Detection of Brain Tumour based on Optimal Convolution Neural Network

Kishore Kanna R, S. Sahoo, B. K. Mandhavi, V. Mohan, G. S. Babu, B. Panigrahi
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Abstract

  INTRODUCTION: Tumours are the second most frequent cause of cancer today. Numerous individuals are at danger owing to cancer. To detect cancers such as brain tumours, the medical sector demands a speedy, automated, efficient, and reliable procedure. OBJECTIVES: Early phases of therapy are critical for detection. If an accurate tumour diagnosis is possible, physicians safeguard the patient from danger. In this program, several image processing algorithms are utilized. METHODS: Utilizing this approach, countless cancer patients are treated, and their lives are spared. A tumor is nothing more than a collection of cells that proliferate uncontrolled. Brain failure is caused by the development of brain cancer cells, which devour all of the nutrition meant for healthy cells and tissues. Currently, physicians physically scrutinize MRI pictures of the brain to establish the location and size of a patient's brain tumour. This takes a large amount of time and adds to erroneous tumour detection. RESULTS: A tumour is a development of tissue that is uncontrolled. Transfer learning may be utilized to detect the brain cancer utilizing. The model's capacity to forecast the presence of a cancer in a picture is its best advantage. It returns TRUE if a tumor is present and FALSE otherwise. CONCLUSION: In conclusion, the use of CNN and deep learning algorithms to the identification of brain tumor has shown remarkable promise and has the potential to completely transform the discipline of radiology.
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基于优化卷积神经网络的脑肿瘤检测
导言:肿瘤是当今第二大常见癌症病因。许多人因癌症而处于危险之中。为了检测脑肿瘤等癌症,医疗部门需要一种快速、自动化、高效和可靠的程序。目标:治疗的早期阶段对检测至关重要。如果能够准确诊断肿瘤,医生就能保护病人免受危险。本项目采用了多种图像处理算法。方法:利用这种方法,无数癌症患者得到了治疗,他们的生命得以挽救。肿瘤不过是不受控制增殖的细胞集合体。脑癌细胞吞噬了健康细胞和组织所需的所有营养,导致脑功能衰竭。目前,医生需要通过对脑部核磁共振成像图片进行物理检查来确定患者脑肿瘤的位置和大小。这需要耗费大量时间,并增加了肿瘤检测的错误率。结果:肿瘤是不受控制的组织发展。可以利用迁移学习来检测脑癌。该模型的最大优势是能够预测图片中是否存在癌症。如果存在肿瘤,它将返回 "真",否则返回 "假"。结论:总之,使用 CNN 和深度学习算法识别脑肿瘤已显示出显著的前景,并有可能彻底改变放射学学科。
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来源期刊
EAI Endorsed Transactions on Pervasive Health and Technology
EAI Endorsed Transactions on Pervasive Health and Technology Computer Science-Computer Science (miscellaneous)
CiteScore
3.50
自引率
0.00%
发文量
14
审稿时长
10 weeks
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