Predicting disease associations via biological network analysis
Open Access
- 17 September 2014
- journal article
- research article
- Published by Springer Nature in BMC Bioinformatics
- Vol. 15 (1), 1-13
- https://doi.org/10.1186/1471-2105-15-304
Abstract
Understanding the relationship between diseases based on the underlying biological mechanisms is one of the greatest challenges in modern biology and medicine. Exploring disease-disease associations by using system-level biological data is expected to improve our current knowledge of disease relationships, which may lead to further improvements in disease diagnosis, prognosis and treatment. We took advantage of diverse biological data including disease-gene associations and a large-scale molecular network to gain novel insights into disease relationships. We analysed and compared four publicly available disease-gene association datasets, then applied three disease similarity measures, namely annotation-based measure, function-based measure and topology-based measure, to estimate the similarity scores between diseases. We systematically evaluated disease associations obtained by these measures against a statistical measure of comorbidity which was derived from a large number of medical patient records. Our results show that the correlation between our similarity measures and comorbidity scores is substantially higher than expected at random, confirming that our similarity measures are able to recover comorbidity associations. We also demonstrated that our predicted disease associations correlated with disease associations generated from genome-wide association studies significantly higher than expected at random. Furthermore, we evaluated our predicted disease associations via mining the literature on PubMed, and presented case studies to demonstrate how these novel disease associations can be used to enhance our current knowledge of disease relationships. We present three similarity measures for predicting disease associations. The strong correlation between our predictions and known disease associations demonstrates the ability of our measures to provide novel insights into disease relationships.Keywords
This publication has 51 references indexed in Scilit:
- Discovering disease-disease associations by fusing systems-level molecular dataScientific Reports, 2013
- Evolutionary history of human disease genes reveals phenotypic connections and comorbidity among genetic diseasesScientific Reports, 2012
- Finding disease similarity based on implicit semantic similarityJournal of Biomedical Informatics, 2011
- Network medicine: a network-based approach to human diseaseNature Reviews Genetics, 2010
- The impact of cellular networks on disease comorbidityMolecular Systems Biology, 2009
- Human disease classification in the postgenomic era: A complex systems approach to human pathobiologyMolecular Systems Biology, 2007
- Global landscape of protein complexes in the yeast Saccharomyces cerevisiaeNature, 2006
- A text-mining analysis of the human phenomeEuropean Journal of Human Genetics, 2006
- BioGRID: a general repository for interaction datasetsNucleic Acids Research, 2006
- The Genetic Association DatabaseNature Genetics, 2004