Development of a Computerized Diagnostic System for Brain MRI Tumor Scanning Using a Robust Information Clustering Technique

Uvere C
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引用次数: 1

Abstract

This paper presents the development of a computerized diagnostic system for brain MRI tumor scanning using a robust information clustering technique. The method used for this study is data collection, data processing, feature extraction, artificial neural network, activation function, training algorithm, and classification. The method was modelled using a structural approach that developed the Artificial Neural Network (ANN) algorithm, using tansig activation function and back-propagation training algorithm. The brain tumor detection algorithm developed was implemented with MATLAB Simulink application, and tested with Mean Square Error (MSE) and Regression (R) analysis. The result showed that the MSE is 0.002488 and the Regression result is 0.9933. The algorithm was also comparatively compared with an existing system and the result showed that the new system achieved better regression performance than the others. Then it was deployed as a clinical decision system for the diagnosis of brain tumors and tested, the result showed that it was able to detect patients with brain MRI data. Keyword : Back-Propagation, Magnetic Resonance Imaging (MRI), Neural Network, Simulink, Tansig.
基于鲁棒信息聚类技术的脑MRI肿瘤扫描计算机诊断系统的开发
本文介绍了一种基于鲁棒信息聚类技术的脑MRI肿瘤扫描计算机诊断系统的开发。本研究采用的方法是数据收集、数据处理、特征提取、人工神经网络、激活函数、训练算法、分类。该方法采用结构化方法建模,开发了人工神经网络(ANN)算法,使用tansig激活函数和反向传播训练算法。开发的脑肿瘤检测算法在MATLAB Simulink应用程序中实现,并进行均方误差(MSE)和回归(R)分析。结果表明,MSE为0.002488,回归结果为0.9933。将该算法与已有系统进行了比较,结果表明新系统的回归性能优于其他系统。然后将其作为脑肿瘤诊断的临床决策系统进行部署和测试,结果表明它能够检测到患者的脑部MRI数据。关键词:反向传播,磁共振成像(MRI),神经网络,Simulink, Tansig
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