PubMedID: 20703908The aim of this study is to evaluate the underlying etiologic factors of epilepsy patients and to predict the prognosis of these patients by using a Multi-Layer Perceptron Neural Network (MLPNN) according to risk factors. 758 patients with epilepsy diagnosis are included in this study. The MLPNNs were trained by the parameters of demographic properties of the patients and risk factors of the disease. The results show that the most crucial risk factor of the epilepsy patients was constituted by the febrile convulsion (21.9%), the kinship of parents (22.3%), the history of epileptic relatives (21.6%) and the history of head injury (18.6%). We had 91.1 % correct prediction rate for detection of the prognosis by using the MLPN...
Aim: To investigate the ability of neural networks to detect and classify the complete improvement o...
Aim: To investigate the ability of neural networks to detect and classify the complete improvement o...
OBJECTIVE: To compare machine learning methods for predicting inpatient seizures risk and determine ...
Epilepsy is responsible for an enormous amount of “untold” suffering around the globe. Fortunately, ...
ARTS ET METIERS ParisTech;Fraunhofer AUSTRIA;IESEG SCHOOL OF MANAGEMENT;Igipm Laboratoire de genie I...
European Biophysics Societies Association (EBSA);Italian Group of Researchers in Pattern Recognition...
PubMedID: 18814496Epilepsy is a disorder of cortical excitability and still an important medical pro...
Epilepsy is a disorder of cortical excitability and still an important medical problem. The correct ...
Epilepsy surgery is effective in reducing both the number and frequency of seizures, particularly in...
Thesis (Ph.D.)--University of Washington, 2012During the course of care, patients frequently develop...
<div><p>Epilepsy surgery is effective in reducing both the number and frequency of seizures, particu...
Abstract—Machine learning is becoming more significant in medical image processing, resulting in new...
PubMedID: 19397095Epilepsy is a disorder of cortical excitability and still an important medical pro...
Objective: To compare machine learning methods for predicting inpatient seizures risk and determine ...
The complex interactions of the epileptic focus and the brain systemic response require an integrate...
Aim: To investigate the ability of neural networks to detect and classify the complete improvement o...
Aim: To investigate the ability of neural networks to detect and classify the complete improvement o...
OBJECTIVE: To compare machine learning methods for predicting inpatient seizures risk and determine ...
Epilepsy is responsible for an enormous amount of “untold” suffering around the globe. Fortunately, ...
ARTS ET METIERS ParisTech;Fraunhofer AUSTRIA;IESEG SCHOOL OF MANAGEMENT;Igipm Laboratoire de genie I...
European Biophysics Societies Association (EBSA);Italian Group of Researchers in Pattern Recognition...
PubMedID: 18814496Epilepsy is a disorder of cortical excitability and still an important medical pro...
Epilepsy is a disorder of cortical excitability and still an important medical problem. The correct ...
Epilepsy surgery is effective in reducing both the number and frequency of seizures, particularly in...
Thesis (Ph.D.)--University of Washington, 2012During the course of care, patients frequently develop...
<div><p>Epilepsy surgery is effective in reducing both the number and frequency of seizures, particu...
Abstract—Machine learning is becoming more significant in medical image processing, resulting in new...
PubMedID: 19397095Epilepsy is a disorder of cortical excitability and still an important medical pro...
Objective: To compare machine learning methods for predicting inpatient seizures risk and determine ...
The complex interactions of the epileptic focus and the brain systemic response require an integrate...
Aim: To investigate the ability of neural networks to detect and classify the complete improvement o...
Aim: To investigate the ability of neural networks to detect and classify the complete improvement o...
OBJECTIVE: To compare machine learning methods for predicting inpatient seizures risk and determine ...