Towards Detecting Dementia via Deep Learning

Deepika Bansal, K. Khanna, R. Chhikara, R. Dua, Rajeev Malini
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Abstract

Dementia is a brain disorder that causes loss of memory leading to disruption in the normal course of life of an individual. It is emerging as a global health problem in adults with age 65 years or above. Early diagnosis of dementia has gone forth as a key research zone with the aim of early identification for hindering the advancement. Deep learning provides path-breaking applications in medical imaging. This study provides a detailed summary of different implementation approaches of deep learning for detecting the disease. Transfer learning for multi-class classification has also been explored for detecting dementia. The pre-trained convolutional network, AlexNet is used with 3 optimizers, SGDM, ADAM, RMSProp. A Dataset of 60 MRI images is taken from the OASIS dataset. Accuracy of the methods has been compared and the best parameters including classifier, learning rate, and a batch size of the model have been identified. SGDM classifier with a learning rate 10-4 and a mini-batch size of 10 have shown the best performance in a reasonable time.
通过深度学习检测痴呆症
痴呆症是一种脑部疾病,它会导致记忆丧失,从而扰乱个人的正常生活。它正在成为65岁或以上成年人的一个全球性健康问题。痴呆症的早期诊断已成为一个重要的研究领域,其目的是早期识别,以阻碍痴呆症的发展。深度学习为医学成像提供了开创性的应用。本研究详细总结了深度学习在疾病检测中的不同实现方法。多类分类的迁移学习也被用于检测痴呆症。预训练的卷积网络AlexNet与3个优化器SGDM, ADAM, RMSProp一起使用。60张MRI图像的数据集取自OASIS数据集。比较了这些方法的准确性,并确定了最佳参数,包括分类器、学习率和模型的批量大小。学习率为10-4、小批大小为10的SGDM分类器在合理的时间内表现出了最好的性能。
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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