| Literature DB >> 34871929 |
Mansu Kim1, Eun Jeong Min2, Kefei Liu3, Jingwen Yan4, Andrew J Saykin5, Jason H Moore3, Qi Long3, Li Shen6.
Abstract
The advances in technologies for acquiring brain imaging and high-throughput genetic data allow the researcher to access a large amount of multi-modal data. Although the sparse canonical correlation analysis is a powerful bi-multivariate association analysis technique for feature selection, we are still facing major challenges in integrating multi-modal imaging genetic data and yielding biologically meaningful interpretation of imaging genetic findings. In this study, we propose a novel multi-task learning based structured sparse canonical correlation analysis (MTS2CCA) to deliver interpretable results and improve integration in imaging genetics studies. We perform comparative studies with state-of-the-art competing methods on both simulation and real imaging genetic data. On the simulation data, our proposed model has achieved the best performance in terms of canonical correlation coefficients, estimation accuracy, and feature selection accuracy. On the real imaging genetic data, our proposed model has revealed promising features of single-nucleotide polymorphisms and brain regions related to sleep. The identified features can be used to improve clinical score prediction using promising imaging genetic biomarkers. An interesting future direction is to apply our model to additional neurological or psychiatric cohorts such as patients with Alzheimer's or Parkinson's disease to demonstrate the generalizability of our method.Entities:
Keywords: Brain imaging genetics; Multi-task learning; Outcome prediction; Sparse canonical correlation analysis
Mesh:
Year: 2021 PMID: 34871929 PMCID: PMC8792314 DOI: 10.1016/j.media.2021.102297
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 8.545