| Literature DB >> 16672045 |
Abstract
BACKGROUND: In recent years a number of algorithms for cardiovascular risk assessment has been proposed to the medical community. These algorithms consider a number of variables and express their results as the percentage risk of developing a major fatal or non-fatal cardiovascular event in the following 10 to 20 years DISCUSSION: The author has identified three major pitfalls of these algorithms, linked to the limitation of the classical statistical approach in dealing with this kind of non linear and complex information. The pitfalls are the inability to capture the disease complexity, the inability to capture process dynamics, and the wide confidence interval of individual risk assessment. Artificial Intelligence tools can provide potential advantage in trying to overcome these limitations. The theoretical background and some application examples related to artificial neural networks and fuzzy logic have been reviewed and discussed.Entities:
Mesh:
Year: 2006 PMID: 16672045 PMCID: PMC1479368 DOI: 10.1186/1471-2261-6-20
Source DB: PubMed Journal: BMC Cardiovasc Disord ISSN: 1471-2261 Impact factor: 2.298
Examples of artificial neural networks analyses in the cardiovascular field.
| Year | No. Pts | Disease | Variables | Results | |
| Selker | 1995 | 3453 | Ischemia | Clinical indicators | ANN superior vs LogR |
| Ellenius et al | 1997 | 88 | MI | Biochemical variables | ANNs give added value |
| Baxt et al | 2002 | 2204 | MI | History, clinical, biochemical EGC | High sensitivity (95%) and specificity (96%) |
| Baldassarre et al | 2004 | 949 | CV event | biochemical, carotid US clinical indicators | ANN superior vs LDA |
| Voss et al | 2002 | 5159 | CV event | Clinical, biochemical indicators | ANN superior vs LogR |
| Bigi et al | 2005 | 496 | Outcome after MI | Clinical, exercise ECG and stress echo | ANN superior vs LDA |
MI: Miocardial infarction; CV: cardiovascular; ANN Artificial neural networks; LogR: logistic regression; LDA: linear discriminant analysis