In this paper, we discuss a problem of finding risk patterns in medical data. We define risk patterns by a statistical metric, relative risk, which has been widely used in epidemiological research. We characterise the problem of mining risk patterns as an optimal rule discovery problem. We study an anti-monotone property for mining optimal risk pattern sets and present an algorithm to make use of the property in risk pattern discovery. The method has been applied to a real world data set to find patterns associated with an allergic event for ACE inhibitors. The algorithm has generated some useful results for medical researchers
Rule miners are unsupervised learning methods used to detect associations between items. These algor...
An association classification algorithm has been developed to explore adverse drug reactions in a la...
In this dissertation we present rule-based machine learning methods for solving problems with high-d...
In this paper, we discuss a problem of finding risk patterns in med-ical data. We define risk patter...
Mining and understanding patients\u27 disease-development pattern is a major healthcare need. A huge...
Medical information is spread into countless different data sources such as websites and databases. ...
Odds ratio (OR), relative risk (RR) (risk ratio), and absolute risk reduction (ARR) (risk difference...
The article explores data mining algorithms, which based on rules and calculations, that allow us to...
There are many methods for finding association rules in very large data. However it is well known th...
This thesis presents the use of pattern recognition and data mining techniques into risk prediction ...
Association rules represent a promising technique to nd hidden patterns in a medical data set. The m...
This thesis presents the use of pattern recognition and data mining techniques into risk prediction ...
Data mining is a process of analyzing data from various perspectives and trims it into useful inform...
Accuracy plays a vital role in the medical field of Cardiology as it concerns with the life of an in...
Early detection of patients with lifted danger of creating diabetes mellitus is basic to the enhance...
Rule miners are unsupervised learning methods used to detect associations between items. These algor...
An association classification algorithm has been developed to explore adverse drug reactions in a la...
In this dissertation we present rule-based machine learning methods for solving problems with high-d...
In this paper, we discuss a problem of finding risk patterns in med-ical data. We define risk patter...
Mining and understanding patients\u27 disease-development pattern is a major healthcare need. A huge...
Medical information is spread into countless different data sources such as websites and databases. ...
Odds ratio (OR), relative risk (RR) (risk ratio), and absolute risk reduction (ARR) (risk difference...
The article explores data mining algorithms, which based on rules and calculations, that allow us to...
There are many methods for finding association rules in very large data. However it is well known th...
This thesis presents the use of pattern recognition and data mining techniques into risk prediction ...
Association rules represent a promising technique to nd hidden patterns in a medical data set. The m...
This thesis presents the use of pattern recognition and data mining techniques into risk prediction ...
Data mining is a process of analyzing data from various perspectives and trims it into useful inform...
Accuracy plays a vital role in the medical field of Cardiology as it concerns with the life of an in...
Early detection of patients with lifted danger of creating diabetes mellitus is basic to the enhance...
Rule miners are unsupervised learning methods used to detect associations between items. These algor...
An association classification algorithm has been developed to explore adverse drug reactions in a la...
In this dissertation we present rule-based machine learning methods for solving problems with high-d...