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Alzheimer's Disease Brain Network Classification Using Improved Transfer Feature Learning with Joint Distribution Adaptation

机译:阿尔茨海默氏病的疾病脑网络分类采用改进的转移特征学习与联合分布适应

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Alzheimer's disease significantly affects the quality of life of patients. This paper proposes an approach to identify Alzheimer's disease based on transfer learning using functional MRI images, which is especially useful when the training dataset is small. Transfer learning improves the performance of the classifier with the help of an auxiliary dataset, which may be obtained from a different population group and/or machine. First, we used the joint distribution adaptation method to project the source and target domain samples into a new feature space, and then we built a classifier that works well in both the source and target domains but emphasizes the target domain. In the classifier, we assigned larger weights to the target domain samples and minimized the weighted loss in classifying the samples in both domains. Experimental results verify the effectiveness of our proposed approach and, with the help of the auxiliary samples, the classification accuracy of our target dataset has been greatly improved.
机译:阿尔茨海默病的疾病显着影响了患者的生活质量。本文提出了一种基于使用功能MRI图像的转移学习来识别阿尔茨海默病的方法,这在训练数据集很小时特别有用。转移学习在辅助数据集的帮助下提高了分类器的性能,这可以从不同的人口组和/或机器获得。首先,我们使用了联合分布适应方法将源和目标域样本将源和目标域样本项目投影到一个新的特征空间中,然后我们构建了一个在源域和目标域中工作的分类器,但强调目标域。在分类器中,我们为目标域样本分配了更大的权重,并最大限度地减少了在两个域中分类样本的加权损失。实验结果验证了我们提出的方法的有效性,并且在辅助样本的帮助下,我们的目标数据集的分类准确性得到了大大提高。

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