This paper presents a medical diagnosis support system based on an ensemble of single parameter k–NN classifiers [1]. System was verified on a database containing real blood test results of diagnosed patients with a liver fibrosis. This dataset contains problems typical to a real medical data – especially missing values. Paper also describes the process of selecting a subset of parameters used for further evaluation (feature selection/elimination algorithm). Complete database contains many parameters, but not all are important for diagnosis, thus eliminating them is an important step. A comparison of proposed method of classification and feature selection with methods known from literature has also been presented
In this work the use of machine learning in medicine, with a particular focus on liver disease, is i...
The liver is the largest gland in the body that plays a role in digestive activities such as digesti...
Evaluation of classifiers in diagnosis support systems is a non-trivial task. It can be done in a fo...
The proliferation of digital medical device technology in the modern hospital has led to an explosio...
AbstractAccuracy in data classification depends on the dataset used for learning. Now-a-days the mos...
Abstract:- In processing the medical data, choosing the optimal subset of features is important, not...
Big data is a new and upcoming trend which many industries are keen to jump onto the bandwagon to im...
This paper deals with the problem of diagnosing oncological diseases based on blood protein markers....
Medical Data Mining (MDM) is one of the most critical aspects of automated disease diagnosis and dis...
Until recently, researchers have developed various tools and methodologies for effective clinical de...
The work aims to improve the quality of classification of diagnostic advisor on the example of the p...
A design for medical diagnostic systems composed of ensembles of neural self organizing feature map ...
This paper offers a hybrid approach that uses the artificial bee colony (ABC) algorithm for feature ...
Medical judgments are tough and challenging as the decisions are often based on the deficient and am...
The aim of this paper is to discuss about various feature selection algorithms applied on different ...
In this work the use of machine learning in medicine, with a particular focus on liver disease, is i...
The liver is the largest gland in the body that plays a role in digestive activities such as digesti...
Evaluation of classifiers in diagnosis support systems is a non-trivial task. It can be done in a fo...
The proliferation of digital medical device technology in the modern hospital has led to an explosio...
AbstractAccuracy in data classification depends on the dataset used for learning. Now-a-days the mos...
Abstract:- In processing the medical data, choosing the optimal subset of features is important, not...
Big data is a new and upcoming trend which many industries are keen to jump onto the bandwagon to im...
This paper deals with the problem of diagnosing oncological diseases based on blood protein markers....
Medical Data Mining (MDM) is one of the most critical aspects of automated disease diagnosis and dis...
Until recently, researchers have developed various tools and methodologies for effective clinical de...
The work aims to improve the quality of classification of diagnostic advisor on the example of the p...
A design for medical diagnostic systems composed of ensembles of neural self organizing feature map ...
This paper offers a hybrid approach that uses the artificial bee colony (ABC) algorithm for feature ...
Medical judgments are tough and challenging as the decisions are often based on the deficient and am...
The aim of this paper is to discuss about various feature selection algorithms applied on different ...
In this work the use of machine learning in medicine, with a particular focus on liver disease, is i...
The liver is the largest gland in the body that plays a role in digestive activities such as digesti...
Evaluation of classifiers in diagnosis support systems is a non-trivial task. It can be done in a fo...