A novel approach for the detection of brain tumor and its classification via independent component analysis

一种基于独立成分分析的脑肿瘤检测与分类新方法

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Abstract

A brain tumor is regarded as one of the deadliest types of cancer due to its intricate nature.This is why it is important that patients get the best possible diagnosis and treatment options. With the help of machine vision, neurologists can now perform a more accurate and faster diagnosis. There are currently no suitable methods that can be used to perform brain segmentation using image processing recently neural network model is used that it can perform better than other methods. Unfortunately, due to the complexity of the model, performing accurate brain segmentation in real images is not feasible. The main objective is to develop a novel method that can be used to analyze brain tumors using a component analysis. The proposed model consists of a deep neural network and an image processing framework. It is divided into various phases, such as the mapping stage, the data augmentation stage, and the tumor discovery stage. The data augmentation stage involves training a CNN to identify the regions of the image that are overlapping with the tumor space marker. The DCNN's predicted performance is compared with the test result. The third stage is focused on training a deep neural system and a SVM. This model was able to achieve a 99% accuracy rate and a sensitivity of 0.973%. It is primarily utilized for identifying brain tumors.

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