期刊文献+
共找到1篇文章
< 1 >
每页显示 20 50 100
Analysis of BrainMRI: AI-Assisted Healthcare Framework for the Smart Cities
1
作者 Walid El-Shafai Randa Ali +3 位作者 Ahmed Sedik taha el-sayed taha Mohammed Abd-Elnaby Fathi E.Abd El-Samie 《Intelligent Automation & Soft Computing》 SCIE 2023年第2期1843-1856,共14页
The use of intelligent machines to work and react like humans is vital in emerging smart cities.Computer-aided analysis of complex and huge MRI(Mag-netic Resonance Imaging)scans is very important in healthcare applica... The use of intelligent machines to work and react like humans is vital in emerging smart cities.Computer-aided analysis of complex and huge MRI(Mag-netic Resonance Imaging)scans is very important in healthcare applications.Among AI(Artificial Intelligence)driven healthcare applications,tumor detection is one of the contemporary researchfields that have become attractive to research-ers.There are several modalities of imaging performed on the brain for the pur-pose of tumor detection.This paper offers a deep learning approach for detecting brain tumors from MR(Magnetic Resonance)images based on changes in the division of the training and testing data and the structure of the CNN(Convolu-tional Neural Network)layers.The proposed approach is carried out on a brain tumor dataset from the National Centre of Image-Guided Therapy,including about 4700 MRI images of ten brain tumor cases with both normal and abnormal states.The dataset is divided into test,and train subsets with a ratio of the training set to the validation set of 70:30.The main contribution of this paper is introdu-cing an optimum deep learning structure of CNN layers.The simulation results are obtained for 50 epochs in the training phase.The simulation results reveal that the optimum CNN architecture consists of four layers. 展开更多
关键词 Healthcare smart cities clinical automation CNN machine learning brain tumor medical diagnosis
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部