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Three-way Parallel Independent Component Analysis for Imaging Genetics Using Multi-Objective Optimization

机译:基于多目标优化的遗传学成像三向平行独立成分分析

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摘要

In the biomedical field, current technology allows for the collection of multiple data modalities from the same subject. In consequence, there is an increasing interest for methods to analyze multi-modal data sets. Methods based on independent component analysis have proven to be effective in jointly analyzing multiple modalities, including brain imaging and genetic data. This paper describes a new algorithm, three-way parallel independent component analysis (3pICA), for jointly identifying genomic loci associated with brain function and structure. The proposed algorithm relies on the use of multi-objective optimization methods to identify correlations among the modalities and maximally independent sources within modality.We test the robustness of the proposed approach by varying the effect size, cross-modality correlation, noise level, and dimensionality of the data. Simulation results suggest that 3p-ICA is robust to data with SNR levels from 0 to 10 dB and effect-sizes from 0 to 3, while presenting its best performance with high cross-modality correlations, and more than one subject per 1,000 variables.In an experimental study with 112 human subjects, the method identified links between a genetic component (pointing to brain function and mental disorder associated genes, including PPP3CC, KCNQ5, and CYP7B1), a functional component related to signal decreases in the default mode network during the task, and a brain structure component indicating increases of gray matter in brain regions of the default mode region. Although such findings need further replication, the simulation and in-vivo results validate the three-way parallel ICA algorithm presented here as a useful tool in biomedical data decomposition applications.
机译:在生物医学领域,当前技术允许从同一受试者收集多种数据形式。因此,人们越来越需要分析多模式数据集的方法。事实证明,基于独立成分分析的方法可以有效地联合分析多种模式,包括脑成像和遗传数据。本文介绍了一种新的算法,即三向并行独立成分分析(3pICA),用于共同识别与脑功能和结构相关的基因组位点。所提出的算法依赖于使用多目标优化方法来识别模态和模态内最大独立来源之间的相关性。我们通过改变效果大小,跨模态相关性,噪声水平和维数来测试所提出方法的鲁棒性的数据。仿真结果表明,3p-ICA对SNR级为0至10 dB,效果大小为0至3的数据具有鲁棒性,同时表现出其最佳性能和较高的交叉模态相关性,每1,000个变量包含一个以上的对象。在一项针对112位人类受试者的实验研究中,该方法确定了遗传成分(指向脑功能和与精神障碍相关的基因,包括PPP3CC,KCNQ5和CYP7B1)之间的关联,该遗传成分与信号强度在默认模式网络期间降低有关。任务,以及指示默认模式区域的大脑区域中灰质增加的大脑结构组件。尽管这些发现需要进一步复制,但是仿真和体内结果验证了此处提出的三向并行ICA算法在生物医学数据分解应用中是有用的工具。

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