Brain Tumor Classification using Transfer Learning

Dr. Vaibhav Eknath Narawade, Chaitali Shetty, Purva Kharsambale, Samruddhi Bhosale, S. Rout
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Abstract

Brain tumors are one of the more severe medical conditions that can affect both children and adults. Brain tumors make up between 85 and 90 percent of all primary Central Nervous System (CNS) malignancies. Each year, brain tumors are found in about 11,700 persons. The 5-year survival rate is around 34% for males and 36% for female patients with malignant brain or CNS tumors. Brain tumors can be classified as benign, malignant, pituitary, and other forms. Appropriate treatment, meticulous planning, and exact diagnostics must be used to prolong patient lives. The most reliable way for detecting brain cancer is Magnetic Resonance Imaging (MRI). The images are examined by the radiologist. As brain tumors are complex the MRI serve as guide to diagnose the seriousness of the disease. Since the placement and size of the brain tumor seems incredibly abnormal for persons affected by the disease it becomes difficult to properly comprehend the nature of the tumor. For MRI analysis, a qualified neurosurgeon is also necessary. Compiling the results of an MRI can be extremely difficult and time-consuming because there are typically not enough qualified medical professionals and individuals who are knowledgeable about malignancy in poor countries. Thus, this issue can be resolved by an automated cloud-based solution. In the proposed model, The Convolutional Neural Networks (CNN) is used for the classification of the brain tumor dataset with an accuracy of 99%.
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利用迁移学习进行脑肿瘤分类
脑瘤是一种更严重的疾病,可以影响儿童和成人。脑肿瘤占所有原发性中枢神经系统(CNS)恶性肿瘤的85%至90%。每年大约有11,700人发现脑瘤。恶性脑或中枢神经系统肿瘤患者的5年生存率为男性约34%,女性约36%。脑肿瘤可分为良性、恶性、垂体性和其他形式。为了延长病人的生命,必须使用适当的治疗、周密的计划和准确的诊断。检测脑癌最可靠的方法是磁共振成像(MRI)。放射科医生检查了这些图像。由于脑肿瘤是复杂的,MRI可以作为诊断疾病严重性的指导。由于脑肿瘤的位置和大小对患有这种疾病的人来说似乎异常,因此很难正确理解肿瘤的性质。对于核磁共振分析,一个合格的神经外科医生也是必要的。编制核磁共振成像的结果可能极其困难和耗时,因为在贫穷国家通常没有足够的合格医疗专业人员和了解恶性肿瘤的个人。因此,这个问题可以通过基于云的自动化解决方案来解决。在提出的模型中,使用卷积神经网络(CNN)对脑肿瘤数据集进行分类,准确率为99%。
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