BACKGROUND: An algorithm that detects errors in diagnosis, classification or coding of diabetes in primary care computerised medial record (CMR) systems is currently available. However, this was developed on CMR systems that are episode orientated medical records (EOMR); and do not force the user to always code a problem or link data to an existing one. More strictly problem orientated medical record (POMR) systems mandate recording a problem and linking consultation data to them. OBJECTIVE: To compare the rates of detection of diagnostic accuracy using an algorithm developed in EOMR with a new POMR specific algorithm. METHOD: We used data from The Health Improvement Network (THIN) database (N = 2,466,364) to identify a population of 100,51...
Abstract Background Validated algorithms to classify type 1 and 2 diabetes (T1D, T2D) are mostly li...
BACKGROUND: The prevalence of diabetes is increasing with growing levels of obesity and an aging pop...
OBJECTIVEdTo create surveillance algorithms to detect diabetes and classify type 1 versus type 2 dia...
BACKGROUND: An algorithm that detects errors in diagnosis, classification or coding of diabetes in p...
<p><strong>An algorithm that detects errors in diagnosis, classification or coding of diabetes in pr...
An algorithm to improve diagnostic accuracy in diabetes in computerised problem orientated medical r...
Background: Research into diabetes mellitus (DM) often requires a reproducible method for identifyin...
<strong>Background</strong> Diabetes mellitus (DM) is a serious, chronic condition affecting 2.3 mil...
Aims: To develop a computer processable algorithm, capable of running automated searches of routine...
Background: Electronic diabetes registers promote structured care and enable identification of undia...
BACKGROUND: Electronic diabetes registers promote structured care and enable identification of undia...
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...
Background: Effective population management of patients with diabetes requires timely recognition. C...
Abstract Background Electronic medical records contai...
Abstract Background Validated algorithms to classify type 1 and 2 diabetes (T1D, T2D) are mostly li...
BACKGROUND: The prevalence of diabetes is increasing with growing levels of obesity and an aging pop...
OBJECTIVEdTo create surveillance algorithms to detect diabetes and classify type 1 versus type 2 dia...
BACKGROUND: An algorithm that detects errors in diagnosis, classification or coding of diabetes in p...
<p><strong>An algorithm that detects errors in diagnosis, classification or coding of diabetes in pr...
An algorithm to improve diagnostic accuracy in diabetes in computerised problem orientated medical r...
Background: Research into diabetes mellitus (DM) often requires a reproducible method for identifyin...
<strong>Background</strong> Diabetes mellitus (DM) is a serious, chronic condition affecting 2.3 mil...
Aims: To develop a computer processable algorithm, capable of running automated searches of routine...
Background: Electronic diabetes registers promote structured care and enable identification of undia...
BACKGROUND: Electronic diabetes registers promote structured care and enable identification of undia...
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...
Background: Effective population management of patients with diabetes requires timely recognition. C...
Abstract Background Electronic medical records contai...
Abstract Background Validated algorithms to classify type 1 and 2 diabetes (T1D, T2D) are mostly li...
BACKGROUND: The prevalence of diabetes is increasing with growing levels of obesity and an aging pop...
OBJECTIVEdTo create surveillance algorithms to detect diabetes and classify type 1 versus type 2 dia...