According to the World Health Organization (WHO), cancer is the second leading cause of death worldwide, responsible for over 9.5 million deaths in 2018 alone. Brain tumors count for one out of every four cancer deaths. Therefore, accurate and timely diagnosis of brain tumors will lead to more effective treatments. Physicians classify brain tumors only with biopsy operation by brain surgery, and after diagnosing the type of tumor, a treatment plan is considered for the patient. Automatic systems based on machine learning algorithms can allow physicians to diagnose brain tumors with noninvasive measures. To date, several image classification approaches have been proposed to aid diagnosis and treatment. For brain tumor classification in this work, we offer a system based on deep learning, containing encoder blocks. These blocks are fed with post-max-pooling features as residual learning. Our approach shows promising results by improving the tumor classification accuracy in Magnetic resonance imaging (MRI) images using a limited medical image dataset. Experimental evaluations of this model on a dataset consisting of 3064 MR images show 95.98% accuracy, which is better than previous studies on this database.
翻译:据世界卫生组织(世卫组织)称,癌症是全世界第二大死亡原因,仅在2018年就造成950多万人死亡。脑肿瘤占癌症死亡的四分之一。因此,对脑肿瘤的准确和及时的诊断将导致更有效的治疗。医生仅通过脑外科手术对脑肿瘤进行生物检查分类,并在诊断肿瘤类型后,考虑病人的治疗计划。基于机器学习算法的自动系统可以让医生用非侵入性措施诊断脑肿瘤。到目前为止,已经提议了若干图像分类方法来帮助诊断和治疗。对于这项工作的脑肿瘤分类,我们提供了一个基于深层学习的系统,包含编码器块。这些区块作为残余学习,配有后轴组合功能。我们的方法显示,通过使用有限的医学图像数据集改进磁共振成成像(MRI)图像的肿瘤分类精度,取得了有希望的结果。在一个由3064 MR MS 图像组成的数据集上对模型的实验性评估显示95.98%的准确性,这比这个数据库先前的研究要好。