Classifying Alzheimer's disease based on a convolutional neural network with MRI images

M. Avşar, K. Polat
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Abstract

Alzheimer's disease is a significant disease that negatively affects daily life and reduces the quality of human life. Dementia and Alzheimer's disease occur as the loss of neurons or a decrease in the relationship between neurons. So far, no effective drug has been found in diagnosing this disease. For this reason, it has become essential for individuals to diagnose the disease early and to detect the disease before it progresses. However, early diagnosis of the disease is challenging. The disease can be diagnosed after significant and irreversible effects on humans occur. A lot of research has been done worldwide for early disease diagnosis. Deep learning algorithms have become essential in diagnosing this disease. Significant progress has been made in diagnosing the disease with models created using deep learning algorithms. This study used a sequential model, conv2D, maxPooling2D, and dense layers to diagnose and classify. According to the dataset from Kaggle, a 4-class dataset has been used in this study to diagnose Alzheimer's disease. According to the Alzheimer's MRI dataset, the disease has been classified as nondemented, moderate demented, mild demented, and very mild demented, respectively. The proposed model has been trained using CNN. The number of layers and dropout rate have been used as performance metrics. In our study, activation Leaky ReLU was used. The SMOTE technique has been used to oversample the available data. This study's classification results will help experts make the right decisions. With F1Score, accuracy, recall, and precision values, 96.35% success was achieved in the CNN model. Different CNN methods can be used to advance these studies.
基于卷积神经网络与MRI图像的阿尔茨海默病分类
阿尔茨海默病是一种严重影响日常生活、降低人类生活质量的疾病。痴呆症和阿尔茨海默病的发生是由于神经元的丧失或神经元之间的关系的减少。到目前为止,还没有发现诊断这种疾病的有效药物。因此,对个人来说,早期诊断疾病并在疾病发展之前发现疾病变得至关重要。然而,这种疾病的早期诊断具有挑战性。该病可在对人类产生重大和不可逆转的影响后诊断出来。在世界范围内进行了大量的疾病早期诊断研究。深度学习算法已经成为诊断这种疾病的关键。在使用深度学习算法创建的模型诊断疾病方面取得了重大进展。本研究采用序列模型、conv2D、maxPooling2D和dense layers进行诊断和分类。根据来自Kaggle的数据集,本研究使用了一个4类数据集来诊断阿尔茨海默病。根据阿尔茨海默氏症的MRI数据集,该疾病已被分类为非痴呆、中度痴呆、轻度痴呆和非常轻度痴呆。所提出的模型已经使用CNN进行了训练。层数和丢包率被用作性能指标。本研究采用Leaky ReLU活化法。SMOTE技术已用于对可用数据进行过采样。这项研究的分类结果将有助于专家做出正确的决策。在F1Score、准确率、召回率和精度值的情况下,CNN模型的成功率为96.35%。可以使用不同的CNN方法来推进这些研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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