Typical medical diagnosis applications of neural networks for prediction and classification require training data (observations) that include the "correct" category for a number of patient records. In this paper, we borrow a technique from control systems applications of neural networks. Optimal control parameters of a system are typically not known. Instead, we only know the effect on a remote system. The correct control action drives the remote system optimally. The learning technique requires two networks: one to model the system to be controlled (here, the patient), and one to optimize the treatment (here, the treating physician). The concept was tested with artificially generated noisy data, and gives promising results
The aim of this paper is to present several approaches by which technology can assist medical decisi...
Abstract The method proposed here uses Bayesian non-linear classifier to select optimal subset of a...
Data mining and machine learning focus on inducing previously unknown, potentially useful, and ulti...
An approach for optimizing medical treatment as a function of measurable patient data is analyzed us...
We propose a novel approach for constructing effective treatment policies when the observed data is ...
Neural networks are one option to implement decision support systems for health care applications. I...
dissertationThe overwhelming amount and diversity of clinical data that may be collected from patien...
Neural networks are increasingly being seen as an addition to the statistics toolkit which should be...
Personalized medicine has received increasing attention among statisticians, computer scientists and...
In its first part, this contribution reviews shortly the application of neural network methods to me...
Neural networks have been intensively studied as machine learning models and widely applied in vario...
“As the medical world becomes increasingly intertwined with the tech sphere, machine learning on med...
We suppose the neural networks for solution the problem of the diagnostic in Homeopath System and c...
[[abstract]]A major bottleneck in building expert systems is the process of acquiring the required k...
The theory and computational tools developed to interpret and explore energy landscapes in molecular...
The aim of this paper is to present several approaches by which technology can assist medical decisi...
Abstract The method proposed here uses Bayesian non-linear classifier to select optimal subset of a...
Data mining and machine learning focus on inducing previously unknown, potentially useful, and ulti...
An approach for optimizing medical treatment as a function of measurable patient data is analyzed us...
We propose a novel approach for constructing effective treatment policies when the observed data is ...
Neural networks are one option to implement decision support systems for health care applications. I...
dissertationThe overwhelming amount and diversity of clinical data that may be collected from patien...
Neural networks are increasingly being seen as an addition to the statistics toolkit which should be...
Personalized medicine has received increasing attention among statisticians, computer scientists and...
In its first part, this contribution reviews shortly the application of neural network methods to me...
Neural networks have been intensively studied as machine learning models and widely applied in vario...
“As the medical world becomes increasingly intertwined with the tech sphere, machine learning on med...
We suppose the neural networks for solution the problem of the diagnostic in Homeopath System and c...
[[abstract]]A major bottleneck in building expert systems is the process of acquiring the required k...
The theory and computational tools developed to interpret and explore energy landscapes in molecular...
The aim of this paper is to present several approaches by which technology can assist medical decisi...
Abstract The method proposed here uses Bayesian non-linear classifier to select optimal subset of a...
Data mining and machine learning focus on inducing previously unknown, potentially useful, and ulti...