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Algorithm for the identification of resting state independent networks in fMRI

机译:fMRI中静止状态独立网络的识别算法

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Studies have shown that the brain is constituted by anatomically segregated and functionally specific regions working in synergy as a complex network. In this context, the brain at rest does not passively retrieve environmental information and respond but instead it maintains an active representation modulated by sensory information. Using independent component analysis (ICA) over resting state recordings a discrete set of resting state networks (RSNs) has been found, which proven to be systematically present across individuals and to be modified by the state of consciousness and also in disease. ICA's main drawback is that its output consists of a series of 3D z-score maps where noise and physiological components are randomly mixed. In this work we present a computational method composed by an ICA-based noise filtering preprocessing pipeline and a template-based identification algorithm that combines spatial comparison metrics through a voting system developed to find RSNs in a subject-by-subject basis. To validate it, we use a publicly available dataset consisting of 75 resting state fMRI sessions from 25 participants scanned three different times each one. For most common RSNs the correct candidate won the voting 93% of the times and it was voted at least once in 99%. Then we probe within-subject consistency in detected RSNs by showing augmented correlation in networks from the same subject. Finally, by comparing obtained mean RSNs with the ones from nearly 30,000 participants we show that our method constitutes a personalized-medicine oriented approach to shorten the gap between RSN research and clinical applications.
机译:研究表明,大脑是由解剖上分离的功能特定区域组成的,这些区域协同工作是一个复杂的网络。在这种情况下,静止的大脑不会被动地获取环境信息并做出反应,而是会保持由感官信息调制的主动表示。在静息状态记录上使用独立成分分析(ICA),发现了一组离散的静息状态网络(RSN),事实证明它们在个体中系统存在,并且会因意识状态以及疾病而改变。 ICA的主要缺点是其输出包含一系列3D z得分图,其中噪声和生理成分是随机混合的。在这项工作中,我们提出了一种计算方法,该方法由基于ICA的噪声过滤预处理流水线和基于模板的识别算法组成,该算法通过开发的投票系统将空间比较度量结合起来,以逐个主题地查找RSN。为了验证这一点,我们使用了一个公开数据集,该数据集由来自25位参与者的75次静息状态fMRI会话组成,每个参与者扫描了3次不同的时间。对于大多数常见的RSN,正确的候选人赢得了93%的投票,至少有99%的投票。然后,我们通过显示来自同一受试者的网络中的增强相关性,来探测检测到的RSN中的受试者内部一致性。最后,通过将获得的平均RSN与来自近30,000名参与者的平均RSN进行比较,我们表明,我们的方法构成了一种面向个性化医学的方法,以缩短RSN研究与临床应用之间的差距。

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