Javascript must be enabled to continue!
Connectome predictive modeling of trait mindfulness
View through CrossRef
Abstract
Introduction
Trait mindfulness refers to one’s disposition or tendency to pay attention to their experiences in the present moment, in a non-judgmental and accepting way. Trait mindfulness has been robustly associated with positive mental health outcomes, but its neural underpinnings are poorly understood. Prior resting-state fMRI studies have associated trait mindfulness with within- and between-network connectivity of the default-mode (DMN), fronto-parietal (FPN), and salience networks. However, it is unclear how generalizable the findings are, how they relate to different components of trait mindfulness, and how other networks and brain areas may be involved.
Methods
To address these gaps, we conducted the largest resting-state fMRI study of trait mindfulness to-date, consisting of a pre-registered connectome predictive modeling analysis in 367 adults across three samples collected at different sites.
Results
In the model-training dataset, we did not find connections that predicted overall trait mindfulness, but we identified neural models of two mindfulness subscales,
Acting with Awareness
and
Non-judging
. Models included both positive networks (sets of pairwise connections that positively predicted mindfulness with increasing connectivity) and negative networks, which showed the inverse relationship. The
Acting with Awareness
and
Non-judging
positive network models showed distinct network representations involving FPN and DMN, respectively. The negative network models, which overlapped significantly across subscales, involved connections across the whole brain with prominent involvement of somatomotor, visual and DMN networks. Only the negative networks generalized to predict subscale scores out-of-sample, and not across both test datasets. Predictions from both models were also negatively correlated with predictions from a well-established mind-wandering connectome model.
Conclusions
We present preliminary neural evidence for a generalizable connectivity models of trait mindfulness based on specific affective and cognitive facets. However, the incomplete generalization of the models across all sites and scanners, limited stability of the models, as well as the substantial overlap between the models, underscores the difficulty of finding robust brain markers of mindfulness facets.
Title: Connectome predictive modeling of trait mindfulness
Description:
Abstract
Introduction
Trait mindfulness refers to one’s disposition or tendency to pay attention to their experiences in the present moment, in a non-judgmental and accepting way.
Trait mindfulness has been robustly associated with positive mental health outcomes, but its neural underpinnings are poorly understood.
Prior resting-state fMRI studies have associated trait mindfulness with within- and between-network connectivity of the default-mode (DMN), fronto-parietal (FPN), and salience networks.
However, it is unclear how generalizable the findings are, how they relate to different components of trait mindfulness, and how other networks and brain areas may be involved.
Methods
To address these gaps, we conducted the largest resting-state fMRI study of trait mindfulness to-date, consisting of a pre-registered connectome predictive modeling analysis in 367 adults across three samples collected at different sites.
Results
In the model-training dataset, we did not find connections that predicted overall trait mindfulness, but we identified neural models of two mindfulness subscales,
Acting with Awareness
and
Non-judging
.
Models included both positive networks (sets of pairwise connections that positively predicted mindfulness with increasing connectivity) and negative networks, which showed the inverse relationship.
The
Acting with Awareness
and
Non-judging
positive network models showed distinct network representations involving FPN and DMN, respectively.
The negative network models, which overlapped significantly across subscales, involved connections across the whole brain with prominent involvement of somatomotor, visual and DMN networks.
Only the negative networks generalized to predict subscale scores out-of-sample, and not across both test datasets.
Predictions from both models were also negatively correlated with predictions from a well-established mind-wandering connectome model.
Conclusions
We present preliminary neural evidence for a generalizable connectivity models of trait mindfulness based on specific affective and cognitive facets.
However, the incomplete generalization of the models across all sites and scanners, limited stability of the models, as well as the substantial overlap between the models, underscores the difficulty of finding robust brain markers of mindfulness facets.
Related Results
Peran Trait Mindfulness terhadap Fear of Missing Out Pengguna Media Sosial
Peran Trait Mindfulness terhadap Fear of Missing Out Pengguna Media Sosial
<p style="text-align: justify;"><strong><em>Abstract. </em></strong><em>Indonesia's increasing internet use has positive and negative impacts on...
Mindfulness and Reward-Based Eating: Examining the Role of Trait Mindfulness and a Mobile Mindfulness Intervention
Mindfulness and Reward-Based Eating: Examining the Role of Trait Mindfulness and a Mobile Mindfulness Intervention
Abstract
Objectives
Reward-based eating, characterized by preoccupation with food-related thoughts, loss of control while...
ecision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predi
ecision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predi
The scope of sensor networks and the Internet of Things spanning rapidly to diversified domains but not limited to sports, health, and business trading. In recent past, the sensors...
Examining How Headspace Impacts Mindfulness Mechanisms Over an 8-Week App-Based Mindfulness Intervention
Examining How Headspace Impacts Mindfulness Mechanisms Over an 8-Week App-Based Mindfulness Intervention
Abstract
Objectives
Theoretical work proposed that mindfulness interventions function by enhancing various mindfulness mechanisms, including accepta...
Pengaruh Mindfulness terhadap Work Engagement pada Pekerja Startup Digital di Indonesia
Pengaruh Mindfulness terhadap Work Engagement pada Pekerja Startup Digital di Indonesia
Abstract. This study aims to determine the level of mindfulness at work and work engagement, and to see how much influence mindfulness at work has on work engagement for digital st...
Examining the Use of Virtual Reality to Support Mindfulness Skills Practice in Mood and Anxiety Disorders: Mixed Methods Study (Preprint)
Examining the Use of Virtual Reality to Support Mindfulness Skills Practice in Mood and Anxiety Disorders: Mixed Methods Study (Preprint)
BACKGROUND
Virtual reality (VR) has been proposed as a technology to support mindfulness practice through promoting increased engagement and presence. The p...
Psychometric Validation and Demographic Differences in Two Recently Developed Trait Mindfulness Measures
Psychometric Validation and Demographic Differences in Two Recently Developed Trait Mindfulness Measures
<p>Although in recent years an increasingly large body of mindfulness research has accrued, there continues to be a lack of information about how to measure trait mindfulness...
Mindfulness and Education
Mindfulness and Education
This article focuses on the literature on mindfulness and mindfulness meditation with children and young people in schools and in higher education. It touches on mindfulness for ad...

