6533b85efe1ef96bd12bfaef

RESEARCH PRODUCT

Neural networks as effective techniques in clinical management of patients: some case studies

Jose SepulvedaAntonio J. SerranoVíctor JiménezJosé D. MartínEmilio SoriaG. Camps

subject

Input/output0209 industrial biotechnologyDecision support systemArtificial neural networkbusiness.industryComputer science020208 electrical & electronic engineering02 engineering and technologyMachine learningcomputer.software_genreClinical decision support systemVariable (computer science)Identification (information)020901 industrial engineering & automationMultilayer perceptron0202 electrical engineering electronic engineering information engineeringA priori and a posterioriArtificial intelligencebusinessInstrumentationcomputer

description

In this paper, we present four examples of effective implementation of neural systems in the daily clinical practice. There are two main goals in this work; the first one is to show that neural networks are especially well-suited tools for solving different kind of medical/pharmaceutical problems, given the complex input output relationships and the few a priori knowledge about data distribution and variable relations. The second goal is to develop specific software applications, which enclose complex mathematical models, to clinicians; thus, the use of such models as decision support systems is facilitated. Four important pharmaceutical problems are considered in this study: identification of patients with potential risk of postchemotherapy emesis, classification of patients depending on their risk of digoxin intoxication, prediction of cyclosporine A through concentration and prediction of erythropoietin blood concentrations. The Multilayer Perceptron in classification problems and dynamic neural networks, such as the Elman recurrent neural network and the Finite Impulse Response neural network in prediction problems, have been used. Moreover, network ensembles of different kind of networks have been taken into account. Results show that neural networks are suitable tools for medical classification and prediction tasks, outperforming the mostly used methods in these problems (logistic regression and multivariate analysis).

https://doi.org/10.1191/0142331204tm118oa