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The connectivity domain: Analyzing resting state fMRI data using feature-based data-driven and model-based methods

机译:连接域:使用基于功能的数据驱动和基于模型的方法分析休息状态FMRI数据

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Spontaneous fluctuations of resting state functional MRI (rsfMRI) have been widely used to understand the macro-connectome of the human brain. However, these fluctuations are not synchronized among subjects, which leads to limitations and makes utilization of first-level model-based methods challenging. Considering this limitation of rsfMRI data in the time domain, we propose to transfer the spatiotemporal information of the rsfMRI data to another domain, the connectivity domain, in which each value represents the same effect across subjects. Using a set of seed networks and a connectivity index to calculate the functional connectivity for each seed network, we trans form data into the connectivity domain by generating connectivity weights for each subject. Comparison of the two domains using a data-driven method suggests several advantages in analyzing data using data-driven methods in the connectivity domain over the time domain. We also demonstrate the feasibility of applying model-based methods in the connectivity domain, which offers a new pathway for the use of first-level model-based methods on rsfMRI data. The connectivity domain, furthermore, demonstrates a unique opportunity to perform first-level feature-based data-driven and model-based analyses. The connectivity domain can be constructed from any technique that identifies sets of features that are similar across subjects and can greatly help researchers in the study of macro-connectome brain function by enabling us to perform a wide range of model-based and data-driven approaches on rsfMRI data, decreasing susceptibility of analysis techniques to parameters that are not related to brain connectivity information, and evaluating both static and dynamic functional connectivity of the brain from a new perspective. (C) 2016 The Authors. Published by Elsevier Inc.
机译:休息状态功能MRI(RSFMRI)的自发波动已被广泛用于了解人脑的宏观连接。然而,这些波动在受试者之间不同步,这导致限制并利用基于第一级模型的方法具有挑战性的。考虑到时域中RSFMRI数据的限制,我们建议将RSFMRI数据的时空信息转移到另一个域,连接域,其中每个值表示跨对象的相同效果。使用一组种子网络和连接索引来计算每个种子网络的功能连接,通过为每个主题生成连接权重,将数据转换为连接域。使用数据驱动方法的两个域的比较表明在时间域中使用连接域中的数据驱动方法分析数据的几个优点。我们还展示了在连接域中应用基于模型的方法的可行性,该方法为在RSFMRI数据上使用基于第一级模型的方法提供了新的路径。此外,连接域表明了执行基于特征的数据驱动和基于模型分析的独特机会。连接域可以从任何技术识别相似跨对象的特征集的任何技术构成,并且可以通过使我们能够执行广泛的基于模型和数据驱动的方法,从而大大帮助研究人员在宏观连接的大脑功能中在RSFMRI数据上,将分析技术的易感性降低到与大脑连接信息无关的参数,以及从新的视角评估大脑的静态和动态功能连接。 (c)2016年作者。 elsevier公司出版

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