Disentangling Socioeconomic Status and Race in Infant Brain, Birth Weight, and Gestational Age at Birth: A Neural Network Analysis

Kathryn Sarullo , Deanna M. Barch , Christopher D. Smyser , Cynthia Rogers , Barbara B. Warner , J. Philip Miller , Sarah K. England , Joan Luby , S. Joshua Swamidass
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Abstract

Background

Race is commonly used as a proxy for multiple features including socioeconomic status. It is critical to dissociate these factors, to identify mechanisms that affect infant outcomes, such as birth weight, gestational age, and brain development, and to direct appropriate interventions and shape public policy.

Methods

Demographic, socioeconomic, and clinical variables were used to model infant outcomes. There were 351 participants included in the analysis for birth weight and gestational age. For the analysis using brain volumes, 280 participants were included after removing participants with missing magnetic resonance imaging scans and those matching our exclusion criteria. We modeled these three different infant outcomes, including infant brain, birth weight, and gestational age, with both linear and nonlinear models.

Results

Nonlinear models were better predictors of infant birth weight than linear models (R2 = 0.172 vs. R2 = 0.145, p = .005). In contrast to linear models, nonlinear models ranked income, neighborhood disadvantage, and experiences of discrimination higher in importance than race while modeling birth weight. Race was not an important predictor for either gestational age or structural brain volumes.

Conclusions

Consistent with the extant social science literature, the findings related to birth weight suggest that race is a linear proxy for nonlinear factors related to structural racism. Methods that can disentangle factors often correlated with race are important for policy in that they may better identify and rank the modifiable factors that influence outcomes.

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解开社会经济地位和种族对婴儿大脑、出生体重和出生时胎龄的影响:一个神经网络分析
背景种族通常被用来代表包括社会经济地位在内的多种特征。将这些因素区分开来至关重要,这样才能确定影响婴儿结局(如出生体重、胎龄和大脑发育)的机制,并指导适当的干预措施和制定公共政策。共有 351 名参与者参与了出生体重和胎龄分析。在使用脑容量进行分析时,我们剔除了磁共振成像扫描缺失和符合排除标准的 280 名参与者。结果非线性模型比线性模型更能预测婴儿出生体重(R2 = 0.172 vs. R2 = 0.145,p = .005)。与线性模型相比,非线性模型在建立出生体重模型时,收入、邻里劣势和歧视经历的重要性高于种族。结论与现有的社会科学文献一致,与出生体重相关的研究结果表明,种族是与结构性种族主义相关的非线性因素的线性代表。能够将通常与种族相关的因素分离开来的方法对政策制定非常重要,因为这些方法可以更好地识别影响结果的可改变因素并对其进行排序。
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来源期刊
Biological psychiatry global open science
Biological psychiatry global open science Psychiatry and Mental Health
CiteScore
4.00
自引率
0.00%
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审稿时长
91 days
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