Literature DB >> 14992094

[Artificial neural networks. Theory and applications in anesthesia, intensive care and emergency medicine].

M Traeger1, A Eberhart, G Geldner, A M Morin, C Putzke, H Wulf, L H Eberhart.   

Abstract

Artificial neural networks (ANN) are constructed to simulate processes of the central nervous system of higher creatures. An ANN consists of a set of processing units (nodes) which simulate neurons and are interconnected via a set of "weights" (analogous to synaptic connections in the nervous system) in a way which allows signals to travel through the network in parallel. The nodes (neurons) are simple computing elements. They accumulate input from other neurons by means of a weighted sum. If a certain threshold is reached the neuron sends information to all other connected neurons otherwise it remains quiescent. One major difference compared with traditional statistical or rule-based systems is the learning aptitude of an ANN. At the very beginning of a training process an ANN contains no explicit information. Then a large number of cases with a known outcome are presented to the system and the weights of the inter-neuronal connections are changed by a training algorithm designed to minimise the total error of the system. A trained network has extracted rules that are represented by the matrix of the weights between the neurons. This feature is called generalisation and allows the ANN to predict cases that have never been presented to the system before. Artificial neural networks have shown to be useful predicting various events. Especially complex, non-linear, and time depending relationships can be modelled and forecasted. Furthermore an ANN can be used when the influencing variables on a certain event are not exactly known as it is the case in financial or weather forecasts. This article aims to give a short overview on the function of ANN and their previous use and possible future applications in anaesthesia, intensive care, and emergency medicine.

Mesh:

Year:  2003        PMID: 14992094     DOI: 10.1007/s00101-003-0576-x

Source DB:  PubMed          Journal:  Anaesthesist        ISSN: 0003-2417            Impact factor:   1.041


  15 in total

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Journal:  Comput Methods Programs Biomed       Date:  1997-02       Impact factor: 5.428

5.  A neural computational aid to the diagnosis of acute myocardial infarction.

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Authors:  R Rutledge
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  7 in total

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3.  [Prediction of postoperative nausea and vomiting using an artificial neural network].

Authors:  M Traeger; A Eberhart; G Geldner; A M Morin; C Putzke; H Wulf; L H J Eberhart
Journal:  Anaesthesist       Date:  2003-12       Impact factor: 1.041

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5.  Semi-automatic classification of skeletal morphology in genetically altered mice using flat-panel volume computed tomography.

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Journal:  PLoS Genet       Date:  2007-07       Impact factor: 5.917

6.  Transthyretin and complex protein pattern in aqueous humor of patients with primary open-angle glaucoma.

Authors:  F H Grus; S C Joachim; S Sandmann; U Thiel; K Bruns; K J Lackner; N Pfeiffer
Journal:  Mol Vis       Date:  2008-08-04       Impact factor: 2.367

7.  Developing and validating predictive decision tree models from mining chemical structural fingerprints and high-throughput screening data in PubChem.

Authors:  Lianyi Han; Yanli Wang; Stephen H Bryant
Journal:  BMC Bioinformatics       Date:  2008-09-25       Impact factor: 3.169

  7 in total

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