| Literature DB >> 23948386 |
Enrico Capobianco1, Pietro Lio'.
Abstract
Comorbidity represents an extremely complex domain of research. An individual entity, the patient, is the center of gravity of a system characterized by multiple, complex, and interrelated conditions, disorders, or diseases. Such complexity is influenced by uncertainty that is difficult to decipher and is proportional to the number of associated morbidities. Computational scientists usually provide meta-analysis studies aimed at integrating various types of evidence, but in our opinion they may help reformulate comorbidity by emphasizing, in particular, two aspects: (i) a systems approach, which allows for an ensemble view of comorbidity, and offers a model representation generalizable to multimorbidity; and (ii) a dynamic network inference approach, which is indicated for the analysis of links among morbidities and evaluation of risk. Notably, the main question remains whether such instruments suggest a shift of paradigm providing prospective impact on medical practice. We have identified in the simultaneous consideration of multiple dimensions linked to comorbidity complexity the rationale for such translation.Entities:
Keywords: clustering; comorbidity; dynamic mapping; inference; multidimensionality; patient disease network
Mesh:
Year: 2013 PMID: 23948386 DOI: 10.1016/j.molmed.2013.07.004
Source DB: PubMed Journal: Trends Mol Med ISSN: 1471-4914 Impact factor: 11.951