The paper presents the full-size Russian corpus of Internet users’ reviews on medicines with complex named entity recognition (NER) labeling of pharmaceutically relevant entities. We evaluate the accuracy levels reached on this corpus by a set of advanced deep learning neural networks for extracting mentions of these entities. The corpus markup includes mentions of the following entities: medication (33,005 mentions), adverse drug reaction (1778), disease (17,403), and note (4490). Two of them—medication and disease—include a set of attributes. A part of the corpus has a coreference annotation with 1560 coreference chains in 300 documents. A multi-label model based on a language model and a set of features has been developed for recognizing...
International audienceOBJECTIVE:We aimed to enhance the performance of a supervised model for clinic...
© 2020, Springer Nature Switzerland AG. This paper describes how to build a recognizer to identify n...
© 2018 Rossiiskii Gosudarstvennyi Gumanitarnyi Universitet.All Rights Reserved. Nowadays a new yet p...
Motivation: Drugs and diseases play a central role in many areas of biomedical research and healthca...
An extraction of significant information from Internet sources is an important task of pharmacovigil...
Nowadays, the analysis of digital media aimed at prediction of the society’s reaction to particular ...
Current research efforts in Named Entity Recognition deal mostly with the English language. Even tho...
The article proposes a solution to the problem of automatic recognition of Russian noun and adjectiv...
© 2017 IEEE. The automatic extraction of drug side effects from social media has gained popularity i...
The medical language is the basis of the electronic medical record (EHR), and up to 70 percent of th...
Corpora with specific entities and relationships annotated are essential to train and evaluate text-...
AbstractCorpora with specific entities and relationships annotated are essential to train and evalua...
Automatically detecting mentions of pharmaceutical drugs and chemical substances is key for the subs...
Disorder named entity recognition (DNER) is a fundamental task of biomedical natural language proces...
The paper describes building a binary classifier with Convolutional Neural Network (CNN) using two d...
International audienceOBJECTIVE:We aimed to enhance the performance of a supervised model for clinic...
© 2020, Springer Nature Switzerland AG. This paper describes how to build a recognizer to identify n...
© 2018 Rossiiskii Gosudarstvennyi Gumanitarnyi Universitet.All Rights Reserved. Nowadays a new yet p...
Motivation: Drugs and diseases play a central role in many areas of biomedical research and healthca...
An extraction of significant information from Internet sources is an important task of pharmacovigil...
Nowadays, the analysis of digital media aimed at prediction of the society’s reaction to particular ...
Current research efforts in Named Entity Recognition deal mostly with the English language. Even tho...
The article proposes a solution to the problem of automatic recognition of Russian noun and adjectiv...
© 2017 IEEE. The automatic extraction of drug side effects from social media has gained popularity i...
The medical language is the basis of the electronic medical record (EHR), and up to 70 percent of th...
Corpora with specific entities and relationships annotated are essential to train and evaluate text-...
AbstractCorpora with specific entities and relationships annotated are essential to train and evalua...
Automatically detecting mentions of pharmaceutical drugs and chemical substances is key for the subs...
Disorder named entity recognition (DNER) is a fundamental task of biomedical natural language proces...
The paper describes building a binary classifier with Convolutional Neural Network (CNN) using two d...
International audienceOBJECTIVE:We aimed to enhance the performance of a supervised model for clinic...
© 2020, Springer Nature Switzerland AG. This paper describes how to build a recognizer to identify n...
© 2018 Rossiiskii Gosudarstvennyi Gumanitarnyi Universitet.All Rights Reserved. Nowadays a new yet p...