Predicting cognitive change using functional, structural, and neuropsychological predictors.

IF 4.1 Q1 CLINICAL NEUROLOGY
Brain communications Pub Date : 2025-04-18 eCollection Date: 2025-01-01 DOI:10.1093/braincomms/fcaf155
Laurie Décarie-Labbé, Samira Mellah, Isaora Z Dialahy, Sylvie Belleville
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Abstract

To effectively address Alzheimer's disease, it is crucial to understand its earliest manifestations, underlying mechanisms and early markers of progression. Recent findings of very early brain activation anomalies highlight their potential for early disease characterization and predicting future cognitive decline. Our objective was to evaluate the value of brain activation-both individually and in combination with structural and neuropsychological measures-for predicting cognitive change. The study included 105 individuals from the Consortium for the Early Identification of Alzheimer's Disease-Quebec cohort who exhibited subjective cognitive decline or mild cognitive impairment. Cognitive decline was assessed by calculating the slope of Montreal Cognitive Assessment scores using regression models across successive assessments, and individuals were characterized as either decliners or stable based on clinically reliable change. We evaluated cognitive decline predictions using unimodal models for each class of predictors and multimodal models that combined these predictors. Functional activation emerged as a strong predictor of cognitive change (R²=52.5%), with 87.6% accuracy and 98.7% specificity, performing comparably to structural and neuropsychological measures. Although the unimodal functional model exhibited high specificity, indicating that functional abnormalities frequently predict future decline, it had low sensitivity (60%), meaning that the absence of abnormalities does not rule out future decline. Multimodal models provided greater explanatory power than unimodal models and greater sensitivity than the functional model. These findings highlight the potential role of early brain activation anomalies in the early detection of future cognitive changes, offering valuable insights for clinicians and researchers in assessing cognitive decline risk and refining clinical trial criteria.

使用功能、结构和神经心理学预测预测认知变化。
为了有效地治疗阿尔茨海默病,了解其早期表现、潜在机制和早期进展标志至关重要。最近对早期大脑激活异常的发现强调了它们在早期疾病表征和预测未来认知能力下降方面的潜力。我们的目的是评估大脑激活的价值——无论是单独的还是结合结构和神经心理学的测量——来预测认知变化。该研究包括来自阿尔茨海默病早期识别联盟魁北克队列的105名个体,他们表现出主观认知能力下降或轻度认知障碍。认知衰退是通过计算蒙特利尔认知评估分数的斜率来评估的,使用回归模型在连续的评估中进行评估,并根据临床可靠的变化将个体定性为下降或稳定。我们对每一类预测因子和结合这些预测因子的多模态模型使用单模态模型来评估认知衰退预测。功能激活是认知变化的有力预测指标(R²=52.5%),准确度为87.6%,特异性为98.7%,与结构和神经心理学测量结果相当。虽然单峰功能模型显示出高特异性,表明功能异常经常预测未来的衰退,但它的敏感性较低(60%),这意味着没有异常并不排除未来的衰退。多模态模型比单模态模型具有更强的解释力,比功能模型具有更高的灵敏度。这些发现强调了早期大脑激活异常在早期发现未来认知变化中的潜在作用,为临床医生和研究人员评估认知能力下降风险和完善临床试验标准提供了有价值的见解。
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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CiteScore
7.00
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0.00%
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