Genetic programming optimised neural network (GPNN) as a method for improved identification of gene-environment interactions

A. Motsinger (Raleigh, Nc, United States of America)

Source: Annual Congress 2008 - WS1 - Gene-environment interactions: challenges and pitfalls in study design, ethical issues and statistical analyses

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A. Motsinger (Raleigh, Nc, United States of America). Genetic programming optimised neural network (GPNN) as a method for improved identification of gene-environment interactions. Annual Congress 2008 - WS1 - Gene-environment interactions: challenges and pitfalls in study design, ethical issues and statistical analyses

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