Objectives: 1) To use data-driven method to examine clinical codes (risk factors) of a medical condition in primary care electronic health records (EHRs) that can accurately predict a diagnosis of the condition in secondary care EHRs. 2) To develop and validate a disease phenotyping algorithm for rheumatoid arthritis using primary care EHRs. Methods: This study linked routine primary and secondary care EHRs in Wales, UK. A machine learning based scheme was used to identify patients with rheumatoid arthritis from primary care EHRs via the following steps: i) selection of variables by comparing relative frequencies of Read codes in the primary care dataset associated with disease case compared to non-disease control (disease/non-disease based...
Research using electronic health records (EHRs) relies heavily on coded clinical data. Due to variat...
Background Research using electronic health records (EHRs) relies heavily on coded clinical data...
ABSTRACT Objectives 1) To develop a fully data-driven framework for automatically identifying pati...
Objectives: 1) To use data-driven method to examine clinical codes (risk factors) of a medical condi...
OBJECTIVES: 1) To use data-driven method to examine clinical codes (risk factors) of a medical condi...
Objectives: 1) To use data-driven method to examine clinical codes (risk factors) of a medical condi...
Objectives: 1) To use data-driven method to examine clinical codes (risk factors) of a medical c...
Objectives 1) To use data-driven method to examine clinical codes (risk factors) of a medical con...
Objectives: 1) To use data-driven method to examine clinical codes (risk factors) of a medical condi...
OBJECTIVES:1) To use data-driven method to examine clinical codes (risk factors) of a medical condit...
OBJECTIVE: Rheumatoid arthritis (RA) is a multisystem, inflammatory disorder associated with increas...
(1) Background: We aimed to develop a transparent machine-learning (ML) framework to automatically i...
Objective: Rheumatoid arthritis (RA) is a multisystem, inflammatory disorder associated with incr...
(1) Background: We aimed to develop a transparent machine-learning (ML) framework to automatically i...
Research using electronic health records (EHRs) relies heavily on coded clinical data. Due to variat...
Background Research using electronic health records (EHRs) relies heavily on coded clinical data...
ABSTRACT Objectives 1) To develop a fully data-driven framework for automatically identifying pati...
Objectives: 1) To use data-driven method to examine clinical codes (risk factors) of a medical condi...
OBJECTIVES: 1) To use data-driven method to examine clinical codes (risk factors) of a medical condi...
Objectives: 1) To use data-driven method to examine clinical codes (risk factors) of a medical condi...
Objectives: 1) To use data-driven method to examine clinical codes (risk factors) of a medical c...
Objectives 1) To use data-driven method to examine clinical codes (risk factors) of a medical con...
Objectives: 1) To use data-driven method to examine clinical codes (risk factors) of a medical condi...
OBJECTIVES:1) To use data-driven method to examine clinical codes (risk factors) of a medical condit...
OBJECTIVE: Rheumatoid arthritis (RA) is a multisystem, inflammatory disorder associated with increas...
(1) Background: We aimed to develop a transparent machine-learning (ML) framework to automatically i...
Objective: Rheumatoid arthritis (RA) is a multisystem, inflammatory disorder associated with incr...
(1) Background: We aimed to develop a transparent machine-learning (ML) framework to automatically i...
Research using electronic health records (EHRs) relies heavily on coded clinical data. Due to variat...
Background Research using electronic health records (EHRs) relies heavily on coded clinical data...
ABSTRACT Objectives 1) To develop a fully data-driven framework for automatically identifying pati...