利用机器学习方法从大脑连接数据中预测人一生的语言能力

IF 3.3 2区 医学 Q1 NEUROIMAGING
Deborah Früh, Camilla Mendl-Heinisch, Nora Bittner, Susanne Weis, Svenja Caspers
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引用次数: 0

摘要

与非语言认知(如执行或记忆功能)相比,与语言相关的认知通常会保持更稳定,直到生命的后期。然而,不同的语言相关过程,例如,语言流利度与词汇知识,似乎在整个生命周期中表现出不同的轨迹。语言功能差异的一个潜在解释可能是不同大规模大脑网络的功能和结构网络结构的改变。例如,语言能力的差异与额顶叶(FPN)和默认模式网络(DMN)内部和之间的交流有关。然而,这些网络内的大脑连接是否能在整个生命周期中为个人水平的语言表现提供信息,仍然是一个开放的问题。这方面的进一步信息可能是非常可取的,因为语言能力使我们能够参与日常活动,与生活质量有关,并且可以在预防和干预设置中考虑,以促进整个生命周期的认知健康。到目前为止,基于静息状态功能连接(FC)和结构连接(SC)数据的预测结果已经在不同的样本、年龄组和机器学习(ML)方法中得到了报道。因此,本研究旨在研究基于DMN、FPN和全脑脑连接数据的语言流畅性和词汇知识的可预测性,并使用ML方法在一个终身样本中进行研究(N = 717;年龄范围:18-85岁),来自1000BRAINS研究。因此,预测性能系统地比较了(i)语言[语言流畅性和词汇知识]和非语言能力[处理速度和视觉工作记忆],(ii)模式[FC和SC数据],(iii)特征集[DMN, FPN, DMN-FPN和全脑],以及(iv)样本[总体,年轻人和老年人组]。目前的研究结果表明,语言能力不能从跨特征集和样本的FC和SC数据中可靠地预测。因此,在输入方式、特征集和样本之间,语言流畅性和词汇知识之间没有可预测性差异。与语言功能相比,非语言能力可以从连接数据中适度预测,特别是SC,在整个年龄组和更年轻的年龄组中。然而,基于当前选择的连通性数据的非语言认知功能的令人满意的预测性能在老年群体中没有遇到。因此,目前的研究结果强调,在整个生命周期中,与非语言能力(尤其是执行功能)相比,从一般认知网络和整个大脑的大脑连接数据中预测语言功能可能更困难。因此,似乎有必要更密切地研究不同认知功能和年龄组之间的可预测性差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Prediction of Verbal Abilities From Brain Connectivity Data Across the Lifespan Using a Machine Learning Approach

Prediction of Verbal Abilities From Brain Connectivity Data Across the Lifespan Using a Machine Learning Approach

Compared to nonverbal cognition such as executive or memory functions, language-related cognition generally appears to remain more stable until later in life. Nevertheless, different language-related processes, for example, verbal fluency versus vocabulary knowledge, appear to show different trajectories across the life span. One potential explanation for differences in verbal functions may be alterations in the functional and structural network architecture of different large-scale brain networks. For example, differences in verbal abilities have been linked to the communication within and between the frontoparietal (FPN) and default mode network (DMN). It, however, remains open whether brain connectivity within these networks may be informative for language performance at the individual level across the life span. Further information in this regard may be highly desirable as verbal abilities allow us to participate in daily activities, are associated with quality of life, and may be considered in preventive and interventional setups to foster cognitive health across the life span. So far, mixed prediction results based on resting-state functional connectivity (FC) and structural connectivity (SC) data have been reported for language abilities across different samples, age groups, and machine-learning (ML) approaches. Therefore, the current study set out to investigate the predictability of verbal fluency and vocabulary knowledge based on brain connectivity data in the DMN, FPN, and the whole brain using an ML approach in a lifespan sample (N = 717; age range: 18–85) from the 1000BRAINS study. Prediction performance was, thereby, systematically compared across (i) verbal [verbal fluency and vocabulary knowledge] and nonverbal abilities [processing speed and visual working memory], (ii) modalities [FC and SC data], (iii) feature sets [DMN, FPN, DMN-FPN, and whole brain], and (iv) samples [total, younger, and older aged group]. Results from the current study showed that verbal abilities could not be reliably predicted from FC and SC data across feature sets and samples. Thereby, no predictability differences emerged between verbal fluency and vocabulary knowledge across input modalities, feature sets, and samples. In contrast to verbal functions, nonverbal abilities could be moderately predicted from connectivity data, particularly SC, in the total and younger age group. Satisfactory prediction performance for nonverbal cognitive functions based on currently chosen connectivity data was, however, not encountered in the older age group. Current results, hence, emphasized that verbal functions may be more difficult to predict from brain connectivity data in domain-general cognitive networks and the whole brain compared to nonverbal abilities, particularly executive functions, across the life span. Thus, it appears warranted to more closely investigate differences in predictability between different cognitive functions and age groups.

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来源期刊
Human Brain Mapping
Human Brain Mapping 医学-核医学
CiteScore
8.30
自引率
6.20%
发文量
401
审稿时长
3-6 weeks
期刊介绍: Human Brain Mapping publishes peer-reviewed basic, clinical, technical, and theoretical research in the interdisciplinary and rapidly expanding field of human brain mapping. The journal features research derived from non-invasive brain imaging modalities used to explore the spatial and temporal organization of the neural systems supporting human behavior. Imaging modalities of interest include positron emission tomography, event-related potentials, electro-and magnetoencephalography, magnetic resonance imaging, and single-photon emission tomography. Brain mapping research in both normal and clinical populations is encouraged. Article formats include Research Articles, Review Articles, Clinical Case Studies, and Technique, as well as Technological Developments, Theoretical Articles, and Synthetic Reviews. Technical advances, such as novel brain imaging methods, analyses for detecting or localizing neural activity, synergistic uses of multiple imaging modalities, and strategies for the design of behavioral paradigms and neural-systems modeling are of particular interest. The journal endorses the propagation of methodological standards and encourages database development in the field of human brain mapping.
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