AbstractBackgroundIdentifying key variables such as disorders within the clinical narratives in electronic health records has wide-ranging applications within clinical practice and biomedical research. Previous research has demonstrated reduced performance of disorder named entity recognition (NER) and normalization (or grounding) in clinical narratives than in biomedical publications. In this work, we aim to identify the cause for this performance difference and introduce general solutions.MethodsWe use closure properties to compare the richness of the vocabulary in clinical narrative text to biomedical publications. We approach both disorder NER and normalization using machine learning methodologies. Our NER methodology is based on linear...
Claims billing and coding is non-trivial for health care providers. Accurate coding can help medical...
As vast amounts of unstructured data are becoming available digitally, computer-based methods to ext...
Background: Named entity recognition (NER) systems are commonly built using supervised methods that ...
Electronic Health Records (EHR) narratives are a rich source of information, embedding high-resoluti...
Abstract. We describe an application of DNorm – a mathematically principled and high performing meth...
BACKGROUND: The bidirectional encoder representations from transformers (BERT) model has achieved gr...
Objective: The ShARe/CLEF eHealth 2013 Evaluation Lab Task 1 was organized to evaluate the state of ...
To extract important concepts (named entities) from clinical notes, most widely used NLP task is nam...
Medical literature, such as medical health records are increasingly digitised.As with any large grow...
Normalization of disease mentions has an important role in biomedical natural language processing (B...
Background and objective: In order for computers to extract useful information from unstructured tex...
Background: Clinical terms mentioned in clinical text are often not in their standardized forms as l...
Text normalization into medical dictionaries is useful to support clinical task. A typical setting i...
While machine learning methods for named entity recognition (mention-level detection) have become co...
Background The volume of biomedical literature and clinical data is growing at an exponential rate....
Claims billing and coding is non-trivial for health care providers. Accurate coding can help medical...
As vast amounts of unstructured data are becoming available digitally, computer-based methods to ext...
Background: Named entity recognition (NER) systems are commonly built using supervised methods that ...
Electronic Health Records (EHR) narratives are a rich source of information, embedding high-resoluti...
Abstract. We describe an application of DNorm – a mathematically principled and high performing meth...
BACKGROUND: The bidirectional encoder representations from transformers (BERT) model has achieved gr...
Objective: The ShARe/CLEF eHealth 2013 Evaluation Lab Task 1 was organized to evaluate the state of ...
To extract important concepts (named entities) from clinical notes, most widely used NLP task is nam...
Medical literature, such as medical health records are increasingly digitised.As with any large grow...
Normalization of disease mentions has an important role in biomedical natural language processing (B...
Background and objective: In order for computers to extract useful information from unstructured tex...
Background: Clinical terms mentioned in clinical text are often not in their standardized forms as l...
Text normalization into medical dictionaries is useful to support clinical task. A typical setting i...
While machine learning methods for named entity recognition (mention-level detection) have become co...
Background The volume of biomedical literature and clinical data is growing at an exponential rate....
Claims billing and coding is non-trivial for health care providers. Accurate coding can help medical...
As vast amounts of unstructured data are becoming available digitally, computer-based methods to ext...
Background: Named entity recognition (NER) systems are commonly built using supervised methods that ...