Introduction: Multi-view data offer advantages over single-view data for characterizing individuals, which is crucial in precision medicine toward personalized prevention, diagnosis, or treatment follow-up. Methods: Here, we develop a network-guided multi-view clustering framework named netMUG to identify actionable subgroups of individuals. This pipeline first adopts sparse multiple canonical correlation analysis to select multi-view features possibly informed by extraneous data, which are then used to construct individual-specific networks (ISNs). Finally, the individual subtypes are automatically derived by hierarchical clustering on these network representations. Results: We applied netMUG to a dataset containing genomic data and facial images to obtain BMI-informed multi-view strata and showed how it could be used for a refined obesity characterization. Benchmark analysis of netMUG on synthetic data with known strata of individuals indicated its superior performance compared with both baseline and benchmark methods for multi-view clustering. The clustering derived from netMUG achieved an adjusted Rand index of 1 with respect to the synthesized true labels. In addition, the real-data analysis revealed subgroups strongly linked to BMI and genetic and facial determinants of these subgroups. Discussion: netMUG provides a powerful strategy, exploiting individual-specific networks to identify meaningful and actionable strata. Moreover, the implementation is easy to generalize to accommodate heterogeneous data sources or highlight data structures.
netMUG: a novel network-guided multi-view clustering workflow for dissecting genetic and facial heterogeneity.
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作者:Li Zuqi, Melograna Federico, Hoskens Hanne, Duroux Diane, Marazita Mary L, Walsh Susan, Weinberg Seth M, Shriver Mark D, Müller-Myhsok Bertram, Claes Peter, Van Steen Kristel
| 期刊: | Frontiers in Genetics | 影响因子: | 2.800 |
| 时间: | 2023 | 起止号: | 2023 Dec 6; 14:1286800 |
| doi: | 10.3389/fgene.2023.1286800 | ||
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