ObjectiveCancer is a leading cause of death, but much of the diagnostic information is stored as unstructured data in pathology reports. We aim to improve uncertainty estimates of machine learning-based pathology parsers and evaluate performance in low data settings.Materials and methodsOur data comes from the Urologic Outcomes Database at UCSF which includes 3232 annotated prostate cancer pathology reports from 2001 to 2018. We approach 17 separate information extraction tasks, involving a wide range of pathologic features. To handle the diverse range of fields, we required 2 statistical models, a document classification method for pathologic features with a small set of possible values and a token extraction method for pathologic features...
Deep learning (DL) has shown great potential in digital pathology applications. The robustness of a ...
IntroductionRoutinely collected healthcare data are a powerful research resource, but often lack det...
Deep learning (DL) is a subfield of artificial intelligence (AI) focused on developing algorithms th...
Objective: Cancer is a leading cause of death, but much of the diagnostic information is stored as u...
Free-text reporting has been the main approach in clinical pathology practice for decades. Pathology...
Background Encoded pathology data are key for medical registries and analyses, but pathology informa...
© 2016, Springer Science+Business Media New York. Purpose: Extracting information from electronic me...
Context: Analysis of diagnostic information in pathology reports for the purposes of clinical or tra...
AbstractWe introduce an extensible and modifiable knowledge representation model to represent cancer...
Pathology text mining is a challenging task given the reporting variability and constant new finding...
Routine cervical cancer screening has significantly decreased the incidence and mortality of cervica...
Information contained in electronic health records (EHR) combined with the latest advances in machin...
ObjectiveWe develop natural language processing (NLP) methods capable of accurately classifying tumo...
SignificanceOral cancer is one of the most prevalent cancers, especially in middle- and low-income c...
Pathology reports primarily consist of unstructured free text and thus the clinical information cont...
Deep learning (DL) has shown great potential in digital pathology applications. The robustness of a ...
IntroductionRoutinely collected healthcare data are a powerful research resource, but often lack det...
Deep learning (DL) is a subfield of artificial intelligence (AI) focused on developing algorithms th...
Objective: Cancer is a leading cause of death, but much of the diagnostic information is stored as u...
Free-text reporting has been the main approach in clinical pathology practice for decades. Pathology...
Background Encoded pathology data are key for medical registries and analyses, but pathology informa...
© 2016, Springer Science+Business Media New York. Purpose: Extracting information from electronic me...
Context: Analysis of diagnostic information in pathology reports for the purposes of clinical or tra...
AbstractWe introduce an extensible and modifiable knowledge representation model to represent cancer...
Pathology text mining is a challenging task given the reporting variability and constant new finding...
Routine cervical cancer screening has significantly decreased the incidence and mortality of cervica...
Information contained in electronic health records (EHR) combined with the latest advances in machin...
ObjectiveWe develop natural language processing (NLP) methods capable of accurately classifying tumo...
SignificanceOral cancer is one of the most prevalent cancers, especially in middle- and low-income c...
Pathology reports primarily consist of unstructured free text and thus the clinical information cont...
Deep learning (DL) has shown great potential in digital pathology applications. The robustness of a ...
IntroductionRoutinely collected healthcare data are a powerful research resource, but often lack det...
Deep learning (DL) is a subfield of artificial intelligence (AI) focused on developing algorithms th...