Md Shahin Ali, Md. Khairul Islam, Jahurul Haque, A. Das, D. Duranta, Md Ariful Islam
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引用次数: 11
摘要
阿尔茨海默病基本上是一种神经退行性疾病,不可能完全治愈。这是一种随着年龄增长而发生的痴呆症。它不仅会损害人的记忆,还会影响人的行为、运动和对外界刺激的反应。此外,阿尔茨海默病还会破坏神经元之间的联系,破坏脑细胞。《AD》最糟糕的结局就是死亡。虽然不能完全治愈,但预先发现可以及早治疗,减轻症状。AD也可以通过分析从脑电图、磁共振成像等多种成像技术捕获的大脑图像来检测,并借助机器学习算法。机器学习算法在处理和分类图像以确定AD阶段的情况下是非常成功的技术。在本文中,我们提出了一种名为Modified Random Forest (m-RF)的升级机器学习算法,用于在正常人和有阿尔茨海默病风险的人之间进行个性化。我们实现了96.43%的准确率,远远优于其他算法,如支持向量机,自适应增强,k近邻等。
Alzheimer’s Disease Detection Using m-Random Forest Algorithm with Optimum Features Extraction
Alzheimer’s disease is basically a neurodegenerative disease that is impossible to fully be cured. It is one kind of dementia that occurs along with aging. It not only damages human memory but also affects behavior, movement, and responses to external stimulations. Moreover, AD breaks the connections of the neurons and spoils the brain cells. The worst sequel of AD is death. Though it can not be properly cured, pre-detection can make an early treatment that might reduce the symptoms. AD can also be detected by analyzing brain images captured from several imaging techniques like Electroencephalogram, Magnetic Resonance Imaging, etc with the aid of machine learning algorithms. Machine learning algorithms are highly successful techniques in the case of processing and classifying the images to determine the stages of AD. In this paper, we propose an upgraded machine learning algorithm named Modified Random Forest (m-RF) to individualize between normal people and people with the risk of having Alzheimer’s disease. We have achieved an accuracy of 96.43% that is far better than other algorithms like Support Vector Machine, Adaptive Boosting, K-Nearest Neighbors, etc.