| Literature DB >> 26911487 |
Gaowei Wang1, Hang Su1, Helin Yu1, Ruoshi Yuan1, Xiaomei Zhu2, Ping Ao3.
Abstract
Cancers have been typically characterized by genetic mutations. Patterns of such mutations have traditionally been analysed by posteriori statistical association approaches. One may ponder the possibility of a priori determination of any mutation regularity. Here by exploring biological processes implied in a mechanistic theory recently developed (the endogenous molecular-cellular network theory), we found that the features of genetic mutations in cancers may be predicted without any prior knowledge of mutation propensities. With hepatocellular carcinoma (HCC) as an example, we found that the normal hepatocyte and cancerous hepatocyte can be represented by robust stable states of one single endogenous network. These stable states, specified by distinct patterns of expressions or activities of proteins in the network, provide means to directly identify a set of most probable genetic mutations and their effects in HCC. As the key proteins and main interactions in the network are conserved through cell types in an organism, similar mutational features may also be found in other cancers. This analysis yielded straightforward and testable predictions on accumulated and preferred mutation spectra in normal tissue. The validation of predicted cancer state mutation patterns demonstrates the usefulness and potential of a causal dynamical framework to understand and predict genetic mutations in cancer.Entities:
Keywords: dynamical systems; endogenous network theory; genetic mutations; stable state
Mesh:
Year: 2016 PMID: 26911487 PMCID: PMC4780567 DOI: 10.1098/rsif.2015.1115
Source DB: PubMed Journal: J R Soc Interface ISSN: 1742-5662 Impact factor: 4.118