Decoding mindfulness with multivariate predictive models.

Jarrod A Lewis-Peacock, Tor D Wager, Todd S Braver
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Abstract

Identifying the brain mechanisms that underlie the salutary effects of mindfulness meditation and related practices is a critical goal of contemplative neuroscience. Here we suggest that the use of multivariate predictive models represents a promising and powerful methodology that could be better leveraged to pursue this goal. This approach incorporates key principles of multivariate decoding, predictive classification, and model-based analyses, all of which represent a strong departure from conventional brain mapping approaches. We highlight two such research strategies - state induction and neuromarker identification - and provide illustrative examples of how these approaches have been used to examine central questions in mindfulness, such as the distinction between internally directed focused attention and mind wandering, and the role of mindfulness interventions on somatic pain and drug-related cravings. We conclude by discussing important issues to be addressed with future research, including key tradeoffs between using a personalized versus population-based approach to predictive modeling.

用多元预测模型解码正念。
确定正念冥想和相关练习产生有益影响的大脑机制是沉思神经科学的一个重要目标。在此,我们建议使用多变量预测模型作为一种有前途且强大的方法,以更好地实现这一目标。这种方法融合了多元解码、预测分类和基于模型分析的关键原则,所有这些都与传统的脑图谱方法大相径庭。我们重点介绍了两种这样的研究策略--状态诱导和神经标记物识别--并举例说明了这些方法是如何被用于研究正念的核心问题的,如内部引导的集中注意力和思想游离之间的区别,以及正念干预对躯体疼痛和药物相关渴求的作用。最后,我们讨论了未来研究中需要解决的重要问题,包括使用个性化方法与基于人群的方法进行预测建模之间的关键权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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