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Slide-Detect:An Accurate Deep Learning Diagnosis of Lung Infiltration
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作者 ahmed e.mohamed Magda B.Fayek Mona Farouk 《Data Intelligence》 EI 2023年第4期1048-1062,共15页
Lung infiltration is a non-communicable condition where materials with higher density than air exist inthe parenchyma tissue of the lungs. Lung infiltration can be hard to be detected in an X-ray scan even for aradiol... Lung infiltration is a non-communicable condition where materials with higher density than air exist inthe parenchyma tissue of the lungs. Lung infiltration can be hard to be detected in an X-ray scan even for aradiologist, especially at the early stages making it a leading cause of death. In response, several deeplearning approaches have been evolved to address this problem. This paper proposes the Slide-Detecttechnique which is a Deep Neural Networks (DNN) model based on Convolutional Neural Networks (CNNs)that is trained to diagnose lung infiltration with Area Under Curve (AUC) up to 91.47%, accuracy of 93.85%and relatively low computational resources. 展开更多
关键词 Big Data BIOINFORMATICS ChestXray-NIHCC Classification INFILTRATION Machine Learning Medical diagnosis Slide-Detect
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