| Literature DB >> 31269707 |
Mir Henglin1, Teemu Niiranen2,3, Jeramie D Watrous4, Kim A Lagerborg4, Joseph Antonelli5, Brian L Claggett1, Emmanuella J Demosthenes1, Beatrice von Jeinsen6, Olga Demler7, Ramachandran S Vasan6,8, Martin G Larson6,8,9, Mohit Jain10, Susan Cheng11,12,13.
Abstract
To assist with management and interpretation of human metabolomics data, which are rapidly increasing in quantity and complexity, we need better visualization tools. Using a dataset of several hundred metabolite measures profiled in a cohort of ~1500 individuals sampled from a population-based community study, we performed association analyses with eight demographic and clinical traits and outcomes. We compared frequently used existing graphical approaches with a novel 'rain plot' approach to display the results of these analyses. The 'rain plot' combines features of a raindrop plot and a conventional heatmap to convey results of multiple association analyses. A rain plot can simultaneously indicate effect size, directionality, and statistical significance of associations between metabolites and several traits. This approach enables visual comparison features of all metabolites examined with a given trait. The rain plot extends prior approaches and offers complementary information for data interpretation. Additional work is needed in data visualizations for metabolomics to assist investigators in the process of understanding and convey large-scale analysis results effectively, feasibly, and practically.Entities:
Keywords: clinical outcomes research; epidemiology; metabolomics; visualizations
Year: 2019 PMID: 31269707 PMCID: PMC6680673 DOI: 10.3390/metabo9070128
Source DB: PubMed Journal: Metabolites ISSN: 2218-1989
Figure 1Visualization of complex metabolomics data. For a set of statistical models (a) performed in a large human study, for example, a Manhattan plot (b) can display the degree to which a wide panel of metabolites is associated with different outcomes although the magnitude of these associations is not conveyed. Pairing of heatmaps can display magnitude as well as directionality and significance for each metabolite association (c), although between-metabolite comparisons of associations across all outcomes is not easily discernible.
Dimension of information offered by different visualization methods.
| Visualization Method | ||||
|---|---|---|---|---|
| Dimension of Information | Manhattan Plot | Bar and Scatter Plots | Heatmap | Rain Plot |
| Example | ||||
| Significance of associations with an outcome | X | X | X | |
| Magnitude of associations with an outcome | X | X | X | |
| Directionality of associations with an outcome | X | X | X | X |
| Clustering | X | X | ||
| Significance of associations with multiple outcomes | X | X | X | |
| Magnitude of associations with multiple outcomes | X | |||
| Directionality of associations with multiple outcomes | X | |||
Figure 2Rain plots. Results are ordered top to bottom by smallest to largest P value (a), mass-to-charge ratio (b), and by clustering (c).