Assessment of genetic and nongenetic interactions for the prediction of depressive symptomatology: An analysis of the Wisconsin longitudinal study using machine learning algorithms
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DOI: 10.2105/AJPH.2012.301141
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adult; aged; article; Bayes theorem; cohort analysis; depression; female; genetics; genotype environment interaction; human; life event; longitudinal study; male; middle aged; psychology; risk factor; single nucleotide polymorphism; statistical model; support vector machine; United States; very elderly; Adult; Aged; Aged; 80 and over; Bayes Theorem; Cohort Studies; Depression; Female; Gene-Environment Interaction; Humans; Life Change Events; Logistic Models; Longitudinal Studies; Male; Middle Aged; Polymorphism; Single Nucleotide; Psychology; Risk Factors; Support Vector Machines; Wisconsin;All these keywords.
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