Pathology text mining is a challenging task given the reporting variability and constant new findings in cancer sub-type definitions. However, successful text mining of a large pathology database can play a critical role to advance 'big data' cancer research like similarity-based treatment selection, case identification, prognostication, surveillance, clinical trial screening, risk stratification, and many others. While there is a growing interest in developing language models for more specific clinical domains, no pathology-specific language space exist to support the rapid data-mining development in pathology space. In literature, a few approaches fine-tuned general transformer models on specialized corpora while maintaining the original ...
The amount of data and analysis being published and archived in the biomedical research community is...
As opposed to general English, many concepts in biomedical terminology have been designed in recent ...
Abstract Background The rapid proliferation of biomedical text makes it increasingly difficult for r...
Information contained in electronic health records (EHR) combined with the latest advances in machin...
Purpose: This paper reviews the research literature on text mining (TM) with the aim to find out (1)...
AbstractWe introduce an extensible and modifiable knowledge representation model to represent cancer...
Background: Pathology reports contain key information about the patient’s diagno- sis as well as imp...
Kühnel L, Fluck J. We are not ready yet: limitations of state-of-the-art disease named entity recogn...
AbstractCancer is a malignant disease that has caused millions of human deaths. Its study has a long...
Gastric cancer is the fifth most common cancer in the world. At the same time, it is also the fourth...
Lentzen M, Madan S, Lage-Rupprecht V, et al. Critical assessment of transformer-based AI models for ...
Objective: Cancer is a leading cause of death, but much of the diagnostic information is stored as u...
Background: Pathology reports serve as an auditable trial of a patient’s clinical narrative, contain...
Pathology reports primarily consist of unstructured free text and thus the clinical information cont...
Abstract Background Natural language processing (NLP)...
The amount of data and analysis being published and archived in the biomedical research community is...
As opposed to general English, many concepts in biomedical terminology have been designed in recent ...
Abstract Background The rapid proliferation of biomedical text makes it increasingly difficult for r...
Information contained in electronic health records (EHR) combined with the latest advances in machin...
Purpose: This paper reviews the research literature on text mining (TM) with the aim to find out (1)...
AbstractWe introduce an extensible and modifiable knowledge representation model to represent cancer...
Background: Pathology reports contain key information about the patient’s diagno- sis as well as imp...
Kühnel L, Fluck J. We are not ready yet: limitations of state-of-the-art disease named entity recogn...
AbstractCancer is a malignant disease that has caused millions of human deaths. Its study has a long...
Gastric cancer is the fifth most common cancer in the world. At the same time, it is also the fourth...
Lentzen M, Madan S, Lage-Rupprecht V, et al. Critical assessment of transformer-based AI models for ...
Objective: Cancer is a leading cause of death, but much of the diagnostic information is stored as u...
Background: Pathology reports serve as an auditable trial of a patient’s clinical narrative, contain...
Pathology reports primarily consist of unstructured free text and thus the clinical information cont...
Abstract Background Natural language processing (NLP)...
The amount of data and analysis being published and archived in the biomedical research community is...
As opposed to general English, many concepts in biomedical terminology have been designed in recent ...
Abstract Background The rapid proliferation of biomedical text makes it increasingly difficult for r...