TY - JOUR
T1 - xHeinz: an algorithm for mining cross-species network modules under a flexible conservation model
AU - El-Kebir, Mohammed
AU - Soueidan, Hayssam
AU - Hume, Thomas
AU - Beisser, Daniela
AU - Dittrich, Marcus
AU - Müller, Tobias
AU - Blin, Guillaume
AU - Heringa, Jaap
AU - Nikolski, Macha
AU - Wessels, Lodewyk F.A.
AU - Klau, G.W.
N1 - PT: J; NR: 46; TC: 0; J9: BIOINFORMATICS; PG: 9; GA: CT5JN; UT: WOS:000362845400010
PY - 2015/10/1
Y1 - 2015/10/1
N2 - Motivation: Integrative network analysis methods provide robust interpretations of differential high-throughput molecular profile measurements. They are often used in a biomedical context - to generate novel hypotheses about the underlying cellular processes or to derive biomarkers for classification and subtyping. The underlying molecular profiles are frequently measured and validated on animal or cellular models. Therefore the results are not immediately transferable to human. In particular, this is also the case in a study of the recently discovered interleukin-17 producing helper T cells (Th17), which are fundamental for anti-microbial immunity but also known to contribute to autoimmune diseases. Results: We propose a mathematical model for finding active subnetwork modules that are conserved between two species. These are sets of genes, one for each species, which (i) induce a connected subnetwork in a species-specific interaction network, (ii) show overall differential behavior and (iii) contain a large number of orthologous genes. We propose a flexible notion of conservation, which turns out to be crucial for the quality of the resulting modules in terms of biological interpretability. We propose an algorithm that finds provably optimal or near-optimal conserved active modules in our model. We apply our algorithm to understand the mechanisms underlying Th17 T cell differentiation in both mouse and human. As a main biological result, we find that the key regulation of Th17 differentiation is conserved between human and mouse.
AB - Motivation: Integrative network analysis methods provide robust interpretations of differential high-throughput molecular profile measurements. They are often used in a biomedical context - to generate novel hypotheses about the underlying cellular processes or to derive biomarkers for classification and subtyping. The underlying molecular profiles are frequently measured and validated on animal or cellular models. Therefore the results are not immediately transferable to human. In particular, this is also the case in a study of the recently discovered interleukin-17 producing helper T cells (Th17), which are fundamental for anti-microbial immunity but also known to contribute to autoimmune diseases. Results: We propose a mathematical model for finding active subnetwork modules that are conserved between two species. These are sets of genes, one for each species, which (i) induce a connected subnetwork in a species-specific interaction network, (ii) show overall differential behavior and (iii) contain a large number of orthologous genes. We propose a flexible notion of conservation, which turns out to be crucial for the quality of the resulting modules in terms of biological interpretability. We propose an algorithm that finds provably optimal or near-optimal conserved active modules in our model. We apply our algorithm to understand the mechanisms underlying Th17 T cell differentiation in both mouse and human. As a main biological result, we find that the key regulation of Th17 differentiation is conserved between human and mouse.
UR - https://www.scopus.com/pages/publications/84943382811
UR - https://www.scopus.com/inward/citedby.url?scp=84943382811&partnerID=8YFLogxK
U2 - 10.1093/bioinformatics/btv316
DO - 10.1093/bioinformatics/btv316
M3 - Article
C2 - 26023104
SN - 1367-4803
VL - 31
SP - 3147
EP - 3155
JO - Bioinformatics
JF - Bioinformatics
IS - 19
ER -