Objective This paper presents an automatic active learning-based system for the extraction of medical concepts from clinical free-text reports. Specifically, (1) the contribution of active learning in reducing the annotation effort, and (2) the robustness of incremental active learning framework across different selection criteria and datasets is determined. Materials and methods The comparative performance of an active learning framework and a fully supervised approach were investigated to study how active learning reduces the annotation effort while achieving the same effectiveness as a supervised approach. Conditional Random Fields as the supervised method, and least confidence and information density as two selection criteria for active...
Abstract Background Active learning (AL) has shown th...
Extracting clinical concepts, such as problems, diagnosis, and treatment, from unstructured clinical...
Electronic Patient Records have opened up the possibility of re-using the data collected for clinica...
Objective This paper presents an automatic active learning-based system for the extraction of medica...
Objective This paper presents an automatic active learning-based system for the extraction of medica...
This thesis is a step towards automating information extraction from clinical free-text. It establis...
Objective To investigate: (1) the annotation time savings by various active learning query strategie...
This study investigates the use of unsupervised word embeddings and sequence features for sample rep...
AbstractSupervised machine learning methods for clinical natural language processing (NLP) research ...
This article demonstrates the benefits of using sequence representations based on word embeddings to...
This article demonstrates the benefits of using sequence representations based on word embeddings to...
In a noisy corpus such as in clinical data, the text usually contains a large number of misspell wor...
This paper presents a new active learning query strategy for information extraction, called Domain K...
This paper presents a new active learning query strategy for information extraction, called Domain K...
AbstractObjectivesNamed entity recognition (NER), a sequential labeling task, is one of the fundamen...
Abstract Background Active learning (AL) has shown th...
Extracting clinical concepts, such as problems, diagnosis, and treatment, from unstructured clinical...
Electronic Patient Records have opened up the possibility of re-using the data collected for clinica...
Objective This paper presents an automatic active learning-based system for the extraction of medica...
Objective This paper presents an automatic active learning-based system for the extraction of medica...
This thesis is a step towards automating information extraction from clinical free-text. It establis...
Objective To investigate: (1) the annotation time savings by various active learning query strategie...
This study investigates the use of unsupervised word embeddings and sequence features for sample rep...
AbstractSupervised machine learning methods for clinical natural language processing (NLP) research ...
This article demonstrates the benefits of using sequence representations based on word embeddings to...
This article demonstrates the benefits of using sequence representations based on word embeddings to...
In a noisy corpus such as in clinical data, the text usually contains a large number of misspell wor...
This paper presents a new active learning query strategy for information extraction, called Domain K...
This paper presents a new active learning query strategy for information extraction, called Domain K...
AbstractObjectivesNamed entity recognition (NER), a sequential labeling task, is one of the fundamen...
Abstract Background Active learning (AL) has shown th...
Extracting clinical concepts, such as problems, diagnosis, and treatment, from unstructured clinical...
Electronic Patient Records have opened up the possibility of re-using the data collected for clinica...