This paper addresses an information-extraction problem that aims to identify semantic relations among medical concepts (problems, tests, and treatments) in clinical text. The objectives of the paper are twofold. First, we extend an earlier one-page description (appearing as a part of [5]) of a top-ranked model in the 2010 I2B2 NLP Challenge to a necessary level of details, with the belief that feature design is the most crucial factor to the success of our system and hence deserves a more detailed discussion. We present a precise quantification of the contributions of a wide variety of knowledge sources. In addition, we show the end-to-end results obtained on the noisy output of a top-ranked concept detector, which could help construct a mo...
Text mining is still budding in the field of medicine. However, with rising volumes of scientific li...
This paper introduces inverse ontology cogency, a concept recognition process and distance function ...
Advances in neural network language models have demonstrated that these models can effectively learn...
AbstractThis paper addresses an information-extraction problem that aims to identify semantic relati...
In this paper, we investigate how semantic relations between concepts extracted from medical documen...
Clinical documents are vital resources for radiologists when they have to consult or refer while stu...
Extracting clinical concepts, such as problems, diagnosis, and treatment, from unstructured clinical...
AbstractIn this pilot study, we explore the feasibility and accuracy of using a query in a commercia...
We investigate how semantic relations between concepts extracted from medical documents, and linked ...
© 2020 Elsevier Inc. Relation extraction aims to discover relational facts about entity mentions fro...
Machine Learning (ML) is a natural outgrowth of the intersection of Computer Science and Statistics....
In healthcare services, information extraction is the key to understand any corpus-based knowledge. ...
This paper describes our participation on Task 7 of SemEval 2014, which fo-cused on the recognition ...
In healthcare services, information extraction is the key to understand any corpus-based knowledge. ...
The surging amount of biomedical literature & digital clinical records presents a growing need for t...
Text mining is still budding in the field of medicine. However, with rising volumes of scientific li...
This paper introduces inverse ontology cogency, a concept recognition process and distance function ...
Advances in neural network language models have demonstrated that these models can effectively learn...
AbstractThis paper addresses an information-extraction problem that aims to identify semantic relati...
In this paper, we investigate how semantic relations between concepts extracted from medical documen...
Clinical documents are vital resources for radiologists when they have to consult or refer while stu...
Extracting clinical concepts, such as problems, diagnosis, and treatment, from unstructured clinical...
AbstractIn this pilot study, we explore the feasibility and accuracy of using a query in a commercia...
We investigate how semantic relations between concepts extracted from medical documents, and linked ...
© 2020 Elsevier Inc. Relation extraction aims to discover relational facts about entity mentions fro...
Machine Learning (ML) is a natural outgrowth of the intersection of Computer Science and Statistics....
In healthcare services, information extraction is the key to understand any corpus-based knowledge. ...
This paper describes our participation on Task 7 of SemEval 2014, which fo-cused on the recognition ...
In healthcare services, information extraction is the key to understand any corpus-based knowledge. ...
The surging amount of biomedical literature & digital clinical records presents a growing need for t...
Text mining is still budding in the field of medicine. However, with rising volumes of scientific li...
This paper introduces inverse ontology cogency, a concept recognition process and distance function ...
Advances in neural network language models have demonstrated that these models can effectively learn...