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Network Medicine: A Systems Approach to Cardiovascular Disease Diagnosis & Management Joseph Loscalzo, M.D., Ph.D. Brigham and Women’s Hospital Harvard Medical School Boston, MA Outline •Systems and networks in biomedicine •Network medicine, disease modules, and disease classification •Network medicine and drug development Systems and Networks in Biomedicine Two Burning Questions • Why has the rapidly expanding knowledge of the human genome not (yet) given us the expected epiphanies about complex human disease? • Why has new drug development been limited despite a remarkable range of technologies that can identify drug targets and design pharmacologically suitable candidate drugs? Changing Scientific Paradigm • Conventional scientific approach: hold all variables constant except the one of interest, and deduce its importance (Cartesian reductionism after Democritus). • Inductive generalization can follow. • Reductionist approach often oversimplifies biological systems and leads to linear thinking. A timely example will follow…. Homocysteine Theory of Atherothrombosis • First proposed by McCully (Am.J.Path. 1969; 56:111) • Evidence from over 30 studies suggests that even mild-to-moderate elevations of plasma homocysteine confer a significant, independent risk for atherothrombosis. • Hyperhomocysteinemia found in 2040% of patients with vascular disease, but in only 2% of unaffected individuals Homocysteine Metabolism Methionine THF 5,10-Methylene THF 2 SAM DMG Me-B12 5-Methyl-THF 3 1 Betaine Homocysteine 4 1: Methionine Synthase 2: MTHF Reductase 3: Betaine-homocysteine Methyltransferase 4: Cystathionine-betaSynthase B6 Cystathionine Cysteine Sulfate SAH Vitamin Rx, Homocysteine, & CV Risk NORVIT Trial 3749 pts. s/p AMI Folic Acid (mg) 0.8 0.8 0 0 B12 (mg) 0.4 0.4 0 0 Pyridoxine (mg) 40 0 40 0 --Bonaa KH, et al., NEJM, 2006 HOPE-2 Trial 5522 pts. w/ CVD or diabetes 2.5 mg Folic Acid 1.0 mg B12 50 mg pyridoxine --HOPE-2 Investigators, NEJM, 2006 Folate, B12, and Homocysteine Methionine Folate, B12 Homocysteine B6 Cystathionine Biomedicine in Network Context HCY Metabolism Biomedicine in Network Context Folate Metabolism HCY Metabolism Biomedicine in Network Context Intermediary Metabolism Folate Metabolism HCY Metabolism Folate, B12, and Homocysteine DNA Synthesis DHF dTMP Cell Proliferation Increased Angiographic Restenosis post-PCI (Lange et al., NEJM, 2004) Methionine THF SAM Acceptor DMG dUMP 5,10 N Me-B12 -CH2-THF 5 N -CH3-THF MethylAcceptor Betaine Homocysteine Modify Gene Expression Impair NO Synthesis/EC Function SAH CpG DNA Methylation ADMA Synthesis Changing Scientific Paradigm • Most biological systems respond to multiple inputs that vary simultaneously and can interact—i.e., these are complex systems that form molecular networks. • New quantitative approaches can be used to construct these networks, identify changes in them that lead to disease, and examine their responses to perturbations (including drug-induced perturbations). Key Properties of Biological Networks • Frequently clustered or scale-free architecture • Manifest emergent behavior • Functional modularity follows structural localization; modules as subnetworks • Minimize transition time between states • Comprise canonical structural and dynamic motifs that reflect basic organizing principles in biological systems Generic Network Structures Scale-free Network Random Network k=degree or # nodal connections Many nodes sparsely linked P(k) = k-g P(k) log P(k) P(k) = e-k <k> k Poisson Distribution Few nodes highly linked m=g log k Power Law Distribution Scale-free Networks: Biological Implications • Recapitulate natural selection and evolution – Define difference between mutable nodes (weakly connected) that engender diversity and facilitate natural selection, and immutable nodes (hubs), the loss of which is lethal for the organism • Accommodate pertubations to the network with minimal effect on critical functions of the organism Network Medicine, Disease Modules, and Disease Classification Shortcomings of Conventional Pathophenotype Classification • Anachronistic—Malpighi (microscopic dx), Osler (pathophysiologic dx) • Organ-based approach reflects common end-stage phenotypes determined by intermediate pathophenotypes (e.g., inflammation). • Major therapeutic emphasis is on non-specific intermediate pathophenotypes (e.g., antithrombotics). • Many distinct diseases have common phenotypes (e.g., hepatitides). • Common treatments, disease co-occurrence, and GWAS suggest common underlying mechanisms. Complex Pathophenotypes There is (genetic) overlap among common complex human pathophenotypes. --Rzhetsky et al., PNAS 2007;104:11694-9 Genome-wide Association Study Different complex chronic diseases have common GWAS loci. 14,000 cases of 7 common diseases, 3,000 shared controls, 500,000 SNPs --Wellcome Trust Case Control Consortium, Nature 2007;447:661-78 The Genome: Linear Narrative of Disease Manhattan Plot --Wellcome Trust Case Control Consortium, Nature 2007;447:661-78 “All science is either physics or stamp collecting.” --Ernest Rutherford, 1920 Can Molecular Networks Give Unique Insight into Disease Pathogenesis and Therapy? Essential vs. Disease Genes Disease genes are largely nonessential and do not encode hubs. Interactome --Barabasi et al., Nat Revs Genet 2011;12:56-68 Essential vs. Disease Genes Disease genes are largely nonessential and do not encode hubs. Interactome --Barabasi et al., Nat Revs Genet 2011;12:56-68 The Consolidated Interactome •Protein-protein interactions from yeast 2H screens) & protein complexes (CORUM) •Regulatory protein-DNA interactions (TRANSFAC) •Metabolic enzyme-coupled interactions (MCIs) •Protein kinase network (only PTM incorporated to date) Disease Modules, Disease Neighborhoods, and the Interactome Disease Module Interactome Disease Neighborhood Disease Modules in the Interactome •We first compiled a corpus of 299 diseases defined by 13,470 Nodes Medical Subject Headings (MeSH) ontology. 141,296 Edges •These 299 diseases also have at least 20 associated genes in the current Online Mendelian Inheritance in Man (OMIM) and GWAS databases. •This compilation totals 2,436 disease-associated proteins. •The derived disease modules are incomplete and, on average, comprise only ~20% of the respective disease genes. •Used DiseAse MOdule Detection Algorithm (DIAMOnD) to expand the seed gene (protein) pool by incorporating additional interactome-linked proteins with a significant number of connections (Sharma et al., BMC Bioinformatics, in press). --Menche et al., Science 2015;347:1257601 Disease Modules in the Interactome 13,470 Nodes 141,296 Edges Peroxisomal Disorders Rheumatoid Arthritis Multiple Sclerosis --Menche et al., Science 2015;347:1257601 Topological Localization and Biological Consequences The more localized a disease is topologically, the greater the functional similarity of the genes in the disease module. --Menche et al., Science 2015;347:1257601 Disease Overlap and Separation in the Interactome --Menche et al., Science 2015;347:1257601 Module Overlap and Function Disease module overlap is associated with functional similarity. --Menche et al., Science 2015;347:1257601 PAH Disease Module Derivation • Identify disease phenotype of interest. • Ascertain disease network components. • Construct disease network (i.e., determine the structural or functional linkages among module components). • Identify disease module(s) within network. PAH Network Derivation PAH Network Components (131 Nodes, 26 Functional Pathways) Disease components derived from curated literature, or gene, protein, or metabolite (expression) profiles. PAH Network Derivation PAH Network Components (131 Nodes, 26 Functional Pathways) Consolidated Interactome (11,643 Nodes 100,791 Edges) Consolidated interactome of all known physical interations: PPIs and Protein Complexes (CORUM), Regulatory Protein-DNA Interaction (TRANSFAC), Metabolic Enzyme-coupled Interactions (MCIs), Kinase Network PAH Network Derivation PAH Network Components (131 Nodes, 26 Functional Pathways) Map Consolidated Interactome (11,643 Nodes 100,791 Edges) PAH Network Derivation PAH Network Components (131 Nodes, 26 Functional Pathways) Map Consolidated Interactome (11,643 Nodes 100,791 Edges) PAH Network Derivation PAH Network (115 Nodes, 255 Edges, Largest Connected Component = 82 Nodes) Interactome-derived PAH Network --Parikh et al., Circulation 2012;125:1520-1532 PAH and miR-21 Disease Module miR-21 serves as a negative regulator of pathogenic pulmonary vascular responses in PAH. --Parikh et al., Circulation 2012;125:1520-1532 miR-21-/- Mice and PH --Parikh et al., Circulation 2012;125:1520-1532 Network Analysis Informs GWAS --Menche et al., Science 2015;347:1257601 Network Analysis Informs GWAS --Menche et al., Science 2015;347:1257601 Disease-Tissue Network Construction of tissue-specific interactome --Kitsak et al., submitted Disease-Tissue Network The integrity and completeness of expression of the disease module determines the tissue specificity of disease expression. --Kitsak et al., submitted Network Medicine and Drug Development FDA Approved Drugs: 2000-2012 Approved Drugs 100 80 60 40 20 0 00 01 02 03 04 05 06 07 08 09 10 11 12 20 20 20 20 20 20 20 20 20 20 20 20 20 Reasons for Declining Productivity • • • • Regulatory environment Increasing need to explore novel targets Easy targets have been exhausted. Increasing attrition rate for developing drugs • The intrinsically flawed reductionist approach to drug development, i.e., the need to identify a single drug target with a single “magic bullet” Disease Modules and Therapeutics Drug targets are typically characterized in isolation from the disease module. Target Function Drug Target --Modified from Barabasi et al., Nat Revs Genet 2011;12:56-68 Target-based Screening Facilitated by: • Genomic datasets for target identification • Structural tools, including protein X-ray crystallogaphy, NMR spectroscopy, computational modeling • Large real and virtual compound libraries • High-throughput screening technologies Drug Discovery Strategies: Success Rates Screen Target-based Percentage of NMEs N=83 Phenotype N=28 N=30 N=17 --Swinney & Anthony, Nature Rev Drug Disc 2011;10:507-519 Disease Modules and Therapeutics Drug targets are better characterized with regard to their effects on phenotype. Drug Target Functional Phenotype --Modified from Barabasi et al., Nat Revs Genet 2011;12:56-68 The Promise of Personalized Medicine: Find the Target Before Rx BRAFmut MEK1C121S --Wagle et al., J Clin Oncol 2011;29:3085-3096 The Promise of Personalized Medicine: Inhibit the Target Before Rx Vemurafenib—15 wks BRAFmut MEK1C121S --Wagle et al., J Clin Oncol 2011;29:3085-3096 The Peril of Personalized Medicine with Conventional Strategy Before Rx Vemurafenib—15 wks Vemurafenib—23 wks BRAFmut MEK1C121S --Wagle et al., J Clin Oncol 2011;29:3085-3096 Pathway Targeting: Combination Rx Combination therapy: dabrafenib (BRAF inhibitor) & trametinib (MEK inhibitor) --Flaherty et al., NEJM 2012;367:1694-1703 Cardiovascular Drug Data Sets • • • • [1] F.J. Azuaje etal . Drug-target network in myocardial infarction reveals multiple side effects of unrelated drugs. Scientific Reports 1, 52, 2011 From [1] we obtained 38 drugs used for acute myocardial infarction (MI) and 344 non-MI drugs that interact with MI drugs. These drugs involves 425 drug targets (denoted by eMIDTs), among which 67 (denoted by MIDTs) are targeted specifically by MI drugs. We further collected 431 myocardial infarction disease genes from Phenopedia in HuGE Navigator (http://hugenavigator.net). We then mapped eMIDTs and MI disease genes onto the human interactome. --Wang et al., in preparation Proximity of eMIDTs to MI Genes in the Interactome eMIDTs and MIDTs (inset)have significantly more interactions with MI disease genes than random expectation under Null Model I (left) and Null Model II (right) --Wang et al., in preparation MI Drug Target-Gene Modules • (e)MI drug targets have significant overlap with MI disease genes. • We found 12 drug-target-gene (DTG) modules with more than 5 proteins. --Wang et al., in preparation MI Drug Target-Gene Module Example Blue: MI Disease Gene Yellow: MI-related Drug Target Red: MI Drug or Drug Target --Wang et al., in preparation Asthma Module --Sharma et al., Hum Mol Genet, 2015, e-pub Novel Regulatory Pathway in Asthma: GAB1 Novel inflammatory pathway in asthma derived from disease module GAB1 Signalsome --Sharma et al., Hum Mol Genet, 2015, e-pub Systems Pharmacology: Visualizing Therapeutic Actions --From Proteostasis Web Site: http://www.proteostasis.com/science/proteostasis_network.php Acknowledgements • • • • Laszlo Barabasi Dan Chasman Zak Kohane Paul Ridker • • • • • • Masanori Aikawa Stefan Blankenberg Brad Maron Marc Vidal Scott Weiss Tania Zeller • • • • • • Dina Ghiassian Maksim Kitsak Joerg Menche Piero Ricchiuto Amitabh Sharma Ruisheng Wang