The study investigated the effect of different input selections on the
performance of artificial neural networks in screening for acute myocardial
infarction (AMI) in Malaysian patients complaining of chest pain. We used
hospital data to create neural networks with four input selections and used
these to diagnose AMI. A 10-fold cross-validation and committee approach was
used. All the neural networks using various input selections outperformed a
multiple logistic regression model, although the difference was not
statistically significant. The neural networks achieved an area under the ROC
curve of 0.792 using nine inputs, whereas multiple logistic regression achieved
0.739 using 64 inputs. Sensitivity levels of over 90 per cent were achieved
using low output threshold levels. Specificity levels of over 90 per cent were
achieved using threshold levels of 0.4-0.5. Thus neural networks can perform as
well as multiple logistic regression models even when using far fewer inputs.