A BrainNet (BrN) based New Approach to Classify Brain Stroke from CT Scan Images

Dhonita Tripura, Imdadul Haque, M. Dutta, Shaikat Dev, Tanjila Jahan, Shomitro Kumar Ghosh, M. Islam
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Abstract

Worldwide, brain stroke is known as the 2nd leading cause of death, and based on Indian history, three people have suffered every minute. There are mainly two different types of brain stroke: ischemic stroke and Hemorrhagic stroke used to train the proposed models. Ischemic stroke is the most common and it contributes mostly to 80% of the brain stroke and Hemorrhagic stroke contributes mostly to 20% of the brain stroke. In the proposed model, there has been used a hybrid model called BrainNet (BrN) as CNN(Convolutional Neural Network) and SVM(Support Vector Machine)to classify brain stroke disease. After applying the required proposed model, it has produced a smart score of 91.91% accuracy, and compared to the existing model it performs pretty well. The BrainNet (BrN) model is mainly designed based on a deep neural network with dataset collection, preprocessing, and feature extraction with the desired model and make the classification concerning SVM. With compare to the existing model, it is an acceptable performance that belongs to the collected dataset designed with Ischemic stroke and Hemorrhagic stroke disease within the total number of 2515 data.
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基于脑网络的脑卒中CT扫描图像分类新方法
在世界范围内,脑中风被认为是第二大死因,根据印度的历史,每分钟就有三人遭受脑中风的折磨。主要有两种不同类型的脑中风:缺血性中风和出血性中风,用于训练所提出的模型。缺血性中风是最常见的它占脑中风的80%出血性中风占脑中风的20%在提出的模型中,使用了一种称为BrainNet (BrN)的混合模型,即CNN(卷积神经网络)和SVM(支持向量机)对脑卒中疾病进行分类。应用所提出的模型后,产生了准确率为91.91%的智能分数,与现有模型相比,它的表现相当不错。BrainNet (BrN)模型主要是基于深度神经网络进行数据收集、预处理和特征提取,并结合SVM进行分类。与现有模型相比,在2515个数据总数中,属于以缺血性卒中和出血性卒中疾病设计的收集数据集,是一个可以接受的性能。
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