Ontology highlight
ABSTRACT:
SUBMITTER: Choi BK
PROVIDER: S-EPMC6196525 | biostudies-literature | 2018 Oct
REPOSITORIES: biostudies-literature
Choi Byung-Kwon BK Dayaram Tajhal T Parikh Neha N Wilkins Angela D AD Nagarajan Meena M Novikov Ilya B IB Bachman Benjamin J BJ Jung Sung Yun SY Haas Peter J PJ Labrie Jacques L JL Pickering Curtis R CR Adikesavan Anbu K AK Regenbogen Sam S Kato Linda L Lelescu Ana A Buchovecky Christie M CM Zhang Houyin H Bao Sheng Hua SH Boyer Stephen S Weber Griff G Scott Kenneth L KL Chen Ying Y Spangler Scott S Donehower Lawrence A LA Lichtarge Olivier O
Proceedings of the National Academy of Sciences of the United States of America 20180928 42
Scientific progress depends on formulating testable hypotheses informed by the literature. In many domains, however, this model is strained because the number of research papers exceeds human readability. Here, we developed computational assistance to analyze the biomedical literature by reading PubMed abstracts to suggest new hypotheses. The approach was tested experimentally on the tumor suppressor p53 by ranking its most likely kinases, based on all available abstracts. Many of the best-ranke ...[more]