Biomedical text mining can facilitate and accelerate the process of discovery and integration of data present in literature. Specialized areas like translational bioinformatics have been emerging with the aim of integrating biological and clinical data. A dimension of our research is focussed on biomedical text mining aimed at correlating diseases and molecular entities as well as associating food with their nutritional values.
References:
- Jensen, K., Panagiotou, G., and Kouskoumvekaki, I. (2014). Integrated text mining and chemoinformatics analysis associates diet to health benefit at molecular level. PLoS Computational Biology, 10(1), e1003432.
- Srinivasan, P. and Libbus, B. (2004). Mining MEDLINE for implicit links between dietary substances and diseases. Bioinformatics, 20 Suppl 1(C), i290–6.
- Yang, H., Swaminathan, R., & Sharma, A. (2011). Mining Biomedical Text towards Building a Quantitative Food-Disease-Gene Network. In Learning Structure and Schemas from Documents (pp. 205–225). Springer.