Exa-scale volumes of medical data have been produced for decades. In most cases, the diagnosis is reported in free text, encoding medical knowledge that is still largely unexploited. In order to allow decoding medical knowledge included in reports, we propose an unsupervised knowledge extraction system combining a rule-based expert system with pre-trained Machine Learning (ML) models, namely the Semantic Knowledge Extractor Tool (SKET). Combining rule-based techniques and pre-trained ML models provides high accuracy results for knowledge extraction. This work demonstrates the viability of unsupervised Natural Language Processing (NLP) techniques to extract critical information from cancer reports, opening opportunities such as data mining f...
Background Manually extracted data points from health records are collated on an in...
The Machine Learning (ML) field has got much attention among the researchers in almost many fields o...
Natural Language Processing (NLP) Algorithms are the key factors for automatic information extractio...
Exa-scale volumes of medical data have been produced for decades. In most cases, the diagnosis is re...
This repository contains the source code for the Semantic Knowledge Extractor Tool (SKET). SKET is a...
AbstractWe introduce an extensible and modifiable knowledge representation model to represent cancer...
Background: Structural reporting enables semantic understanding and prompt retrieval of clinical fin...
Health care and clinical practice generate large amounts of text detailing symptoms, test results, d...
This thesis addresses the extraction of medical knowledge from clinical text using deep learning tec...
Electronic Patient Records have opened up the possibility of re-using the data collected for clinica...
Background: Natural language processing (NLP) is a powerful tool supporting the generation of Real-W...
Abstract: The application of knowledge extraction methodologies in support of medical informatics p...
Objective: The opportunity to integrate clinical decision support systems into clinical practice is ...
© 2016, Springer Science+Business Media New York. Purpose: Extracting information from electronic me...
IntroductionRoutinely collected healthcare data are a powerful research resource, but often lack det...
Background Manually extracted data points from health records are collated on an in...
The Machine Learning (ML) field has got much attention among the researchers in almost many fields o...
Natural Language Processing (NLP) Algorithms are the key factors for automatic information extractio...
Exa-scale volumes of medical data have been produced for decades. In most cases, the diagnosis is re...
This repository contains the source code for the Semantic Knowledge Extractor Tool (SKET). SKET is a...
AbstractWe introduce an extensible and modifiable knowledge representation model to represent cancer...
Background: Structural reporting enables semantic understanding and prompt retrieval of clinical fin...
Health care and clinical practice generate large amounts of text detailing symptoms, test results, d...
This thesis addresses the extraction of medical knowledge from clinical text using deep learning tec...
Electronic Patient Records have opened up the possibility of re-using the data collected for clinica...
Background: Natural language processing (NLP) is a powerful tool supporting the generation of Real-W...
Abstract: The application of knowledge extraction methodologies in support of medical informatics p...
Objective: The opportunity to integrate clinical decision support systems into clinical practice is ...
© 2016, Springer Science+Business Media New York. Purpose: Extracting information from electronic me...
IntroductionRoutinely collected healthcare data are a powerful research resource, but often lack det...
Background Manually extracted data points from health records are collated on an in...
The Machine Learning (ML) field has got much attention among the researchers in almost many fields o...
Natural Language Processing (NLP) Algorithms are the key factors for automatic information extractio...