Translating cancer genomics into precision medicine with artificial intelligence: applications, challenges and future perspectives
J Xu, P Yang, S Xue, B Sharma, M Sanchez-Martin… - Human genetics, 2019 - Springer
In the field of cancer genomics, the broad availability of genetic information offered by next-
generation sequencing technologies and rapid growth in biomedical publication has led to …
generation sequencing technologies and rapid growth in biomedical publication has led to …
An extensive review of tools for manual annotation of documents
Motivation Annotation tools are applied to build training and test corpora, which are
essential for the development and evaluation of new natural language processing …
essential for the development and evaluation of new natural language processing …
Text mining in biomedical domain with emphasis on document clustering
V Renganathan - Healthcare informatics research, 2017 - synapse.koreamed.org
Objectives With the exponential increase in the number of articles published every year in
the biomedical domain, there is a need to build automated systems to extract unknown …
the biomedical domain, there is a need to build automated systems to extract unknown …
MER: a shell script and annotation server for minimal named entity recognition and linking
Named-entity recognition aims at identifying the fragments of text that mention entities of
interest, that afterwards could be linked to a knowledge base where those entities are …
interest, that afterwards could be linked to a knowledge base where those entities are …
Learning for biomedical information extraction: Methodological review of recent advances
Biomedical information extraction (BioIE) is important to many applications, including clinical
decision support, integrative biology, and pharmacovigilance, and therefore it has been an …
decision support, integrative biology, and pharmacovigilance, and therefore it has been an …
Entity recognition in the biomedical domain using a hybrid approach
Background This article describes a high-recall, high-precision approach for the extraction of
biomedical entities from scientific articles. Method The approach uses a two-stage pipeline …
biomedical entities from scientific articles. Method The approach uses a two-stage pipeline …
ezTag: tagging biomedical concepts via interactive learning
Recently, advanced text-mining techniques have been shown to speed up manual data
curation by providing human annotators with automated pre-annotations generated by rules …
curation by providing human annotators with automated pre-annotations generated by rules …
OGER++: hybrid multi-type entity recognition
Background We present a text-mining tool for recognizing biomedical entities in scientific
literature. OGER++ is a hybrid system for named entity recognition and concept recognition …
literature. OGER++ is a hybrid system for named entity recognition and concept recognition …
Open information extraction with meta-pattern discovery in biomedical literature
Biomedical open information extraction (BioOpenIE) is a novel paradigm to automatically
extract structured information from unstructured text with no or little supervision. It does not …
extract structured information from unstructured text with no or little supervision. It does not …
The treasury chest of text mining: piling available resources for powerful biomedical text mining
Text mining (TM) is a semi-automatized, multi-step process, able to turn unstructured into
structured data. TM relevance has increased upon machine learning (ML) and deep …
structured data. TM relevance has increased upon machine learning (ML) and deep …