Abstract Background There is a huge body of scientific literature describing the relation between tumor types and anti-cancer drugs. The vast amount of scientific literature makes it impossible for researchers and physicians to extract all relevant information manually. Methods In order to cope with the large amount of literature we applied an automated text mining approach to assess the relations between 30 most frequent cancer types and 270 anti-cancer drugs. We applied two different approaches, a classical text mining based on named entity recognition and an AI-based approach employing word embeddings. The consistency of literature mining results was validated with 3 independent methods: first, using data from FDA approvals, second, usin...
Cancer immunotherapy has fundamentally changed the landscape of oncology in recent years and signifi...
Background: Precision oncology involves analysis of individual cancer samples to un...
Motivation: The hallmarks of cancer by Hanahan and Weinberg (2000, 2011) have become highly influent...
Background:There is a huge body of scientific literature describing the relation between tumor types...
[[abstract]]Modern life science which can be applied to many fields, such as drug discovery, pharmac...
<div><p>Research in biomedical text mining is starting to produce technology which can make informat...
AbstractCancer is a malignant disease that has caused millions of human deaths. Its study has a long...
Abstract Background The rapid proliferation of biomedical text makes it increasingly difficult for r...
Abstract Background One of the most neglected areas of biomedical Text Mining (TM) is the developmen...
The discovery of effective cancer treatments is a key goal for pharmaceutical companies. However, th...
Research in biomedical text mining is starting to produce technology which can make information in b...
BACKGROUND: One of the most neglected areas of biomedical Text Mining (TM) is the development of sys...
AbstractPurposeThis paper reviews the research literature on text mining (TM) with the aim to find o...
The two text mining strategies: finding co-occurrences of biological entities within documents, and ...
Purpose: This paper reviews the research literature on text mining (TM) with the aim to find out (1)...
Cancer immunotherapy has fundamentally changed the landscape of oncology in recent years and signifi...
Background: Precision oncology involves analysis of individual cancer samples to un...
Motivation: The hallmarks of cancer by Hanahan and Weinberg (2000, 2011) have become highly influent...
Background:There is a huge body of scientific literature describing the relation between tumor types...
[[abstract]]Modern life science which can be applied to many fields, such as drug discovery, pharmac...
<div><p>Research in biomedical text mining is starting to produce technology which can make informat...
AbstractCancer is a malignant disease that has caused millions of human deaths. Its study has a long...
Abstract Background The rapid proliferation of biomedical text makes it increasingly difficult for r...
Abstract Background One of the most neglected areas of biomedical Text Mining (TM) is the developmen...
The discovery of effective cancer treatments is a key goal for pharmaceutical companies. However, th...
Research in biomedical text mining is starting to produce technology which can make information in b...
BACKGROUND: One of the most neglected areas of biomedical Text Mining (TM) is the development of sys...
AbstractPurposeThis paper reviews the research literature on text mining (TM) with the aim to find o...
The two text mining strategies: finding co-occurrences of biological entities within documents, and ...
Purpose: This paper reviews the research literature on text mining (TM) with the aim to find out (1)...
Cancer immunotherapy has fundamentally changed the landscape of oncology in recent years and signifi...
Background: Precision oncology involves analysis of individual cancer samples to un...
Motivation: The hallmarks of cancer by Hanahan and Weinberg (2000, 2011) have become highly influent...