使用基于任务的功能磁共振成像的功能连通性的图理论测量,基于练习持续时间的拉加瑜伽冥想者分类。

IF 1.1 Q3 INTEGRATIVE & COMPLEMENTARY MEDICINE International Journal of Yoga Pub Date : 2022-05-01 Epub Date: 2022-09-05 DOI:10.4103/ijoy.ijoy_17_22
Ashwini S Savanth, P A Vijaya, Ajay Kumar Nair, Bindu M Kutty
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引用次数: 0

摘要

背景:功能性磁共振成像(fMRI)对冥想等心理训练技术的研究报告了冥想的好处,比如提高注意力和注意力,更好的情绪调节,以及减少压力和焦虑。尽管有几项研究调查了不同冥想传统的长期冥想者和短期冥想者的功能激活和连通性,但目前尚不清楚长期冥想练习是否会在任务执行过程中持续带来大脑功能连通性网络特性的明显变化。事实上,针对冥想者的基于任务的功能连通性研究很少。目的:本研究旨在根据大脑感兴趣区域之间的功能连接来区分长期和短期的拉加瑜伽冥想者。当冥想者执行一项引人入胜的任务时,基于任务的fMRI被捕获。使用CONN工具箱计算基于图论的任务型fMRI功能连通性度量,并使用机器学习模型作为特征对两组进行分类。研究对象和方法:在本研究中,我们招募了两个年龄和性别匹配的Brahma Kumaris传统的Rajayoga冥想者,他们的冥想体验时间不同:长期实践者(n = 12,平均13,596小时)和短期实践者(n = 10,平均1095小时)。在他们执行一项专注的任务时获得fMRI数据,并根据这些数据计算功能连接指标。这些指标被用作训练机器学习算法的特征。具体来说,我们使用由图度量、全局效率和局部效率生成的邻接矩阵作为特征。我们计算了132个roi和32个网络roi的功能连通性。使用统计分析:训练逻辑回归、支持向量机、决策树、随机森林、梯度提升树等5种机器学习模型对两组进行分类。准确度、精密度、灵敏度、选择性、曲线下面积、接收机工作特性曲线作为性能指标。结果:图度量是有效的特征,决策树、随机森林和梯度增强树等基于树的算法在对两组冥想者进行分类时产生了最好的性能(测试准确率>84%,roi为132)。结论:我们的研究结果支持长期冥想练习即使在非冥想环境下也能改变大脑功能连接网络的假设。此外,从高维fMRI数据的图理论度量中使用邻接矩阵为机器学习分类器提供了一个有前途的特征集。
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Classification of Rajayoga Meditators Based on the Duration of Practice Using Graph Theoretical Measures of Functional Connectivity from Task-Based Functional Magnetic Resonance Imaging.
Context: Functional magnetic resonance imaging (fMRI) studies on mental training techniques such as meditation have reported benefits like increased attention and concentration, better emotional regulation, as well as reduced stress and anxiety. Although several studies have examined functional activation and connectivity in long-term as well as short-term meditators from different meditation traditions, it is unclear if long-term meditation practice brings about distinct changes in network properties of brain functional connectivity that persist during task performance. Indeed, task-based functional connectivity studies of meditators are rare. Aims: This study aimed to differentiate between long-term and short-term Rajayoga meditators based on functional connectivity between regions of interest in the brain. Task-based fMRI was captured as the meditators performed an engaging task. The graph theoretical-based functional connectivity measures of task-based fMRI were calculated using CONN toolbox and were used as features to classify the two groups using Machine Learning models. Subjects and Methods: In this study, we recruited two age and sex-matched groups of Rajayoga meditators from the Brahma Kumaris tradition that differed in the duration of their meditation experience: Long-term practitioners (n = 12, mean 13,596 h) and short-term practitioners (n = 10, mean 1095 h). fMRI data were acquired as they performed an engaging task and functional connectivity metrics were calculated from this data. These metrics were used as features in training machine learning algorithms. Specifically, we used adjacency matrices generated from graph measures, global efficiency, and local efficiency, as features. We computed functional connectivity with 132 ROIs as well as 32 network ROIs. Statistical Analysis Used: Five machine learning models, such as logistic regression, SVM, decision tree, random forest, and gradient boosted tree, were trained to classify the two groups. Accuracy, precision, sensitivity, selectivity, area under the curve receiver operating characteristics curve were used as performance measures. Results: The graph measures were effective features, and tree-based algorithms such as decision tree, random forest, and gradient boosted tree yielded the best performance (test accuracy >84% with 132 ROIs) in classifying the two groups of meditators. Conclusions: Our results support the hypothesis that long-term meditative practices alter brain functional connectivity networks even in nonmeditative contexts. Further, the use of adjacency matrices from graph theoretical measures of high-dimensional fMRI data yields a promising feature set for machine learning classifiers.
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来源期刊
International Journal of Yoga
International Journal of Yoga INTEGRATIVE & COMPLEMENTARY MEDICINE-
自引率
12.50%
发文量
37
审稿时长
24 weeks
期刊最新文献
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