Diagnosis of alcoholism based on neural network analysis of phenotypic risk factors
Open Access
- 30 December 2005
- journal article
- Published by Springer Nature in BMC Genomic Data
- Vol. 6 (S1) , S131
- https://doi.org/10.1186/1471-2156-6-s1-s131
Abstract
Background Alcoholism is a serious public health problem. It has both genetic and environmental causes. In an effort to gain understanding of the underlying genetic susceptibility to alcoholism, a long-term study has been undertaken. The Collaborative Study on the Genetics of Alcoholism (COGA) provides a rich source of genetic and phenotypic data. One ongoing problem is the difficulty of reliably diagnosing alcoholism, despite many known risk factors and measurements. We have applied a well known pattern-matching method, neural network analysis, to phenotypic data provided to participants in Genetic Analysis Workshop 14 by COGA. The aim is to train the network to recognize complex phenotypic patterns that are characteristic of those with alcoholism as well as those who are free of symptoms. Our results indicate that this approach may be helpful in the diagnosis of alcoholism. Results Training and testing of input/output pairs of risk factors by means of a "feed-forward back-propagation" neural network resulted in reliability of about 94% in predicting the presence or absence of alcoholism based on 36 input phenotypic risk factors. Pruning the neural network to remove relatively uninformative factors resulted in a reduced network of 14 input factors that was still 95% reliable. Some of the factors selected by the pruning steps have been identified as traits that show either linkage or association to potential candidate regions. Conclusion The complex, multivariate picture formed by known risk factors for alcoholism can be incorporated into a neural network analysis that reliably predicts the presence or absence of alcoholism about 94–95% of the time. Several characteristics that were identified by a pruned neural network have previously been shown to be important in this disease based on more traditional linkage and association studies. Neural networks therefore provide one less traditional approach to both identifying alcoholic individuals and determining the most informative risk factors.Keywords
This publication has 4 references indexed in Scilit:
- Linkage and linkage disequilibrium of evoked EEG oscillations with CHRM2 receptor gene polymorphisms: implications for human brain dynamics and cognitionInternational Journal of Psychophysiology, 2004
- Linkage disequilibrium between the beta frequency of the human EEG and a GABA A receptor gene locusProceedings of the National Academy of Sciences, 2002
- A genome screen of maximum number of drinks as an alcoholism phenotypeAmerican Journal of Medical Genetics, 2000
- Using Neural Networks as an Aid in the Determination of Disease Status: Comparison of Clinical Diagnosis to Neural-Network Predictions in a Pedigree with Autosomal Dominant Limb-Girdle Muscular DystrophyAmerican Journal of Human Genetics, 1998