Artificial neural networks (ANNs) have been developed, implemented and tested on the basis of a four-year-long experimental data set, with the aim of analyzing the performance and clinical outcome of an existing medical ward, and predicting the effects that possible readjustments and/or interventions on the structure may produce on it. Advantages of the ANN technique over more traditional mathematical models are twofold: on one hand, this approach deals quite naturally with a large number of parameters/variables, and also allows to identify those variables which do not play a crucial role in the system dynamics; on the other hand, the implemented ANN can be more easily used by a staff of non-mathematicians in the unit, as an on-site predict...
Artificial neural networks in Neurosciences. This article shows that artificial neural networks are ...
Artificial Neural Networks or widely known as Neural networks (ANNs or NNs) is a computational parad...
A biological neurone receives inputs from many sources, combines and presents them as a non-linear o...
Artificial neural networks (ANNs) have been developed, implemented and tested on the basis of a four...
contemporaneous, formative computer analysis into the delivery and assessment of patient care, with ...
This thesis describes research conducted at City University into the application of Artificial Neura...
In 1998, over 400 papers on artificial neural networks (ANNs) were published in the context of medic...
This study is aiming at estimating the patient volumes of hospitals by using artificial neural netw...
Artificial Neural Networks (ANN) approach is an alternate way to classical methods. As a computation...
This thesis presents an Artificial Neural Network Research Framework (ANN RFW) for predicting medica...
Artificial neural networks (ANNs) are relatively new computational tools that have been extensively ...
Introduction: Artificial neural networks mimic brains behavior. They are able to predict and feature...
Neural network is a web of million numbers of inter-connected neurons which executes parallel proces...
Predicting clinical outcome following a specific treatment is a challenge that sees physicians and r...
Artificial neural networks are 'biologically' inspired networks.They have the ability to learn from ...
Artificial neural networks in Neurosciences. This article shows that artificial neural networks are ...
Artificial Neural Networks or widely known as Neural networks (ANNs or NNs) is a computational parad...
A biological neurone receives inputs from many sources, combines and presents them as a non-linear o...
Artificial neural networks (ANNs) have been developed, implemented and tested on the basis of a four...
contemporaneous, formative computer analysis into the delivery and assessment of patient care, with ...
This thesis describes research conducted at City University into the application of Artificial Neura...
In 1998, over 400 papers on artificial neural networks (ANNs) were published in the context of medic...
This study is aiming at estimating the patient volumes of hospitals by using artificial neural netw...
Artificial Neural Networks (ANN) approach is an alternate way to classical methods. As a computation...
This thesis presents an Artificial Neural Network Research Framework (ANN RFW) for predicting medica...
Artificial neural networks (ANNs) are relatively new computational tools that have been extensively ...
Introduction: Artificial neural networks mimic brains behavior. They are able to predict and feature...
Neural network is a web of million numbers of inter-connected neurons which executes parallel proces...
Predicting clinical outcome following a specific treatment is a challenge that sees physicians and r...
Artificial neural networks are 'biologically' inspired networks.They have the ability to learn from ...
Artificial neural networks in Neurosciences. This article shows that artificial neural networks are ...
Artificial Neural Networks or widely known as Neural networks (ANNs or NNs) is a computational parad...
A biological neurone receives inputs from many sources, combines and presents them as a non-linear o...