Aims: To develop a computer processable algorithm, capable of running automated searches of routine data that flag miscoded and misclassified cases of diabetes for subsequent clinical review. Method: Anonymized computer data from the Quality Improvement in Chronic Kidney Disease (QICKD) trial (n = 942 031) were analysed using a binary method to assess the accuracy of data on diabetes diagnosis. Diagnostic codes were processed and stratified into: definite, probable and possible diagnosis of Type 1 or Type 2 diabetes. Diagnostic accuracy was improved by using prescription compatibility and temporally sequenced anthropomorphic and biochemical data. Bayesian false detection rate analysis was used to compare findings with those of an entirely ...
OBJECTIVES:UK Biobank is a UK-wide cohort of 502,655 people aged 40-69, recruited from National Heal...
Background: Effective population management of patients with diabetes requires timely recognition. C...
Purpose: Diabetes is a chronic disease that pays for a large proportion of the nation's healthcare e...
Aims: To develop a computer processable algorithm, capable of running automated searches of routine...
Background: Research into diabetes mellitus (DM) often requires a reproducible method for identifyin...
Aims: To determine the effectiveness of self-audit tools designed to detect miscoding, misclassific...
Big data sources represent an opportunity for diabetes research. One example is the French national ...
BACKGROUND: An algorithm that detects errors in diagnosis, classification or coding of diabetes in p...
Objective: To develop and validate a phenotyping algorithm for the identification of patients with t...
Incorrect classification, diagnosis and coding of the type of diabetes may have implications for pat...
The rate of diabetes is rapidly increasing worldwide. Early detection of diabetes can help prevent o...
The performance of automated algorithms for childhood diabetes case ascertainment and type classific...
Objectives: UK Biobank is a UK-wide cohort of 502,655 people aged 40–69, recruited from National Hea...
OBJECTIVEdTo create surveillance algorithms to detect diabetes and classify type 1 versus type 2 dia...
Abstract Background Validated algorithms to classify type 1 and 2 diabetes (T1D, T2D) are mostly li...
OBJECTIVES:UK Biobank is a UK-wide cohort of 502,655 people aged 40-69, recruited from National Heal...
Background: Effective population management of patients with diabetes requires timely recognition. C...
Purpose: Diabetes is a chronic disease that pays for a large proportion of the nation's healthcare e...
Aims: To develop a computer processable algorithm, capable of running automated searches of routine...
Background: Research into diabetes mellitus (DM) often requires a reproducible method for identifyin...
Aims: To determine the effectiveness of self-audit tools designed to detect miscoding, misclassific...
Big data sources represent an opportunity for diabetes research. One example is the French national ...
BACKGROUND: An algorithm that detects errors in diagnosis, classification or coding of diabetes in p...
Objective: To develop and validate a phenotyping algorithm for the identification of patients with t...
Incorrect classification, diagnosis and coding of the type of diabetes may have implications for pat...
The rate of diabetes is rapidly increasing worldwide. Early detection of diabetes can help prevent o...
The performance of automated algorithms for childhood diabetes case ascertainment and type classific...
Objectives: UK Biobank is a UK-wide cohort of 502,655 people aged 40–69, recruited from National Hea...
OBJECTIVEdTo create surveillance algorithms to detect diabetes and classify type 1 versus type 2 dia...
Abstract Background Validated algorithms to classify type 1 and 2 diabetes (T1D, T2D) are mostly li...
OBJECTIVES:UK Biobank is a UK-wide cohort of 502,655 people aged 40-69, recruited from National Heal...
Background: Effective population management of patients with diabetes requires timely recognition. C...
Purpose: Diabetes is a chronic disease that pays for a large proportion of the nation's healthcare e...