Reconstruction of a Functional Human Gene Network, with an Application for Prioritizing Positional Candidate Genes  Lude Franke, Harm van Bakel, Like.

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Reconstruction of a Functional Human Gene Network, with an Application for Prioritizing Positional Candidate Genes  Lude Franke, Harm van Bakel, Like Fokkens, Edwin D. de Jong, Michael Egmont-Petersen, Cisca Wijmenga  The American Journal of Human Genetics  Volume 78, Issue 6, Pages 1011-1025 (June 2006) DOI: 10.1086/504300 Copyright © 2006 The American Society of Human Genetics Terms and Conditions

Figure 1 Basic principles of the prioritization method for positional candidate genes with the use of a functional human gene network. The method integrates different gene-gene interaction data sources in a Bayesian way (left panel). Subsequently, this gene network is used to prioritize positional candidate genes, with all genes assigned an initial score of zero. In the example (right panel), three different susceptibility loci are analyzed, each containing a disease gene (P, Q, or R) and two nondisease genes. In each locus, the three positional candidate genes increase the scores of nearby genes in the gene network, by use of a kernel function that models the relationship between gene-gene distance and score effect. Genes within each locus are ranked on the basis of their eventual effect score, corrected for differences in the topology of the network (see the “Material and Methods” section). The American Journal of Human Genetics 2006 78, 1011-1025DOI: (10.1086/504300) Copyright © 2006 The American Society of Human Genetics Terms and Conditions

Figure 2 Integration of data sets in four gene networks. a, Data sets were benchmarked against a set of 55,606 known true-positive gene pairs derived from BIND, KEGG, HPRD, and Reactome and 800,608 true-negative gene pairs derived from GO. The Venn diagram indicates the data sources from which the true positives were derived and their degree of overlap. Numbers in parentheses indicate the number of interactions that are provided by each of the data sets. b, Potential gene-gene interactions derived from GO, microarray coexpression data, and human and orthologous protein-protein interaction data were integrated using a Bayesian classifier. The steps involved in building this classifier are shown. The American Journal of Human Genetics 2006 78, 1011-1025DOI: (10.1086/504300) Copyright © 2006 The American Society of Human Genetics Terms and Conditions

Figure 3 ROC curve of the GO network, the MA+PPI network, and the combined GO+MA+PPI network. The baseline (solid gray line) indicates the performance of a classifier that would be totally uninformative. The American Journal of Human Genetics 2006 78, 1011-1025DOI: (10.1086/504300) Copyright © 2006 The American Society of Human Genetics Terms and Conditions

Figure 4 Accuracy of positional candidate-gene prioritization. a and b, Percentage of the 409 disease genes that was ranked among the top 5 (a) or top 10 (b) genes per locus, after artificial susceptibility loci of varying widths around these genes were constructed and when different types of gene networks were used. The baselines (gray lines) indicate the percentage of disease genes expected to rank among the top 5 or top 10 genes by chance. c, ROC curves for susceptibility loci that contain 50, 100, or 150 genes. The American Journal of Human Genetics 2006 78, 1011-1025DOI: (10.1086/504300) Copyright © 2006 The American Society of Human Genetics Terms and Conditions

Figure 5 Probability of detecting at least one disease gene when a fixed number of top-ranked positional candidate genes—as ranked by Prioritizer—are followed up for each locus. Each locus contains either 100 or 150 genes, and the GO+MA+PPI+TP network was employed. The baselines (dashed lines) show the probability of detecting at least one disease gene if a fixed number of arbitrarily chosen genes in each locus are followed up. The American Journal of Human Genetics 2006 78, 1011-1025DOI: (10.1086/504300) Copyright © 2006 The American Society of Human Genetics Terms and Conditions

Figure 6 Prioritizer analysis of breast cancer. Susceptibility loci, each containing 100 genes, were defined around 10 known breast cancer genes. The 10 highest-ranked genes for each locus are shown in the graph, with colors indicating the locus in which they reside. Use of the GO+MA+PPI network led to four breast cancer genes (PIK3CA, CHEK2, BARD1, and TP53 [circles]) being ranked in the top 10. Chr. = chromosome. The American Journal of Human Genetics 2006 78, 1011-1025DOI: (10.1086/504300) Copyright © 2006 The American Society of Human Genetics Terms and Conditions

Figure A1 Difference in likelihood ratios between genes that were represented on the microarrays and genes that were not. The American Journal of Human Genetics 2006 78, 1011-1025DOI: (10.1086/504300) Copyright © 2006 The American Society of Human Genetics Terms and Conditions

Figure A2 Degree distributions for the four networks. The MA+Y2H network has a topology that most closely follows a scale-free, power-law distribution, compared with the other three networks. The American Journal of Human Genetics 2006 78, 1011-1025DOI: (10.1086/504300) Copyright © 2006 The American Society of Human Genetics Terms and Conditions