Artificial neural networks now are used in many fields. They have become well established
as viable, multipurpose, robust computational methodologies with solid theoretic support
and with strong potential to be effective in any discipline, especially medicine.
For example, neural networks can extract new medical information from raw data, build
computer models that are useful for medical decision-making, and aid in the distribution
of medical expertise. Because many important neural network applications currently
are emerging, the authors have prepared this article to bring a clearer understanding
of these biologically inspired computing paradigms to anyone interested in exploring
their use in medicine. They discuss the historical development of neural networks
and provide the basic operational mathematics for the popular multilayered perceptron.
The authors also describe good training, validation, and testing techniques, and discuss
measurements of performance and reliability, including the use of bootstrap methods
to obtain confidence intervals. Because it is possible to predict outcomes for individual
patients with a neural network, the authors discuss the paradigm shift that is taking
place from previous "bin-model" approaches, in which patient outcome and management
is assumed from the statistical groups in which the patient fits. The authors explain
that with neural networks it is possible to mediate predictions for individual patients
with prevalence and misclassification cost considerations using receiver operating
characteristic methodology. The authors illustrate their findings with examples that
include prostate carcinoma detection, coronary heart disease risk prediction, and
medication dosing. The authors identify and discuss obstacles to success, including
the need for expanded databases and the need to establish multidisciplinary teams.
The authors believe that these obstacles can be overcome and that neural networks
have a very important role in future medical decision support and the patient management
systems employed in routine medical practice.
Copyright 2001 American Cancer Society.