Background Data mining of electronic health records (EHRs) has a huge potential for improving clinical decision support and to help healthcare deliver precision medicine. Unfortunately, the rule-based and machine learning-based approaches used for natural language processing (NLP) in healthcare today all struggle with various shortcomings related to performance, efciency, or transparency. Methods In this paper, we address these issues by presenting a novel method for NLP that implements unsupervised learning of word embeddings, semi-supervised learning for simplifed and accelerated clinical vocabulary and concept building, and deterministic rules for fne-grained control of information extraction. The clinical language is automatically learn...
OBJECTIVE: Natural language processing (NLP) combined with machine learning (ML) techniques are incr...
Electronic health records (EHR) have significantly amplified the volume of information accessible in...
Purpose Increasingly, patient information is stored in electronic medical records, which could be re...
Undisclosed allergic reactions of patients are a major risk when undertaking surgeries in hospitals....
Abstract Background Natural language processing (NLP) based clinical decision support systems (CDSSs...
Electronic health records (EHR) contain large volumes of unstructured text, requiring the applicatio...
Novel approaches that complement and go beyond evidence-based medicine are required in the domain of...
Objectives A substantial portion of the data contained in Electronic Health Records (EHR) is unstruc...
Patients share key information about their health with medical practitioners during clinic consultat...
We report on the development and evaluation of a prototype tool aimed to assist laymen/patients in u...
dissertationRule-based systems play an important role in clinical information extraction. In some sp...
AbstractPurpose: This article describes a formative natural language processing (NLP) system that is...
With the increased adoption of electronic health record (EHR) systems, the exponential growth of hea...
The widespread use of “electronic health record systems (EHRs)” in health care provides a large amou...
ABSTRACT Background Free text documents in healthcare settings contain a wealth of information no...
OBJECTIVE: Natural language processing (NLP) combined with machine learning (ML) techniques are incr...
Electronic health records (EHR) have significantly amplified the volume of information accessible in...
Purpose Increasingly, patient information is stored in electronic medical records, which could be re...
Undisclosed allergic reactions of patients are a major risk when undertaking surgeries in hospitals....
Abstract Background Natural language processing (NLP) based clinical decision support systems (CDSSs...
Electronic health records (EHR) contain large volumes of unstructured text, requiring the applicatio...
Novel approaches that complement and go beyond evidence-based medicine are required in the domain of...
Objectives A substantial portion of the data contained in Electronic Health Records (EHR) is unstruc...
Patients share key information about their health with medical practitioners during clinic consultat...
We report on the development and evaluation of a prototype tool aimed to assist laymen/patients in u...
dissertationRule-based systems play an important role in clinical information extraction. In some sp...
AbstractPurpose: This article describes a formative natural language processing (NLP) system that is...
With the increased adoption of electronic health record (EHR) systems, the exponential growth of hea...
The widespread use of “electronic health record systems (EHRs)” in health care provides a large amou...
ABSTRACT Background Free text documents in healthcare settings contain a wealth of information no...
OBJECTIVE: Natural language processing (NLP) combined with machine learning (ML) techniques are incr...
Electronic health records (EHR) have significantly amplified the volume of information accessible in...
Purpose Increasingly, patient information is stored in electronic medical records, which could be re...