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A Java-based fMRI Processing Pipeline Evaluation System for Assessment of Univariate General Linear Model and Multivariate Canonical Variate Analysis-based Pipelines

机译:基于Java的fMRI处理管道评估系统,用于评估基于单变量通用线性模型和基于多元规范变量分析的管道

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摘要

As functional magnetic resonance imaging (fMRI) becomes widely used, the demands for evaluation of fMRI processing pipelines and validation of fMRI analysis results is increasing rapidly. The current NPAIRS package, an IDL-based fMRI processing pipeline evaluation framework, lacks system interoperability and the ability to evaluate general linear model (GLM)-based pipelines using prediction metrics. Thus, it can not fully evaluate fMRI analytical software modules such as FSL.FEAT and NPAIRS.GLM. In order to overcome these limitations, a Java-based fMRI processing pipeline evaluation system was developed. It integrated YALE (a machine learning environment) into Fiswidgets (a fMRI software environment) to obtain system interoperability and applied an algorithm to measure GLM prediction accuracy. The results demonstrated that the system can evaluate fMRI processing pipelines with univariate GLM and multivariate canonical variates analysis (CVA)-based models on real fMRI data based on prediction accuracy (classification accuracy) and statistical parametric image (SPI) reproducibility. In addition, a preliminary study was performed where four fMRI processing pipelines with GLM and CVA modules such as FSL.FEAT and NPAIRS.CVA were evaluated with the system. The results indicated that (1) the system can compare different fMRI processing pipelines with heterogeneous models (NPAIRS.GLM, NPAIRS.CVA and FSL.FEAT) and rank their performance by automatic performance scoring, and (2) the rank of pipeline performance is highly dependent on the preprocessing operations. These results suggest that the system will be of value for the comparison, validation, standardization and optimization of functional neuroimaging software packages and fMRI processing pipelines.
机译:随着功能磁共振成像(fMRI)的广泛使用,对fMRI处理管道的评估和对fMRI分析结果的验证的需求迅速增长。当前的NPAIRS软件包是一个基于IDL的fMRI处理管道评估框架,缺乏系统的互操作性,并且缺乏使用预测指标评估基于通用线性模型(GLM)的管道的能力。因此,它不能完全评估fMRI分析软件模块,例如FSL.FEAT和NPAIRS.GLM。为了克服这些限制,开发了基于Java的fMRI处理管道评估系统。它将YALE(机器学习环境)集成到Fiswidgets(fMRI软件环境)中,以获得系统互操作性,并应用了一种算法来测量GLM预测准确性。结果表明,该系统可以基于预测准确度(分类准确度)和统计参数图像(SPI)再现性,使用基于单变量GLM和基于多元规范变异分析(CVA)的模型对真实fMRI数据进行评估。此外,还进行了初步研究,其中使用该系统评估了具有GLM和CVA模块(例如FSL.FEAT和NPAIRS.CVA)的四个fMRI处理管道。结果表明:(1)系统可以将不同的fMRI处理管道与异构模型(NPAIRS.GLM,NPAIRS.CVA和FSL.FEAT)进行比较,并通过自动性能评分对它们的性能进行排名,(2)管道性能的等级为高度依赖于预处理操作。这些结果表明,该系统对于功能性神经影像软件包和功能磁共振成像处理管线的比较,验证,标准化和优化具有价值。

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