A Transformer Approach for Cognitive Impairment Classification and Prediction.

IF 1.8 4区 医学 Q3 CLINICAL NEUROLOGY Alzheimer Disease & Associated Disorders Pub Date : 2024-04-01 Epub Date: 2024-05-17 DOI:10.1097/WAD.0000000000000619
Houjun Liu, Alyssa M Weakley, Jiawei Zhang, Xin Liu
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Abstract

Introduction: Early classification and prediction of Alzheimer disease (AD) and amnestic mild cognitive impairment (aMCI) with noninvasive approaches is a long-standing challenge. This challenge is further exacerbated by the sparsity of data needed for modeling. Deep learning methods offer a novel method to help address these challenging multiclass classification and prediction problems.

Methods: We analyzed 3 target feature-sets from the National Alzheimer Coordinating Center (NACC) dataset: (1) neuropsychological (cognitive) data; (2) patient health history data; and (3) the combination of both sets. We used a masked Transformer-encoder without further feature selection to classify the samples on cognitive status (no cognitive impairment, aMCI, AD)-dynamically ignoring unavailable features. We then fine-tuned the model to predict the participants' future diagnosis in 1 to 3 years. We analyzed the sensitivity of the model to input features via Feature Permutation Importance.

Results: We demonstrated (1) the masked Transformer-encoder was able to perform prediction with sparse input data; (2) high multiclass current cognitive status classification accuracy (87% control, 79% aMCI, 89% AD); (3) acceptable results for 1- to 3-year multiclass future cognitive status prediction (83% control, 77% aMCI, 91% AD).

Conclusion: The flexibility of our methods in handling inconsistent data provides a new venue for the analysis of cognitive status data.

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用于认知障碍分类和预测的变换器方法。
简介使用非侵入性方法对阿尔茨海默病(AD)和失忆性轻度认知障碍(aMCI)进行早期分类和预测是一项长期存在的挑战。建模所需的数据稀少进一步加剧了这一挑战。深度学习方法提供了一种新方法,有助于解决这些具有挑战性的多类分类和预测问题:我们分析了国家阿尔茨海默氏症协调中心(NACC)数据集中的 3 个目标特征集:(1)神经心理学(认知)数据;(2)患者健康史数据;(3)两组数据的组合。我们使用屏蔽变换编码器(Transformer-encoder)对样本的认知状态(无认知障碍、aMCI、AD)进行分类,并动态忽略不可用的特征。然后,我们对模型进行了微调,以预测参与者未来 1 到 3 年的诊断结果。我们通过特征排列重要性分析了模型对输入特征的敏感性:我们证明了:(1)遮蔽变换编码器能够在输入数据稀少的情况下进行预测;(2)当前认知状态的多类分类准确率很高(87% 的对照组、79% 的 aMCI 组、89% 的 AD 组);(3)1 到 3 年的未来认知状态多类预测结果可以接受(83% 的对照组、77% 的 aMCI 组、91% 的 AD 组):我们的方法能灵活处理不一致的数据,为分析认知状态数据提供了新的途径。
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来源期刊
CiteScore
3.10
自引率
4.80%
发文量
88
期刊介绍: ​Alzheimer Disease & Associated Disorders is a peer-reviewed, multidisciplinary journal directed to an audience of clinicians and researchers, with primary emphasis on Alzheimer disease and associated disorders. The journal publishes original articles emphasizing research in humans including epidemiologic studies, clinical trials and experimental studies, studies of diagnosis and biomarkers, as well as research on the health of persons with dementia and their caregivers. The scientific portion of the journal is augmented by reviews of the current literature, concepts, conjectures, and hypotheses in dementia, brief reports, and letters to the editor.
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