Abstract Background Health care data allow for the study and surveillance of chronic diseases such as diabetes. The objective of this study was to identify and validate optimal algorithms for diabetes cases within health care administrative databases for different research purposes, populations, and data sources. Methods We linked health care administrative databases from Ontario, Canada to a reference standard of primary care electronic medical records (EMRs). We then identified and calculated the performance characteristics of multiple adult diabetes case definitions, using combinations of data sources and time windows. Results The best algorithm to identify diabetes cases was the presence at any time of one hospitalization or physician c...
OBJECTIVEdTo create surveillance algorithms to detect diabetes and classify type 1 versus type 2 dia...
Objective: To develop and validate a phenotyping algorithm for the identification of patients with t...
Background and aims: Diabetes can often remain undiagnosed or unregistered in administrative databas...
Abstract Background Health care data allow for the st...
International audienceObjectivesIn the French national health insurance information system (SNDS) th...
Abstract Background Electronic medical records contai...
Introduction We aimed to develop algorithms distinguishing type 1 diabetes (T1D) from type 2 diabete...
BACKGROUND: Electronic medical records contain valuable clinical information not readily available e...
Objectives Health administrative data are frequently used for diabetes surveillance. We aimed to det...
Health administrative data are frequently used for diabetes surveillance. We aimed to determine the ...
Background: Effective population management of patients with diabetes requires timely recognition. C...
Health administrative data are frequently used for diabetes surveillance. We aimed to determine the ...
Abstract Background Effective population management of patients with diabetes requires timely recogn...
Background: Electronic diabetes registers promote structured care and enable identification of undia...
BACKGROUND: Electronic diabetes registers promote structured care and enable identification of undia...
OBJECTIVEdTo create surveillance algorithms to detect diabetes and classify type 1 versus type 2 dia...
Objective: To develop and validate a phenotyping algorithm for the identification of patients with t...
Background and aims: Diabetes can often remain undiagnosed or unregistered in administrative databas...
Abstract Background Health care data allow for the st...
International audienceObjectivesIn the French national health insurance information system (SNDS) th...
Abstract Background Electronic medical records contai...
Introduction We aimed to develop algorithms distinguishing type 1 diabetes (T1D) from type 2 diabete...
BACKGROUND: Electronic medical records contain valuable clinical information not readily available e...
Objectives Health administrative data are frequently used for diabetes surveillance. We aimed to det...
Health administrative data are frequently used for diabetes surveillance. We aimed to determine the ...
Background: Effective population management of patients with diabetes requires timely recognition. C...
Health administrative data are frequently used for diabetes surveillance. We aimed to determine the ...
Abstract Background Effective population management of patients with diabetes requires timely recogn...
Background: Electronic diabetes registers promote structured care and enable identification of undia...
BACKGROUND: Electronic diabetes registers promote structured care and enable identification of undia...
OBJECTIVEdTo create surveillance algorithms to detect diabetes and classify type 1 versus type 2 dia...
Objective: To develop and validate a phenotyping algorithm for the identification of patients with t...
Background and aims: Diabetes can often remain undiagnosed or unregistered in administrative databas...