Modifiable risk factors predicting major depressive disorder at four year follow-up: a decision tree approach
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Batterham, Philip
Christensen, Helen
Mackinnon, Andrew
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BioMed Central Ltd
Abstract
BACKGROUND: Relative to physical health conditions such as cardiovascular disease, little is known
about risk factors that predict the prevalence of depression. The present study investigates the
expected effects of a reduction of these risks over time, using the decision tree method favoured
in assessing cardiovascular disease risk.
METHODS: The PATH through Life cohort was used for the study, comprising 2,105 20-24 year
olds, 2,323 40-44 year olds and 2,177 60-64 year olds sampled from the community in the Canberra
region, Australia. A decision tree methodology was used to predict the presence of major
depressive disorder after four years of follow-up. The decision tree was compared with a logistic
regression analysis using ROC curves.
RESULTS: The decision tree was found to distinguish and delineate a wide range of risk profiles.
Previous depressive symptoms were most highly predictive of depression after four years,
however, modifiable risk factors such as substance use and employment status played significant
roles in assessing the risk of depression. The decision tree was found to have better sensitivity and
specificity than a logistic regression using identical predictors.
CONCLUSION: The decision tree method was useful in assessing the risk of major depressive
disorder over four years. Application of the model to the development of a predictive tool for
tailored interventions is discussed.
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BMC Psychiatry 9.75 (2009)
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BMC Psychiatry
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