Computational Intelligence Approach to Improve The Classification Accuracy of Brain Tumor Detection

S. K. UmaMaheswaran, S. Deivasigamani, Kapil Joshi, Devvret Verma, Santhosh Kumar Rajamani, Dhyana Sharon Ross
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引用次数: 3

Abstract

One of its most serious diseases that may affect kids and teens is a cancerous tumor. Gliomas account for 85% to 90% of all recurrent System (CNS) cancers. An estimated 11,700 individuals get a glioma diagnosis per year. When a person has a benign brains or CNS cancer, their five - year survival is around 36% for women and approximately 34% for men. There are several distinct types of brain cancers, including benign, aggressive, endocrine, and other types. The average lifespan of people should really be increased by using appropriate treatment, scheduling, and precise diagnosis. Mri scan is the most effective method for finding tumour (MRI). An large quantity of picture data is produced by scanners. The surgeon looks over these pictures. Algorithms (ML) and intelligent systems (AI)-based automation classification systems have repeatedly beaten hand categorisation in high accuracy. Therefore., offering a system can perform classification and tracking using Deep Learning Techniques such as Fully Convolutional Systems (CNN), Knn (ANN), (Template matching), and Transfer Learning (TL) would be helpful to physicians everywhere.
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提高脑肿瘤检测分类准确率的计算智能方法
可能影响儿童和青少年的最严重的疾病之一是癌症肿瘤。神经胶质瘤占所有复发系统(CNS)癌症的85%至90%。据估计,每年有11,700人被诊断为神经胶质瘤。当一个人患有良性脑癌或中枢神经系统癌时,女性的5年生存率约为36%,男性约为34%。脑癌有几种不同的类型,包括良性、侵袭性、内分泌和其他类型。通过适当的治疗、计划和精确的诊断,人们的平均寿命确实应该延长。Mri扫描是发现肿瘤最有效的方法。扫描仪产生了大量的图像数据。外科医生看了看这些照片。基于算法(ML)和智能系统(AI)的自动化分类系统在高精度上一再击败人工分类。因此。因此,提供一个可以使用深度学习技术(如全卷积系统(CNN)、Knn (ANN)、模板匹配(Template matching)和迁移学习(TL))执行分类和跟踪的系统,将对各地的医生都有帮助。
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