Due to advances of the omics technologies, rich sources of clinical, biomedical, contextual, and environmental data about each patient have been available in medical and health sciences. However, an enormous amount of electronic health records is actually generated as textual data, such as descriptive terms/concepts. No doubt, efficiently harnessing these valuable textual data would allow doctors and nurses to identify the most appropriate treatments and the predicted outcomes for a given patient in real time. We used textual data to identify patient phenotypes from UK primary care records that were managed by Read codes (a clinical classification system). The fine granularity level of Read codes leads to a huge number of clinical terms to ...
(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...
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...
1) To use data-driven method to examine clinical codes (risk factors) of a medical condition in prim...
1) To use data-driven method to examine clinical codes (risk factors) of a medical condition in prim...
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...
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 con...
Objectives 1) To use data-driven method to examine clinical codes (risk factors) of a medical con...
(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...
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...
1) To use data-driven method to examine clinical codes (risk factors) of a medical condition in prim...
1) To use data-driven method to examine clinical codes (risk factors) of a medical condition in prim...
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...
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 con...
Objectives 1) To use data-driven method to examine clinical codes (risk factors) of a medical con...
(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...