从现实世界数据预测认知刺激后一年的认知衰退

IF 2 4区 心理学 Q2 PSYCHOLOGY
Borja Camino-Pontes, Francisco Gonzalez-Lopez, Gonzalo Santamaría-Gomez, Antonio Javier Sutil-Jimenez, Carolina Sastre-Barrios, I?igo Fernandez de Pierola, Jesus M. Cortes
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引用次数: 0

摘要

基于真实世界数据(RWD)的临床证据呈指数级积累,提供了更大的可用样本量,这就需要新的方法来处理数据的增强异质性。在这里,我们使用RWD来评估认知能力下降的预测,这是一种临床医生非常感兴趣的现象,但它充满了困难和局限性。更准确地说,从大量的神经心理学训练材料(TMs)中,我们询问是否有可能准确预测一个人在接受测试一年后的认知衰退。特别是,我们对从215个不同测试中获得的分数进行了纵向建模,这些测试分为29个认知领域,来自7902名参与者(40%男性,46%女性,14%未指明)的124,610个实例,每个参与者平均进行16次测试。采用基于ROC分析和交叉验证技术的机器学习方法来克服过拟合,我们发现属于几个认知领域的不同TMs可以准确预测认知衰退,而其他领域表现不佳,这表明预测一年后认知衰退的能力并不特定于任何特定领域,而是广泛分布于各个领域。此外,在处理具有共同诊断标签的个体之间的相同问题时,我们发现一些域对帕金森病和唐氏综合症等疾病的分类更准确,而对阿尔茨海默病或多发性硬化症的分类则不太准确。未来的研究应该将类似的方法与标准的神经心理学测量相结合,以提高可解释性和在不同人群中推广的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
One-year prediction of cognitive decline following cognitive-stimulation from real-world data

Clinical evidence based on real-world data (RWD) is accumulating exponentially providing larger sample sizes available, which demand novel methods to deal with the enhanced heterogeneity of the data. Here, we used RWD to assess the prediction of cognitive decline in a large heterogeneous sample of participants being enrolled with cognitive stimulation, a phenomenon that is of great interest to clinicians but that is riddled with difficulties and limitations. More precisely, from a multitude of neuropsychological Training Materials (TMs), we asked whether was possible to accurately predict an individual's cognitive decline one year after being tested. In particular, we performed longitudinal modelling of the scores obtained from 215 different tests, grouped into 29 cognitive domains, a total of 124,610 instances from 7902 participants (40% male, 46% female, 14% not indicated), each performing an average of 16 tests. Employing a machine learning approach based on ROC analysis and cross-validation techniques to overcome overfitting, we show that different TMs belonging to several cognitive domains can accurately predict cognitive decline, while other domains perform poorly, suggesting that the ability to predict decline one year later is not specific to any particular domain, but is rather widely distributed across domains. Moreover, when addressing the same problem between individuals with a common diagnosed label, we found that some domains had more accurate classification for conditions such as Parkinson's disease and Down syndrome, whereas they are less accurate for Alzheimer's disease or multiple sclerosis. Future research should combine similar approaches to ours with standard neuropsychological measurements to enhance interpretability and the possibility of generalizing across different cohorts.

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来源期刊
Journal of Neuropsychology
Journal of Neuropsychology 医学-心理学
CiteScore
4.50
自引率
4.50%
发文量
34
审稿时长
>12 weeks
期刊介绍: The Journal of Neuropsychology publishes original contributions to scientific knowledge in neuropsychology including: • clinical and research studies with neurological, psychiatric and psychological patient populations in all age groups • behavioural or pharmacological treatment regimes • cognitive experimentation and neuroimaging • multidisciplinary approach embracing areas such as developmental psychology, neurology, psychiatry, physiology, endocrinology, pharmacology and imaging science The following types of paper are invited: • papers reporting original empirical investigations • theoretical papers; provided that these are sufficiently related to empirical data • review articles, which need not be exhaustive, but which should give an interpretation of the state of research in a given field and, where appropriate, identify its clinical implications • brief reports and comments • case reports • fast-track papers (included in the issue following acceptation) reaction and rebuttals (short reactions to publications in JNP followed by an invited rebuttal of the original authors) • special issues.
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