The Medical Quality Improvement Consortium data warehouse contains de-identified data on more than 3.6 million patients including their problem lists, test results, procedures and medication lists. This study uses reconstructability analysis, an information-theoretic data mining technique, on the MQIC data warehouse to empirically identify risk factors for various complications of diabetes including myocardial infarction and microalbuminuria. The risk factors identified match those risk factors identified in the literature, demonstrating the utility of the MQIC data warehouse for outcomes research, and RA as a technique for mining clinical data warehouses
This dissertation is about data mining in health care. The first manuscript is a case study of a pha...
The accumulating amounts of data are making traditional analysis methods impractical. Novel tools em...
Data mining is the process of selecting, exploring, and modeling large amounts of data to discover u...
This study investigated the extent of use of data mining on electronic health records to support evi...
Tendency for data mining application in healthcare today is great, because healthcare sector is rich...
Mounting amounts of data made traditional data analysis methods impractical. Data mining (DM) tools ...
Early detection of patients with lifted danger of creating diabetes mellitus is basic to the enhance...
Data mining has been used intensively and extensively by many organizations. In healthcare, data min...
Introduction: In the information age, data are the most important asset for health organizations. In...
Data Analytics in healthcare assumes to be a viable part in performing significant constant examinat...
Mounting amounts of data made traditional data analysis methods impractical. Data mining (DM) tools ...
Medical datasets have reached enormous capacities. This data may contain valuable information that a...
© 2017 Dr Yamuna KankanigePredicting health-related outcomes is important for developing decision su...
Objectives: To measure the reliability of data mining for indicators related to patient treatment at...
The article explores data mining algorithms, which based on rules and calculations, that allow us to...
This dissertation is about data mining in health care. The first manuscript is a case study of a pha...
The accumulating amounts of data are making traditional analysis methods impractical. Novel tools em...
Data mining is the process of selecting, exploring, and modeling large amounts of data to discover u...
This study investigated the extent of use of data mining on electronic health records to support evi...
Tendency for data mining application in healthcare today is great, because healthcare sector is rich...
Mounting amounts of data made traditional data analysis methods impractical. Data mining (DM) tools ...
Early detection of patients with lifted danger of creating diabetes mellitus is basic to the enhance...
Data mining has been used intensively and extensively by many organizations. In healthcare, data min...
Introduction: In the information age, data are the most important asset for health organizations. In...
Data Analytics in healthcare assumes to be a viable part in performing significant constant examinat...
Mounting amounts of data made traditional data analysis methods impractical. Data mining (DM) tools ...
Medical datasets have reached enormous capacities. This data may contain valuable information that a...
© 2017 Dr Yamuna KankanigePredicting health-related outcomes is important for developing decision su...
Objectives: To measure the reliability of data mining for indicators related to patient treatment at...
The article explores data mining algorithms, which based on rules and calculations, that allow us to...
This dissertation is about data mining in health care. The first manuscript is a case study of a pha...
The accumulating amounts of data are making traditional analysis methods impractical. Novel tools em...
Data mining is the process of selecting, exploring, and modeling large amounts of data to discover u...