Abstract. An association classification algorithm has been developed to explore adverse drug reactions in a large medical transaction dataset with unbalanced classes. Rules discovered can be used to alert medical practitioners when prescribing drugs, to certain categories of patients, to potential adverse effects. We assess the rules using survival charts and propose two kinds of probability trees to present them. Both of them represent the risk of given adverse drug reaction for certain categories of patients in terms of risk ratios, which are familiar to medical practitioners. The first approach shows risk ratios when all rule conditions apply. The second presents the risk associated with a single risk factor with other parts of the rule ...
Drug interactions are interweaving effects between two or more drugs that can have desirable or harm...
Association rule mining can be combined with complex network theory to automatically create a knowle...
BACKGROUND: The detection of signals of adverse drug events (ADEs) has increased because of the use ...
An association classification algorithm has been developed to explore adverse drug reactions in a la...
Abstract—Early detection of unknown adverse drug reac-tions (ADRs) in postmarketing surveillance sav...
Adverse reactions to drugs are a leading cause of hospitalisation and death worldwide. Most post-mar...
Abstract—Side effects of prescribed medications are a com-mon occurrence. Electronic healthcare data...
There are many methods for finding association rules in very large data. However it is well known th...
Diabetes is a life-threatening issue in modern health care domain. With the use of data mining techn...
Abstract—In many real-world applications, it is important to mine causal relationships where an even...
This work is licensed under a Creative Commons Attribution Non-Commercial-No Derivatives 4.0 Interna...
We are presently exploring the idea of discovering associa-tion rules in medical data. There are sev...
Mining and understanding patients’ disease-development pattern is a major healthcare need. A huge nu...
PURPOSE: In post-marketing drug safety surveillance, data mining can potentially detect rare but ser...
Association rules represent a promising technique to nd hidden patterns in a medical data set. The m...
Drug interactions are interweaving effects between two or more drugs that can have desirable or harm...
Association rule mining can be combined with complex network theory to automatically create a knowle...
BACKGROUND: The detection of signals of adverse drug events (ADEs) has increased because of the use ...
An association classification algorithm has been developed to explore adverse drug reactions in a la...
Abstract—Early detection of unknown adverse drug reac-tions (ADRs) in postmarketing surveillance sav...
Adverse reactions to drugs are a leading cause of hospitalisation and death worldwide. Most post-mar...
Abstract—Side effects of prescribed medications are a com-mon occurrence. Electronic healthcare data...
There are many methods for finding association rules in very large data. However it is well known th...
Diabetes is a life-threatening issue in modern health care domain. With the use of data mining techn...
Abstract—In many real-world applications, it is important to mine causal relationships where an even...
This work is licensed under a Creative Commons Attribution Non-Commercial-No Derivatives 4.0 Interna...
We are presently exploring the idea of discovering associa-tion rules in medical data. There are sev...
Mining and understanding patients’ disease-development pattern is a major healthcare need. A huge nu...
PURPOSE: In post-marketing drug safety surveillance, data mining can potentially detect rare but ser...
Association rules represent a promising technique to nd hidden patterns in a medical data set. The m...
Drug interactions are interweaving effects between two or more drugs that can have desirable or harm...
Association rule mining can be combined with complex network theory to automatically create a knowle...
BACKGROUND: The detection of signals of adverse drug events (ADEs) has increased because of the use ...