AbstractWe introduce an extensible and modifiable knowledge representation model to represent cancer disease characteristics in a comparable and consistent fashion. We describe a system, MedTAS/P which automatically instantiates the knowledge representation model from free-text pathology reports. MedTAS/P is based on an open-source framework and its components use natural language processing principles, machine learning and rules to discover and populate elements of the model. To validate the model and measure the accuracy of MedTAS/P, we developed a gold-standard corpus of manually annotated colon cancer pathology reports. MedTAS/P achieves F1-scores of 0.97–1.0 for instantiating classes in the knowledge representation model such as histol...
Abstract Background Pathology reports are written in free-text form, which precludes efficient data ...
International audienceObjective: Our study aimed to construct and evaluate functions called "classif...
Objectives: This paper describes a system to automatically classify the stage of a lung cancer patie...
AbstractWe introduce an extensible and modifiable knowledge representation model to represent cancer...
Pathology reports primarily consist of unstructured free text and thus the clinical information cont...
Exa-scale volumes of medical data have been produced for decades. In most cases, the diagnosis is re...
The research described in the article refers to the study of data from the domain of medicine. The d...
Objective: To develop a system for the automatic classification of pathology reports for Cancer Regi...
IntroductionRoutinely collected healthcare data are a powerful research resource, but often lack det...
© 2016, Springer Science+Business Media New York. Purpose: Extracting information from electronic me...
Pathology reports represent a primary source of information for cancer registries. Hospitals routine...
Pathology reports provide valuable information for cancer registries to understand, plan and impleme...
Objective: To extract pertinent information from narrative pathology reports and automatically popul...
Abstract Background The rapid proliferation of biomedical text makes it increasingly difficult for r...
ObjectiveWe develop natural language processing (NLP) methods capable of accurately classifying tumo...
Abstract Background Pathology reports are written in free-text form, which precludes efficient data ...
International audienceObjective: Our study aimed to construct and evaluate functions called "classif...
Objectives: This paper describes a system to automatically classify the stage of a lung cancer patie...
AbstractWe introduce an extensible and modifiable knowledge representation model to represent cancer...
Pathology reports primarily consist of unstructured free text and thus the clinical information cont...
Exa-scale volumes of medical data have been produced for decades. In most cases, the diagnosis is re...
The research described in the article refers to the study of data from the domain of medicine. The d...
Objective: To develop a system for the automatic classification of pathology reports for Cancer Regi...
IntroductionRoutinely collected healthcare data are a powerful research resource, but often lack det...
© 2016, Springer Science+Business Media New York. Purpose: Extracting information from electronic me...
Pathology reports represent a primary source of information for cancer registries. Hospitals routine...
Pathology reports provide valuable information for cancer registries to understand, plan and impleme...
Objective: To extract pertinent information from narrative pathology reports and automatically popul...
Abstract Background The rapid proliferation of biomedical text makes it increasingly difficult for r...
ObjectiveWe develop natural language processing (NLP) methods capable of accurately classifying tumo...
Abstract Background Pathology reports are written in free-text form, which precludes efficient data ...
International audienceObjective: Our study aimed to construct and evaluate functions called "classif...
Objectives: This paper describes a system to automatically classify the stage of a lung cancer patie...