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阿尔茨海默病分类:迁移学习深度 Q 网络方法的应用。

Classification of Alzheimer's disease: application of a transfer learning deep Q-network method.

机构信息

School of Information and Electronics Technology, Jiamusi University, Jiamusi, China.

Key Laboratory of Autonomous Intelligence and Information Processing in Heilongjiang Province, Jiamusi, China.

出版信息

Eur J Neurosci. 2024 Apr;59(8):2118-2127. doi: 10.1111/ejn.16261. Epub 2024 Jan 28.

DOI:10.1111/ejn.16261
PMID:38282277
Abstract

Early diagnosis is crucial to slowing the progression of Alzheimer's disease (AD), so it is urgent to find an effective diagnostic method for AD. This study intended to investigate whether the transfer learning approach of deep Q-network (DQN) could effectively distinguish AD patients using local metrics of resting-state functional magnetic resonance imaging (rs-fMRI) as features. This study included 1310 subjects from the Consortium for Reliability and Reproducibility (CoRR) and 50 subjects from the Alzheimer's Disease Neuroimaging Initiative (ADNI) GO/2. The amplitude of low-frequency fluctuation (ALFF), fractional ALFF (fALFF) and percent amplitude of fluctuation (PerAF) were extracted as features using the Power 264 atlas. Based on gender bias in AD, we searched for transferable similar parts between the CoRR feature matrix and the ADNI feature matrix, resulting in the CoRR similar feature matrix served as the source domain and the ADNI similar feature matrix served as the target domain. A DQN classifier was pre-trained in the source domain and transferred to the target domain. Finally, the transferred DQN classifier was used to classify AD and healthy controls (HC). A permutation test was performed. The DQN transfer learning achieved a classification accuracy of 86.66% (p < 0.01), recall of 83.33% and precision of 83.33%. The findings suggested that the transfer learning approach using DQN could be an effective way to distinguish AD from HC. It also revealed the potential value of local brain activity in AD clinical diagnosis.

摘要

早期诊断对于减缓阿尔茨海默病(AD)的进展至关重要,因此迫切需要找到一种有效的 AD 诊断方法。本研究旨在探讨深度 Q 网络(DQN)的迁移学习方法是否可以有效地使用静息态功能磁共振成像(rs-fMRI)的局部指标作为特征来区分 AD 患者。本研究包括来自可靠性和可重复性联盟(CoRR)的 1310 名受试者和来自阿尔茨海默病神经影像学倡议(ADNI)GO/2 的 50 名受试者。使用 Power 264 图谱提取幅度低频波动(ALFF)、分数 ALFF(fALFF)和波动幅度百分比(PerAF)作为特征。基于 AD 中的性别偏见,我们在 CoRR 特征矩阵和 ADNI 特征矩阵之间搜索可转移的相似部分,导致 CoRR 相似特征矩阵作为源域,ADNI 相似特征矩阵作为目标域。在源域中预训练 DQN 分类器,并将其转移到目标域。最后,使用转移后的 DQN 分类器对 AD 和健康对照组(HC)进行分类。进行了置换检验。DQN 迁移学习达到了 86.66%(p<0.01)的分类准确率、83.33%的召回率和 83.33%的精度。研究结果表明,使用 DQN 的迁移学习方法可能是区分 AD 和 HC 的有效方法。它还揭示了局部脑活动在 AD 临床诊断中的潜在价值。

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