静息状态功能MRI数据能量景观分析的可靠性。

ArXiv Pub Date : 2024-08-20
Pitambar Khanra, Johan Nakuci, Sarah Muldoon, Takamitsu Watanabe, Naoki Masuda
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引用次数: 0

摘要

能量景观分析是一种数据驱动的方法,用于分析多维时间序列,包括功能磁共振成像(fMRI)数据。它已被证明是功能磁共振成像数据在健康和疾病方面的有用表征。它将伊辛模型拟合到数据中,并将数据的动态捕捉为受估计的伊辛模型导出的能量景观约束的有噪球的运动。在本研究中,我们检验了能源景观分析的重新测试可靠性。为此,我们构建了一个排列测试,评估表征能量景观的指标在来自同一参与者的不同扫描会话集之间(即,参与者内部可靠性)是否比在来自不同参与者的不同会话集之间更一致(即,参与者之间可靠性)。我们发现,就四个常用指数而言,能量景观分析在参与者内部的重测可靠性显著高于参与者之间的重测信度。我们还表明,变分贝叶斯方法使我们能够估计为每个参与者量身定制的能源景观,它显示出与传统似然最大化方法相当的测试重测可靠性。所提出的方法为以统计控制的可靠性对给定数据集进行个体水平的能量景观分析铺平了道路。
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Reliability of energy landscape analysis of resting-state functional MRI data.

Energy landscape analysis is a data-driven method to analyze multidimensional time series, including functional magnetic resonance imaging (fMRI) data. It has been shown to be a useful characterization of fMRI data in health and disease. It fits an Ising model to the data and captures the dynamics of the data as movement of a noisy ball constrained on the energy landscape derived from the estimated Ising model. In the present study, we examine test-retest reliability of the energy landscape analysis. To this end, we construct a permutation test that assesses whether or not indices characterizing the energy landscape are more consistent across different sets of scanning sessions from the same participant (i.e., within-participant reliability) than across different sets of sessions from different participants (i.e., between-participant reliability). We show that the energy landscape analysis has significantly higher within-participant than between-participant test-retest reliability with respect to four commonly used indices. We also show that a variational Bayesian method, which enables us to estimate energy landscapes tailored to each participant, displays comparable test-retest reliability to that using the conventional likelihood maximization method. The proposed methodology paves the way to perform individual-level energy landscape analysis for given data sets with a statistically controlled reliability.

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