| Literature DB >> 19194489 |
Abstract
It is increasingly evident that human diseases are not isolated from each other. Understanding how different diseases are related to each other based on the underlying biology could provide new insights into disease etiology, classification, and shared biological mechanisms. We have taken a computational approach to studying disease relationships through 1) systematic identification of disease associated genes by literature mining, 2) associating diseases to biological pathways where disease genes are enriched, and 3) linking diseases together based on shared pathways. We identified 4,195 candidate disease associated genes for 1028 diseases. On average, about 50% of disease associated genes of a disease are statistically mapped to pathways. We generated a disease network which consists of 591 diseases and 6,931 disease relationships. We examined properties of this network and provided examples of novel disease relationships which cannot be readily captured through simple literature search or gene overlap analysis. Our results could potentially provide insights into the design of novel, pathway-guided therapeutic interventions for diseases.Entities:
Mesh:
Year: 2009 PMID: 19194489 PMCID: PMC2631151 DOI: 10.1371/journal.pone.0004346
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Figure 1Disease pathway mapping.
A) Distribution of the number of mapped pathways per disease. B) Distribution of the number of mapped diseases per pathway. C) Distribution of the fraction of disease associated genes mapped to pathways.
Figure 2Disease network.
A) A filtered disease network where disease relationships with the E score>4 are displayed. Disease nodes are colored according to their MeSH disease categories as follows: Neoplasms, red; Congenital_Hereditary_Neonatal, green; Nervous_System, blue; Cardiovascular, pink; Nutritional_Metabolic, yellow; Female_Urogenital_Pregnancy, aqua; Hemic_Lymphatic, light pink; Musculoskeletal, black; Digestive, light green; Skin_Connective, olive; all other categories: gray. B) and C) Two examples of disease clusters isolated from the network in A.
Examples of novel disease relationships.
| Disease 1 | Disease 2 | Pathway |
| Drug induced dyskinesia | Amyotrophic lateral sclerosis | FOSBPATHWAY |
| Inborn errors lipid metabolism | Crohn disease | Carnitine transport |
| Leukemia | Ehlers danlos syndrome | Role of PBX in fibroblasts signaling pathways |
| Acute erythroblastic leukemia | Hepatic porphyrias | AHSPPATHWAY |
| Tuberous sclerosis | Neural tube defects | Neural tube closure |
| Precancerous conditions | Listeria infections | Immune response MIF in innate immunity response |
| Crohn disease | Neural tube defects | Cofactor transport |
| Hyperhomocysteinemia | Von willebrand disease | BLOOD CLOTTING CASCADE |
| Pulmonary hypertension | Precancerous conditions | Development Endothelin-1/EDNRA signaling |
| Asthma | Ataxia telangiectasia | Regulation of DNA recombination |
| Atherosclerosis | Contact dermatitis | LDL metabolism during development of fatty streak lesion |
| Wolff parkinson white syndrome | Inborn errors metabolism | Regulation of fatty acid metabolic process |
| Respiratory syncytial virus infections | Adenoma | Transcription Role of AP-1 in regulation of cellular metabolism |
| Pulmonary hypertension | Endometrial neoplasms | Development Endothelin-1/EDNRA signaling |
| Colitis | Inborn errors metabolism | Response to glucocorticoid stimulus |
| Respiratory syncytial virus infections | Ataxia telangiectasia | Regulation of DNA recombination |
| Syndactyly | Hair diseases | Odontogenesis of dentine-containing tooth |
| Pulmonary eosinophilia | Ataxia telangiectasia | Regulation of DNA recombination |
| Glomerulonephritis | Pneumocystis pneumonia | Regulation of phagocytosis |
| Hereditary neoplastic syndromes | Autoimmune diseases | Negative regulation of mononuclear cell proliferation |
Column 3 indicates the pathway which has the greatest overall association strength with both diseases.