Study on a back propogation neural network-based predictive model for prevalence of birth defect.
- Author:
Wei WANG
1
;
Wei XU
;
Ya-jun ZHENG
;
Bao-sen ZHOU
Author Information
- Publication Type:Journal Article
- MeSH: Congenital Abnormalities; epidemiology; Female; Humans; Infant, Newborn; Neural Networks (Computer); Pregnancy; Prevalence
- From: Chinese Journal of Epidemiology 2007;28(5):507-509
- CountryChina
- Language:Chinese
-
Abstract:
OBJECTIVETo evaluate the value of a back propogation (BP) network on prediction of birth defect and to give clues on its prevention.
METHODSData of birth defect in Shenyang from 1995 to 2005 were used as a training set to predict the prevalence rate of birth defect. Neural network tools box of Software MATLAB 6.5 was used to train and simulate BP Artificial Neural Network.
RESULTSWhen using data of the year 1995-2003 to predict the prevalence rate of birth defect in 2004-2005, the results showed that: the fitting average error of prevalence rate was 1.34%, RNL was 0.9874, and the prediction of average error was 1.78%. Using data of the year 1995-2005 to predict the prevalence rate of birth defect in 2006-2007, the results showed that: the fitting average error was 0.33%, RNL was 0.9954, the prevalence rates of birth defect in 2006-2007 were 11.00% and 11.29%.
CONCLUSIONCompared to the conventional statistics method, BP not only showed better prediction precision, but had no limit to the type or distribution of relevant data, thus providing a powerful method in epidemiological prediction.