基于CNN的阿尔茨海默病检测与分类

Smt. Swaroopa Shastri, Ambresh Bhadrashetty, Supriya Kulkarni
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引用次数: 0

摘要

阿尔茨海默病是一种精神疾病,会导致精神混乱、健忘和许多其他精神问题。它也会影响一个人的身体健康。在治疗阿尔茨海默病患者时,正确的诊断是至关重要的,特别是在病情的早期阶段,因为当患者被告知这种疾病的风险时,他们可以在不可修复的脑损伤发生之前采取预防措施。大多数机器检测技术受到先天性(出生时)数据的限制,然而最近有许多研究使用计算机诊断阿尔茨海默病。阿尔茨海默病的第一阶段是可以诊断的,但疾病本身无法预测,因为预测只有在疾病真正表现出来之前才有帮助。阿尔茨海默氏症具有影响患者身心健康的高风险症状。风险包括精神错乱、注意力不集中等等,因此有了这些症状,在早期发现这种疾病就变得很重要。发现这种疾病的意义在于患者获得更好的治疗和药物治疗机会。因此,我们的研究有助于在早期阶段发现这种疾病。特别是当与大脑MRI扫描一起使用时,深度学习已经成为早期识别AD的流行工具。这里我们使用一个12层的CNN,它有4层卷积,2层池化,2层平坦,1层密集和3层激活函数。由于CNN以模式检测和图像处理著称,在这里,我们的模型准确率为97.80%。
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Detection and Classification of Alzheimer’s Disease by Employing CNN
Alzheimer’s illness is an ailment of mind which results in mental confusion, forgetfulness and many other mental problems. It effects physical health of a person too. When treating a patient with Alzheimer's disease, a proper diagnosis is crucial, especially into earlier phases of condition as when patients are informed of the risk of the disease, they can take preventative steps before irreparable brain damage occurs. The majority of machine detection techniques are constrained by congenital (present at birth) data, however numerous recent studies have used computers for Alzheimer's disease diagnosis. The first stages of Alzheimer's disease can be diagnosed, but illness itself cannot be predicted since prediction is only helpful before it really manifests. Alzheimer’s has high risk symptoms that effects both physical and mental health of a patient. Risks include confusion, concentration difficulties and much more, so with such symptoms it becomes important to detect this disease at its early stages. Significance of detecting this disease is the patient gets a better chance of treatment and medication. Hence our research helps to detect the disease at its early stages. Particularly when used with brain MRI scans, deep learning has emerged as a popular tool for the early identification of AD. Here we are using a 12- layer CNN that has the layers four convolutional, two pooling, two flatten, one dense and three activation functions. As CNN is well-known for pattern detection and image processing, here, accuracy of our model is 97.80%.
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来源期刊
International Journal of Intelligent Systems and Applications in Engineering
International Journal of Intelligent Systems and Applications in Engineering Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
1.30
自引率
0.00%
发文量
18
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