<p>Unstructured PDF documents remain the main vehicle for dissemination of scientific findings. Those interested in gathering and assimilating data must therefore manually peruse published articles and extract from these the elements of interest.</p> <p>Evidence-based medicine provides a compelling illustration of this: many person-hours are spent each year extracting summary information from articles that describe clinical trials. Machine learning provides a potential means of mitigating this burden by automating extraction. But, for automated approaches to be useful to end-users, we need tools that allow domain experts to interact with, and benefit from, model predictions. To this end, we present an web-based tool called Spá that accepts ...
Background Clinical trials are one of the most important sources of evidence for guiding evidence-ba...
Massive increases in electronically available text have spurred a variety of natural language proces...
ter Horst HR. Information extraction from text for deep domain knowledge graph population. Extractin...
In this poster we present a recent extension of the OntoGene text mining utilities, which enables th...
Comunicació presentada a la Language Resources and Evaluation Conference (LREC) 2018, celebrada els ...
In many cases, information from abstracts of biomedical publications is not sufficient for annotatio...
We present a machine-learning-guided process that can efficiently extract factor tables from unstruc...
The availability of improved natural language processing (NLP) algorithms and models enable research...
Background: Evidence-based medicine practice requires practitioners to obtain the best available med...
In the era of digitization, the vast volume of scientific publications has become readily accessible...
Exa-scale volumes of medical data have been produced for decades. In most cases, the diagnosis is re...
Published scientific literature contains millions of figures, including information about the result...
Across various domains, such as health and social care, law, news, and social media, there are incre...
A central concern in Evidence Based Medicine (EBM) is how to convey research results effectively to ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Background Clinical trials are one of the most important sources of evidence for guiding evidence-ba...
Massive increases in electronically available text have spurred a variety of natural language proces...
ter Horst HR. Information extraction from text for deep domain knowledge graph population. Extractin...
In this poster we present a recent extension of the OntoGene text mining utilities, which enables th...
Comunicació presentada a la Language Resources and Evaluation Conference (LREC) 2018, celebrada els ...
In many cases, information from abstracts of biomedical publications is not sufficient for annotatio...
We present a machine-learning-guided process that can efficiently extract factor tables from unstruc...
The availability of improved natural language processing (NLP) algorithms and models enable research...
Background: Evidence-based medicine practice requires practitioners to obtain the best available med...
In the era of digitization, the vast volume of scientific publications has become readily accessible...
Exa-scale volumes of medical data have been produced for decades. In most cases, the diagnosis is re...
Published scientific literature contains millions of figures, including information about the result...
Across various domains, such as health and social care, law, news, and social media, there are incre...
A central concern in Evidence Based Medicine (EBM) is how to convey research results effectively to ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Background Clinical trials are one of the most important sources of evidence for guiding evidence-ba...
Massive increases in electronically available text have spurred a variety of natural language proces...
ter Horst HR. Information extraction from text for deep domain knowledge graph population. Extractin...