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Eye-Zheimer: A Deep Transfer Learning Approach of Dementia Detection and Classification from NeuroImaging

机译:Eye-Zheimer:痴呆症检测和神经影像分类的深度转移学习方法

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Dementia is a common term for memory loss, speech, problem-solving, and other cognitive skills that are serious enough to interfere with everyday life, and Alzheimer’s is the leading cause of dementia. Alzheimer’s disease is presumed to develop 20 years or more before symptoms occur, with degenerative changes that are unapparent to the person affected. The deep learning approach for early detection and Alzheimer’s disease classification has recently gained significant attention. This study proposed disease detection trained by utilizing the YOLO v3 algorithm that aims to detect Alzheimer’s disease based solely on Magnetic Resonance Imaging (MRI). Pascal VOC format and LabelImg tool are used for annotating the datasets, categorizing the image as non-demented and mild-demented. Model 4 was used in the system having 98.617% training accuracy, 98.8207% validation accuracy, and mAP of 96.17%. To test the accuracy of the used model, images of MRI scans are presented and it recorded 80% testing accuracy.
机译:痴呆症是一个常见的记忆丧失,语音,解决问题和其他认知技能,这足以干扰日常生活,而Alzheimer是痴呆症的主要原因。在发生症状之前,阿尔茨海默氏病的疾病被推定为20年或更长时间,对受影响人的人来说是不公开的退行性变化。早期检测和阿尔茨海默病分类的深度学习方法最近受到重大关注。本研究提出了通过利用YOLO V3算法训练的疾病检测,该算法旨在仅基于磁共振成像(MRI)来检测阿尔茨海默病。 Pascal VOC格式和LabelIMG工具用于注释数据集,将图像分类为非绑定和轻度命令。模型4用于系统培训准确度98.617%,验证准确度为98.8207%,地图为96.17%。为了测试二手模型的准确性,提出了MRI扫描的图像,并记录了80%的测试精度。

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