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基于回忆的数字认知生物标志物预测 36 个月内的认知衰退状况。

Predicting CDR status over 36 months with a recall-based digital cognitive biomarker.

机构信息

School of Psychology, Liverpool John Moores University, Liverpool, UK.

Embic Corporation, Newport Beach, California, USA.

出版信息

Alzheimers Dement. 2024 Oct;20(10):7274-7280. doi: 10.1002/alz.14213. Epub 2024 Sep 11.

Abstract

INTRODUCTION

Word-list recall tests are routinely used for cognitive assessment, and process scoring may improve their accuracy. We examined whether Alzheimer's Disease Assessment Scale-Cognitive subscale (ADAS-Cog) derived, process-based digital cognitive biomarkers (DCBs) at baseline predicted Clinical Dementia Rating (CDR) longitudinally and compared them to standard metrics.

METHODS

Analyses were performed with Alzheimer's Disease Neuroimaging Initiative (ADNI) data from 330 participants (mean age = 71.4 ± 7.2). We conducted regression analyses predicting CDR at 36 months, controlling for demographics and genetic risk, with ADAS-Cog traditional scores and DCBs as predictors.

RESULTS

The best predictor of CDR at 36 months was M, a DCB reflecting recall ability (area under the curve = 0.84), outperforming traditional scores. Diagnostic results suggest that M may be particularly useful to identify individuals who are unlikely to decline.

DISCUSSION

These results suggest that M outperforms ADAS-Cog traditional metrics and supports process scoring for word-list recall tests. More research is needed to determine further applicability with other tests and populations.

HIGHLIGHTS

Process scoring and latent modeling were more effective than traditional scoring. Latent recall ability (M) was the best predictor of Clinical Dementia Rating decline at 36 months. The top digital cognitive biomarker model had odds ≈ 90 times greater than the top Alzheimer's Disease Assessment Scale-Cognitive subscale model. Particularly high negative predictive value supports literature on cognitive testing as a useful screen. Consideration of both cognitive and pathological outcomes is needed.

摘要

简介

词汇列表回忆测试通常用于认知评估,而过程评分可能会提高其准确性。我们研究了基线时基于阿尔茨海默病评估量表认知分量表(ADAS-Cog)的衍生、基于过程的数字认知生物标志物(DCB)是否可以预测临床痴呆评定量表(CDR)的纵向结果,并将其与标准指标进行比较。

方法

使用来自 330 名参与者(平均年龄为 71.4 ± 7.2 岁)的阿尔茨海默病神经影像学倡议(ADNI)数据进行分析。我们进行了回归分析,以预测 36 个月时的 CDR,控制了人口统计学和遗传风险,ADAS-Cog 传统评分和 DCB 作为预测因子。

结果

M 是预测 36 个月时 CDR 的最佳指标,是反映回忆能力的 DCB(曲线下面积 = 0.84),优于传统评分。诊断结果表明,M 可能特别有助于识别不太可能出现衰退的个体。

讨论

这些结果表明,M 优于 ADAS-Cog 传统指标,并支持词汇列表回忆测试的过程评分。需要进一步研究以确定其在其他测试和人群中的进一步适用性。

重点

过程评分和潜在模型比传统评分更有效。潜在的回忆能力(M)是预测 36 个月时 CDR 下降的最佳指标。顶级数字认知生物标志物模型的优势比高于顶级阿尔茨海默病评估量表认知分量表模型的优势比 ≈ 90 倍。特别高的阴性预测值支持认知测试作为有用筛查的文献。需要考虑认知和病理结果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/65ce/11485075/9a1c7f16b259/ALZ-20-7274-g001.jpg

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