Bartholomeus C M Benno Haarman1, Rixt F Riemersma-Van der Lek2, Willem A Nolen3, R Mendes4, Hemmo A Drexhage5, Huibert Burger6. 1. University of Groningen, University Medical Center Groningen, Department of Psychiatry, Groningen, The Netherlands. Electronic address: b.c.m.haarman@umcg.nl. 2. University of Groningen, University Medical Center Groningen, Department of Psychiatry, Groningen, The Netherlands. Electronic address: r.f.riemersma@umcg.nl. 3. University of Groningen, University Medical Center Groningen, Department of Psychiatry, Groningen, The Netherlands. Electronic address: w.a.nolen@umcg.nl. 4. Health E-Solutions, Rotterdam, The Netherlands. Electronic address: r.mendes@healthesolutions.nl. 5. Erasmus MC, Rotterdam, Department of Immunology, The Netherlands. Electronic address: h.drexhage@erasmusmc.nl. 6. University of Groningen, University Medical Center Groningen, Department of Psychiatry, Groningen, The Netherlands; University of Groningen, University Medical Center Groningen, Department of General Practice, Groningen, The Netherlands. Electronic address: h.burger@umcg.nl.
Abstract
INTRODUCTION: Existing methods such as correlation plots and cluster heat maps are insufficient in the visual exploration of multiple associations between genetics and phenotype, which is of importance to achieve a better understanding of the pathophysiology of psychiatric and other illnesses. The implementation of a combined presentation of effect size and statistical significance in a graphical method, added to the ordering of the variables based on the effect-ordered data display principle was deemed useful by the authors to facilitate in the process of recognizing meaningful patterns in these associations. MATERIALS AND METHODS: The requirements, analyses and graphical presentation of the feature-expression heat map are described. The graphs display associations of two sets of ordered variables where a one-way direction is assumed. The associations are depicted as circles representing a combination of effect size (color) and statistical significance (radius). RESULTS: An example dataset is presented and relation to other methods, limitations, areas of application and possible future enhancements are discussed. CONCLUSION: The feature-expression heat map is a useful graphical instrument to explore associations in complex biological systems where one-way direction is assumed, such as genotype-phenotype pathophysiological models.
INTRODUCTION: Existing methods such as correlation plots and cluster heat maps are insufficient in the visual exploration of multiple associations between genetics and phenotype, which is of importance to achieve a better understanding of the pathophysiology of psychiatric and other illnesses. The implementation of a combined presentation of effect size and statistical significance in a graphical method, added to the ordering of the variables based on the effect-ordered data display principle was deemed useful by the authors to facilitate in the process of recognizing meaningful patterns in these associations. MATERIALS AND METHODS: The requirements, analyses and graphical presentation of the feature-expression heat map are described. The graphs display associations of two sets of ordered variables where a one-way direction is assumed. The associations are depicted as circles representing a combination of effect size (color) and statistical significance (radius). RESULTS: An example dataset is presented and relation to other methods, limitations, areas of application and possible future enhancements are discussed. CONCLUSION: The feature-expression heat map is a useful graphical instrument to explore associations in complex biological systems where one-way direction is assumed, such as genotype-phenotype pathophysiological models.
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