Poynton Mollie R, McDaniel Anna M
University of Utah College of Nursing, Salt Lake City, UT, USA.
J Biomed Inform. 2006 Dec;39(6):680-6. doi: 10.1016/j.jbi.2006.02.016. Epub 2006 Mar 24.
This study examined the ability of a backpropagation neural network (BPNN) classifier to distinguish between current and former smokers in the 2000 National Health Interview Survey (NHIS) sample adult file. The BPNN classifier performance exceeded that of random chance, with asymmetric 95% confidence intervals for A(z) (area under receiver operating characteristic curve)=(0.7532, 0.7790). Separation of current and former smokers was imperfect, as illustrated by the receiver operating characteristic (ROC) curve. Additionally, performance did not exceed that of a comparison classifier created using logistic regression. Attribute subset selection identified three novel attributes related to smoking cessation status. This study establishes the ability of backpropagation neural networks to classify a complex health behavior, smoking cessation. It also illustrates the hypothesis-generating capacity of data mining methods when applied to large population-based health survey data. Ultimately, BPNN classifiers of smoking cessation status may be useful in decision support systems for smoking cessation interventions.
本研究在2000年国家健康访谈调查(NHIS)样本成人档案中,检验了反向传播神经网络(BPNN)分类器区分当前吸烟者和既往吸烟者的能力。BPNN分类器的性能超过了随机概率,A(z)(受试者工作特征曲线下面积)的不对称95%置信区间为(0.7532, 0.7790)。如受试者工作特征(ROC)曲线所示,当前吸烟者和既往吸烟者的区分并不完美。此外,其性能并未超过使用逻辑回归创建的比较分类器。属性子集选择确定了与戒烟状态相关的三个新属性。本研究确立了反向传播神经网络对复杂健康行为——戒烟进行分类的能力。它还说明了数据挖掘方法应用于基于人群的大型健康调查数据时产生假设的能力。最终,戒烟状态的BPNN分类器可能在戒烟干预的决策支持系统中有用。