Title :
Three-way parallel independent component analysis for imaging genetics using multi-objective optimization
Author :
Ulloa, Alvaro ; Jingyu Liu ; Vergara, Victor ; Jiayu Chen ; Calhoun, Vince ; Pattichis, Marios
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of New Mexico, Albuquerque, NM, USA
Abstract :
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.
Keywords :
biomedical MRI; brain; data analysis; genetics; genomics; independent component analysis; medical computing; medical disorders; optimisation; 3p-ICA; CYP7B1; KCNQ5; PPP3CC; SNR levels; biomedical data decomposition applications; biomedical field; brain function; brain imaging; brain regions; brain structure component; cross-modality correlation; data dimensionality; default mode network; default mode region; effect size; functional component; genetic component; genetic data; genetic imaging; genomic loci; gray matter; maximally independent sources; mental disorder associated genes; multimodal data sets; multiobjective optimization methods; multiple data modality collection; noise figure 0 dB to 10 dB; noise level; three-way parallel ICA algorithm; three-way parallel independent component analysis; Accuracy; Brain; Correlation; Entropy; Genetics; Independent component analysis; Matrix decomposition;
Conference_Titel :
Engineering in Medicine and Biology Society (EMBC), 2014 36th Annual International Conference of the IEEE
Conference_Location :
Chicago, IL
DOI :
10.1109/EMBC.2014.6945153