International audienceStructuring raw medical documents with ontology mapping is now the next step for medical intelligence. Deep learning models take as input mathematically embedded information, such as encoded texts. To do so, word embedding methods can represent every word from a text as a fixed-length vector. A formal evaluation of three word embedding methods has been performed on raw medical documents. The data corresponds to more than 12M diverse documents produced in the Rouen hospital (drug prescriptions, discharge and surgery summaries, inter-services letters, etc.). Automatic and manual validation demonstrates that Word2Vec based on the skip-gram architecture had the best rate on three out of four accuracy tests. This model will...
Word embeddings are a useful tool for extracting knowledge from the free-form text contained in elec...
Word sense disambiguation is an NLP task embedded in different applications. We propose to evaluate ...
Abstract Background Despite a wide adoption of English in science, a significant amount of biomedica...
International audienceStructuring raw medical documents with ontology mapping is now the next step f...
International audienceWord embedding technologies, a set of language modeling and feature learning t...
We explore the impact of data source on word representations for different NLP tasks in the clinical...
Word embeddings are representations of words in a dense vector space. Although they are not recent p...
Radiology reports are a rich resource for advancing deep learning applications in medicine by levera...
International audienceBackground Information related to patient medication is crucial for health car...
Medical language processing has focused until recently on a few types of textual documents. However,...
In this paper we present two tools for facing task 2 in CLEF eHealth 2016. The first one is a semant...
International audienceDetection of difficult for understanding words is a crucial task for ensuring ...
In recent years, the utilization of natural language processing (NLP) and Machine Learning (ML) tech...
Background: The possible benefits of using semantic language models in the early diagnosis of major ...
A vast amount of information in the biomedical domain is available as natural language free text. An...
Word embeddings are a useful tool for extracting knowledge from the free-form text contained in elec...
Word sense disambiguation is an NLP task embedded in different applications. We propose to evaluate ...
Abstract Background Despite a wide adoption of English in science, a significant amount of biomedica...
International audienceStructuring raw medical documents with ontology mapping is now the next step f...
International audienceWord embedding technologies, a set of language modeling and feature learning t...
We explore the impact of data source on word representations for different NLP tasks in the clinical...
Word embeddings are representations of words in a dense vector space. Although they are not recent p...
Radiology reports are a rich resource for advancing deep learning applications in medicine by levera...
International audienceBackground Information related to patient medication is crucial for health car...
Medical language processing has focused until recently on a few types of textual documents. However,...
In this paper we present two tools for facing task 2 in CLEF eHealth 2016. The first one is a semant...
International audienceDetection of difficult for understanding words is a crucial task for ensuring ...
In recent years, the utilization of natural language processing (NLP) and Machine Learning (ML) tech...
Background: The possible benefits of using semantic language models in the early diagnosis of major ...
A vast amount of information in the biomedical domain is available as natural language free text. An...
Word embeddings are a useful tool for extracting knowledge from the free-form text contained in elec...
Word sense disambiguation is an NLP task embedded in different applications. We propose to evaluate ...
Abstract Background Despite a wide adoption of English in science, a significant amount of biomedica...