健康年轻人社会功能的预测模型:一项整合神经解剖学、认知和行为数据的机器学习研究。

IF 1.7 4区 医学 Q4 NEUROSCIENCES
Social Neuroscience Pub Date : 2022-10-01 Epub Date: 2022-10-07 DOI:10.1080/17470919.2022.2132285
Kathleen Miley, Martin Michalowski, Fang Yu, Ethan Leng, Barbara J McMorris, Sophia Vinogradov
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引用次数: 0

摘要

社会功能差是一个新出现的公共卫生问题,与身心健康有关。开发预后工具对于识别有不良社会功能风险的个体和指导干预措施至关重要。我们旨在通过使用机器学习评估依赖生物行为数据的模型,为社会功能的预测模型提供信息。来自人类连接体项目健康青年样本(年龄22-35岁,N = 1101),我们建立了支持向量回归模型来估计从大脑形态到行为的变量集的社会功能,这些变量集的复杂性越来越高:1)仅大脑模型,2)大脑认知模型,3)认知行为模型,以及4)组合大脑认知行为模型。评估了每个模型的预测准确性,并确定了单个变量对模型性能的重要性。联合和认知行为模型显著预测了社会功能,而仅大脑和大脑认知模型则没有。负面影响、心理健康、外向、退缩以及额中部和颞上部的皮质厚度是联合模型中最重要的预测因素。结果表明,使用机器学习方法可以准确预测社会功能。对于健康的年轻人来说,行为标志物可能比大脑测量更能预测社会功能,并可能代表预防性干预的重要杠杆点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive models for social functioning in healthy young adults: A machine learning study integrating neuroanatomical, cognitive, and behavioral data.

Poor social functioning is an emerging public health problem associated with physical and mental health consequences. Developing prognostic tools is critical to identify individuals at risk for poor social functioning and guide interventions. We aimed to inform prediction models of social functioning by evaluating models relying on bio-behavioral data using machine learning. With data from the Human Connectome Project Healthy Young Adult sample (age 22-35, N = 1,101), we built Support Vector Regression models to estimate social functioning from variable sets of brain morphology to behavior with increasing complexity: 1) brain-only model, 2) brain-cognition model, 3) cognition-behavioral model, and 4) combined brain-cognition-behavioral model. Predictive accuracy of each model was assessed and the importance of individual variables for model performance was determined. The combined and cognition-behavioral models significantly predicted social functioning, whereas the brain-only and brain-cognition models did not. Negative affect, psychological wellbeing, extraversion, withdrawal, and cortical thickness of the rostral middle-frontal and superior-temporal regions were the most important predictors in the combined model. Results demonstrate that social functioning can be accurately predicted using machine learning methods. Behavioral markers may be more significant predictors of social functioning than brain measures for healthy young adults and may represent important leverage points for preventative intervention.

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来源期刊
Social Neuroscience
Social Neuroscience 医学-神经科学
CiteScore
3.40
自引率
5.00%
发文量
36
审稿时长
6-12 weeks
期刊介绍: Social Neuroscience features original empirical Research Papers as well as targeted Reviews, Commentaries and Fast Track Brief Reports that examine how the brain mediates social behavior, social cognition, social interactions and relationships, group social dynamics, and related topics that deal with social/interpersonal psychology and neurobiology. Multi-paper symposia and special topic issues are organized and presented regularly as well. The goal of Social Neuroscience is to provide a place to publish empirical articles that intend to further our understanding of the neural mechanisms contributing to the development and maintenance of social behaviors, or to understanding how these mechanisms are disrupted in clinical disorders.
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