Department of Psychology.
Department of Psychiatry/Biobehavioral Sciences, University of California Los Angeles (UCLA), Los Angeles, CA 90095, USA.
Soc Cogn Affect Neurosci. 2017 Sep 1;12(9):1437-1447. doi: 10.1093/scan/nsx084.
Affect labeling (putting feelings into words) is a form of incidental emotion regulation that could underpin some benefits of expressive writing (i.e. writing about negative experiences). Here, we show that neural responses during affect labeling predicted changes in psychological and physical well-being outcome measures 3 months later. Furthermore, neural activity of specific frontal regions and amygdala predicted those outcomes as a function of expressive writing. Using supervised learning (support vector machines regression), improvements in four measures of psychological and physical health (physical symptoms, depression, anxiety and life satisfaction) after an expressive writing intervention were predicted with an average of 0.85% prediction error [root mean square error (RMSE) %]. The predictions were significantly more accurate with machine learning than with the conventional generalized linear model method (average RMSE: 1.3%). Consistent with affect labeling research, right ventrolateral prefrontal cortex (RVLPFC) and amygdalae were top predictors of improvement in the four outcomes. Moreover, RVLPFC and left amygdala predicted benefits due to expressive writing in satisfaction with life and depression outcome measures, respectively. This study demonstrates the substantial merit of supervised machine learning for real-world outcome prediction in social and affective neuroscience.
情感标签(用语言表达情感)是一种偶然的情绪调节形式,它可能是表达性写作(即书写负面经历)的一些益处的基础。在这里,我们表明,情感标签过程中的神经反应可以预测 3 个月后心理和身体健康结果测量的变化。此外,特定的额叶区域和杏仁核的神经活动可以预测表达性写作的这些结果。使用监督学习(支持向量机回归),对情感表达干预后四项身心健康指标(身体症状、抑郁、焦虑和生活满意度)的改善进行了预测,平均预测误差为 0.85%(均方根误差[RMSE]%)。与传统的广义线性模型方法相比,机器学习的预测精度显著更高(平均 RMSE:1.3%)。与情感标签研究一致,右侧腹外侧前额叶皮层(RVLPFC)和杏仁核是四个结果改善的最佳预测因子。此外,RVLPFC 和左侧杏仁核分别预测了生活满意度和抑郁结果测量中表达性写作带来的益处。这项研究证明了监督机器学习在社会和情感神经科学中进行实际结果预测的巨大优势。