Clinical information is dominated by natural language representation of data and knowledge. To bring quantitative methods to bear in the empiric analysis of clinical episodes, they must be classified into reasonably homogenous categories that sustain inference and generalization. A tangible, if trivial, example of a classification requirement is the retrieval of patient cases relevant to the testing of a clinical hypothesis, so that they can be further scrutinized. Reliance on text word retrieval alone, drawn from natural language summaries, is fraught with contextual ambiguity and defeated by an expressively rich sub-language
BACKGROUND: Ontologies play a major role in life sciences, enabling a number of applications, from n...
For this dissertation two software applications were developed and three experiments were conducted ...
Background The medical subdomain of a clinical note, such as cardiology or neurolog...
Medical literature, such as medical health records are increasingly digitised.As with any large grow...
In healthcare, information extraction is important in order to identify conceptual knowledge as a ca...
ABSTRACTIn this paper, medical objects are used as featuresto classify clinical records. Medical obj...
Cognitive studies reveal that less-than-expert clinicians are less able to recognize meaningful patt...
The classification of biomedical literature is engaged in a number of critical issues that physician...
Motivation: The sheer volume of textually described biomedical knowledge exerts the need for natural...
AbstractFor the purpose of post-marketing drug safety surveillance, which has traditionally relied o...
Medical Language Processing (MLP), especially in specific domains, requires fine-grained semantic le...
Biomedical natural language processing (NLP) has an important role in extracting consequential infor...
AbstractObjective: This paper introduces latent semantic analysis (LSA), a machine learning method f...
Background Ontologies play a major role in life sciences, enabling a number of applications, from ne...
Background and objective: In order for computers to extract useful information from unstructured tex...
BACKGROUND: Ontologies play a major role in life sciences, enabling a number of applications, from n...
For this dissertation two software applications were developed and three experiments were conducted ...
Background The medical subdomain of a clinical note, such as cardiology or neurolog...
Medical literature, such as medical health records are increasingly digitised.As with any large grow...
In healthcare, information extraction is important in order to identify conceptual knowledge as a ca...
ABSTRACTIn this paper, medical objects are used as featuresto classify clinical records. Medical obj...
Cognitive studies reveal that less-than-expert clinicians are less able to recognize meaningful patt...
The classification of biomedical literature is engaged in a number of critical issues that physician...
Motivation: The sheer volume of textually described biomedical knowledge exerts the need for natural...
AbstractFor the purpose of post-marketing drug safety surveillance, which has traditionally relied o...
Medical Language Processing (MLP), especially in specific domains, requires fine-grained semantic le...
Biomedical natural language processing (NLP) has an important role in extracting consequential infor...
AbstractObjective: This paper introduces latent semantic analysis (LSA), a machine learning method f...
Background Ontologies play a major role in life sciences, enabling a number of applications, from ne...
Background and objective: In order for computers to extract useful information from unstructured tex...
BACKGROUND: Ontologies play a major role in life sciences, enabling a number of applications, from n...
For this dissertation two software applications were developed and three experiments were conducted ...
Background The medical subdomain of a clinical note, such as cardiology or neurolog...