| Literature DB >> 30972433 |
Marko Djordjevic1, Andjela Rodic2,3, Stefan Graovac2,3.
Abstract
Recent decades brought a revolution to biology, driven mainly by exponentially increasing amounts of data coming from "'omics" sciences. To handle these data, bioinformatics often has to combine biologically heterogeneous signals, for which methods from statistics and engineering (e.g. machine learning) are often used. While such an approach is sometimes necessary, it effectively treats the underlying biological processes as a black box. Similarly, systems biology deals with inherently complex systems, characterized by a large number of degrees of freedom, and interactions that are highly non-linear. To deal with this complexity, the underlying physical interactions are often (over)simplified, such as in Boolean modelling of network dynamics. In this review, we argue for the utility of applying a biophysical approach in bioinformatics and systems biology, including discussion of two examples from our research which address sequence analysis and understanding intracellular gene expression dynamics.Keywords: Biophysical modelling; Gene expression regulation; Intracellular dynamics; Sequence analysis; Systems biology
Mesh:
Year: 2019 PMID: 30972433 DOI: 10.1007/s00249-019-01366-3
Source DB: PubMed Journal: Eur Biophys J ISSN: 0175-7571 Impact factor: 1.733