首页> 外文会议>Image Processing pt.3; Progress in Biomedical Optics and Imaging; vol.7 no.30 >Integrating and Classifying Parametric Features from fMRI Data for Brain Function Characterization
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Integrating and Classifying Parametric Features from fMRI Data for Brain Function Characterization

机译:从fMRI数据整合和分类参数特征以进行脑功能表征

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Recent advances in functional magnetic resonance imaging (fMRI) provide an unparalleled opportunity for measuring and characterizing brain function in humans. However, the typically small signal change is very noisy and susceptible to various artifacts, such as those caused by scanner drift, head motion, and cardio-respiratory effects. This paper presents an integrated and exploratory approach to characterize brain function from fMRI data by providing techniques for both functional segregation and integration without any prior knowledge of the experimental paradigm. We demonstrate that principal component analysis (PCA) can be used for temporal shape modeling and shape feature extraction, shedding lights from a different perspective for the application of PCA in fMRI analysis. Appropriate feature screening is also performed to eliminate the parameters corresponding to data noise or artifacts. The extracted and screened shape parameters are revealed to be effective and efficient representations of the true fMRI time series. We then propose a novel strategy which classifies the fMRI data into distinct activation regions based on the selected temporal shape features. Furthermore, we propose to infer functional connectivity of the identified patterns by the distance measures in this parametric shape feature space. Validation for accuracy, sensitivity, and efficiency of the method and comparison with existing fMRI analysis techniques are performed using both simulated and real fMRI data.
机译:功能磁共振成像(fMRI)的最新进展为测量和表征人的脑功能提供了无与伦比的机会。但是,通常较小的信号变化会非常嘈杂,容易受到各种伪影的影响,例如由扫描仪漂移,头部运动和心脏呼吸作用引起的伪影。本文提供了一种综合性的探索性方法,通过提供功能隔离和集成技术而无需功能性实验范例的任何先验知识,即可从功能磁共振成像数据中表征脑功能。我们证明了主成分分析(PCA)可用于时间形状建模和形状特征提取,从不同的角度射出光以用于PCA在fMRI分析中的应用。还执行适当的特征筛选以消除与数据噪声或伪像相对应的参数。提取和筛选的形状参数显示为真实的fMRI时间序列的有效表示。然后,我们提出了一种新颖的策略,该策略根据所选的时间形状特征将fMRI数据分为不同的激活区域。此外,我们建议通过此参数形状特征空间中的距离度量来推断所识别模式的功能连通性。使用模拟和真实fMRI数据对方法的准确性,灵敏度和效率进行验证,并与现有的fMRI分析技术进行比较。

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