞异常生长引起,会影响人体血细胞和神经。及时、精确地检测脑肿瘤是避免复杂且痛苦的治疗程序的一项重要任务,因为它有助于医生进行手术规划。人工检测脑肿瘤耗时且高度依赖领域专家的可用性。因此,当下迫切需要设计出准确的自动化系统来检测和分类各种类型的脑肿瘤。然而,由于脑肿瘤在大小、位置和结构上存在广泛差异,其精确的定位和分类是一项具有挑战性的工作。为应对这些挑战,我们提出了一种新颖的方法,即基于DenseNet - 41的CornerNet框架。所提出的解决方案包括三个步骤。首先,我们开发注释以定位确切的感兴趣区域。第二步,引入以DenseNet - 41作为基础网络的定制CornerNet,从疑似样本中提取深度特征。最后一步,采用单阶段检测器CornerNet来定位和分类多种脑肿瘤。为评估所提出的方法,我们使用了两个数据库,即Figshare和脑部MRI数据集,分别获得了98.8%和98.5%的平均准确率。定性和定量分析均表明,与其他最新技术相比,我们的方法在检测和分类各种类型的脑肿瘤方面更高效且更具一致性。