OBJECTIVE: Data quality assessment is a challenging facet for research using coded administrative health data. Current assessment approaches are time and resource intensive. We explored whether association rule mining (ARM) can be used to develop rules for assessing data quality. MATERIALS AND METHODS: We extracted 2013 and 2014 records from the hospital discharge abstract database (DAD) for patients between the ages of 55 and 65 from five acute care hospitals in Alberta, Canada. The ARM was conducted using the 2013 DAD to extract rules with support ≥0.0019 and confidence ≥0.5 using the bootstrap technique, and tested in the 2014 DAD. The rules were compared against the method of coding frequency and assessed for their ability to detect err...
Abstract The quality of discovered association rules is commonly evaluated by interestingness measur...
AbstractBackgroundThe patient problem list is an important component of clinical medicine. The probl...
Association rules represent a promising technique to nd hidden patterns in a medical data set. The m...
OBJECTIVE: Data quality assessment is a challenging facet for research using coded administrative he...
Introduction Data quality assessment is a challenging facet for researches using coded administrativ...
Data presented in this article relates to the research article entitled "Exploration of association ...
International audienceBackground: The widespread use of electronic health records (EHRs) has generat...
Background: In a prior study, we developed methods for automatically identifying associations be-twe...
BACKGROUND: The widespread use of electronic health records (EHRs) has generated massive clinical da...
Introduction The problem list of a patient’s primary care electronic medical record (EMR) generally ...
As an indicator of healthcare quality and performance, hospital readmission incurs major costs for h...
Data mining technologies have been used extensively in the commercial retail sectors to extract data...
Objectives: To measure the reliability of data mining for indicators related to patient treatment at...
Many large organizations have multiple data sources, while putting all data together from different ...
Reliable research demands data of known quality. This can be very challenging for electronic health ...
Abstract The quality of discovered association rules is commonly evaluated by interestingness measur...
AbstractBackgroundThe patient problem list is an important component of clinical medicine. The probl...
Association rules represent a promising technique to nd hidden patterns in a medical data set. The m...
OBJECTIVE: Data quality assessment is a challenging facet for research using coded administrative he...
Introduction Data quality assessment is a challenging facet for researches using coded administrativ...
Data presented in this article relates to the research article entitled "Exploration of association ...
International audienceBackground: The widespread use of electronic health records (EHRs) has generat...
Background: In a prior study, we developed methods for automatically identifying associations be-twe...
BACKGROUND: The widespread use of electronic health records (EHRs) has generated massive clinical da...
Introduction The problem list of a patient’s primary care electronic medical record (EMR) generally ...
As an indicator of healthcare quality and performance, hospital readmission incurs major costs for h...
Data mining technologies have been used extensively in the commercial retail sectors to extract data...
Objectives: To measure the reliability of data mining for indicators related to patient treatment at...
Many large organizations have multiple data sources, while putting all data together from different ...
Reliable research demands data of known quality. This can be very challenging for electronic health ...
Abstract The quality of discovered association rules is commonly evaluated by interestingness measur...
AbstractBackgroundThe patient problem list is an important component of clinical medicine. The probl...
Association rules represent a promising technique to nd hidden patterns in a medical data set. The m...