Registries provide a valuable tool for cancer research and for enabling decision support systems. However, populating cancer registries with information from medical records can be a tedious and bottlenecking process. This thesis presents an annotator system that automatically extracts data elements from lung cancer radiology reports to populate a lung cancer registry. Annotators systems such as this utilize natural language processing (NLP) techniques to locate concepts from a text source. A web-based framework that wraps the annotator system into a graphical user interface for researchers and clinicians is also discussed
Diagnostic radiologists are expected to review and assimilate findings from prior studies when const...
International audienceBackground:Natural Language Processing (NLP) has been shown effective to analy...
Importance: The stratification of indeterminate lung nodules is a growing problem, but the burden of...
Radiological reporting has generated large quantities of digital content within the electronic healt...
The Unstructured Information Management Architecture (UIMA) [1] framework is a growing platform for ...
IntroductionRoutinely collected healthcare data are a powerful research resource, but often lack det...
Background Manually extracted data points from health records are collated on an in...
Natural Language Processing (NLP) Algorithms are the key factors for automatic information extractio...
Introduction:Lung nodules are commonly encountered in clinical practice, yet little is known about t...
Rising incidence and mortality of cancer have led to an incremental amount of research in the field....
Background: Natural language processing (NLP) is thought to be a promising solution to extract and s...
Background In the era of datafication, it is important that medical data are accurate and structured...
Diagnostic radiologists are expected to review and assimilate findings from prior studies when const...
International audienceBackground:Natural Language Processing (NLP) has been shown effective to analy...
Importance: The stratification of indeterminate lung nodules is a growing problem, but the burden of...
Radiological reporting has generated large quantities of digital content within the electronic healt...
The Unstructured Information Management Architecture (UIMA) [1] framework is a growing platform for ...
IntroductionRoutinely collected healthcare data are a powerful research resource, but often lack det...
Background Manually extracted data points from health records are collated on an in...
Natural Language Processing (NLP) Algorithms are the key factors for automatic information extractio...
Introduction:Lung nodules are commonly encountered in clinical practice, yet little is known about t...
Rising incidence and mortality of cancer have led to an incremental amount of research in the field....
Background: Natural language processing (NLP) is thought to be a promising solution to extract and s...
Background In the era of datafication, it is important that medical data are accurate and structured...
Diagnostic radiologists are expected to review and assimilate findings from prior studies when const...
International audienceBackground:Natural Language Processing (NLP) has been shown effective to analy...
Importance: The stratification of indeterminate lung nodules is a growing problem, but the burden of...