© Springer Nature Switzerland AG 2018. Text classification is a challenging task for allocating each document to the correct predefined class. Most of the time, there are irrelevant features which make noise in the learning step and reduce the precision of prediction. Hence, more efficient methods are needed to select or extract meaningful features to avoid noise and overfitting. In this work, an ontology-guided method utilizing the taxonomical structure of the Unified Medical Language System (UMLS) is proposed. This method extracts concepts of appeared phrases in the documents which relate to diseases or symptoms as features. The efficiency of this method is evaluated on the 2010 Informatics for Integrating Biology and the Bedside (i2b2) d...
An increasing and overwhelming amount of biomedical information is available in the research literat...
Abstract. Recent work has shown improvements in text clustering and classification tasks by integrat...
Abstract. The overwhelmed amount of medical information available in the re-search literature, makes...
Document classification (DC) is one of the broadly investigated natural language processing tasks. M...
Extracting meaningful features from unstructured text is one of the most challenging tasks in medica...
Document classification (DC) is the task of assigning pre-defined labels to unseen documents by util...
In this survey paper, we discuss biomedical ontologies and major text mining techniques applied to b...
Vast amounts of information are present in unstructured format in physicians' notes. Text processing...
The application of text classification systems on biomedical literature aims to select articles rele...
NLM's Unified Medical Language System (UMLS) is a very large ontology of biomedical and health ...
Abstract Background Biomedical ontologies are critical for integration of data from diverse sources ...
Classifying biomedical literature is a difficult and challenging task, especially when a large numbe...
Abstract. Recent work has shown improvements in text clustering and classifi-cation tasks by integra...
Healthcare domain is characterized by a huge amount of data, contained in medical records, reports, ...
Biomedical natural language processing (NLP) has an important role in extracting consequential infor...
An increasing and overwhelming amount of biomedical information is available in the research literat...
Abstract. Recent work has shown improvements in text clustering and classification tasks by integrat...
Abstract. The overwhelmed amount of medical information available in the re-search literature, makes...
Document classification (DC) is one of the broadly investigated natural language processing tasks. M...
Extracting meaningful features from unstructured text is one of the most challenging tasks in medica...
Document classification (DC) is the task of assigning pre-defined labels to unseen documents by util...
In this survey paper, we discuss biomedical ontologies and major text mining techniques applied to b...
Vast amounts of information are present in unstructured format in physicians' notes. Text processing...
The application of text classification systems on biomedical literature aims to select articles rele...
NLM's Unified Medical Language System (UMLS) is a very large ontology of biomedical and health ...
Abstract Background Biomedical ontologies are critical for integration of data from diverse sources ...
Classifying biomedical literature is a difficult and challenging task, especially when a large numbe...
Abstract. Recent work has shown improvements in text clustering and classifi-cation tasks by integra...
Healthcare domain is characterized by a huge amount of data, contained in medical records, reports, ...
Biomedical natural language processing (NLP) has an important role in extracting consequential infor...
An increasing and overwhelming amount of biomedical information is available in the research literat...
Abstract. Recent work has shown improvements in text clustering and classification tasks by integrat...
Abstract. The overwhelmed amount of medical information available in the re-search literature, makes...