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A Parallel Independent Component Analysis Approach to Investigate Genomic Influence on Brain Function

机译:研究基因组对脑功能影响的并行独立成分分析方法

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Relationships between genomic data and functional brain images are of great interest but require new analysis approaches to integrate the high-dimensional data types. This letter presents an extension of a technique called parallel independent component analysis (paraICA), which enables the joint analysis of multiple modalities including interconnections between them. We extend our earlier work by allowing for multiple interconnections and by providing important overfitting controls. Performance was assessed by simulations under different conditions, and indicated reliable results can be extracted by properly balancing overfitting and underfitting. An application to functional magnetic resonance images and single nucleotide polymorphism array produced interesting findings.
机译:基因组数据和功能性大脑图像之间的关系备受关注,但需要新的分析方法来整合高维数据类型。这封信提出了一种称为并行独立组件分析(paraICA)的技术的扩展,该技术能够对多种模态进行联合分析,包括它们之间的互连。我们通过允许多个互连并提供重要的过拟合控制来扩展我们的早期工作。通过在不同条件下的仿真评估性能,并指出可以通过适当地平衡过拟合和欠拟合来提取可靠的结果。功能磁共振成像和单核苷酸多态性阵列的应用产生了有趣的发现。

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