(1) Background: We aimed to develop a transparent machine-learning (ML) framework to automatically identify patients with a condition from electronic health records (EHRs) via a parsimonious set of features. (2) Methods: We linked multiple sources of EHRs, including 917,496,869 primary care records and 40,656,805 secondary care records and 694,954 records from specialist surgeries between 2002 and 2012, to generate a unique dataset. Then, we treated patient identification as a problem of text classification and proposed a transparent disease-phenotyping framework. This framework comprises a generation of patient representation, feature selection, and optimal phenotyping algorithm development to tackle the imbalanced nature of the data. This...
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 condit...
(1) Background: We aimed to develop a transparent machine-learning (ML) framework to automatically i...
(1) Background: We aimed to develop a transparent machine-learning (ML) framework to automatically i...
(1) Background: We aimed to develop a transparent machine-learning (ML) framework to automatically i...
(1) Background: We aimed to develop a transparent machine-learning (ML) framework to automatically i...
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...
Objectives1) To use data-driven method to examine clinical codes (risk factors) of a medical conditi...
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 condi...
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 c...
Objectives 1) To use data-driven method to examine clinical codes (risk factors) of a medical condit...
(1) Background: We aimed to develop a transparent machine-learning (ML) framework to automatically i...
(1) Background: We aimed to develop a transparent machine-learning (ML) framework to automatically i...
(1) Background: We aimed to develop a transparent machine-learning (ML) framework to automatically i...
(1) Background: We aimed to develop a transparent machine-learning (ML) framework to automatically i...
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...
Objectives1) To use data-driven method to examine clinical codes (risk factors) of a medical conditi...
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 condi...
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 c...
Objectives 1) To use data-driven method to examine clinical codes (risk factors) of a medical condit...