NERO: a biomedical named-entity (recognition) ontology with a large, annotated corpus reveals meaningful associations through text embedding. Wang, K., Stevens, R., Alachram, H., Li, Y., Soldatova, L., King, R., Ananiadou, S., Schoene, A. M, Li, M., Christopoulou, F., & others NPJ systems biology and applications, 7(1):1–8, Nature Publishing Group, 2021. bibtex @article{wang2021nero,
title={NERO: a biomedical named-entity (recognition) ontology with a large, annotated corpus reveals meaningful associations through text embedding},
author={Wang, Kanix and Stevens, Robert and Alachram, Halima and Li, Yu and Soldatova, Larisa and King, Ross and Ananiadou, Sophia and Schoene, Annika M and Li, Maolin and Christopoulou, Fenia and others},
journal={NPJ systems biology and applications},
volume={7},
number={1},
pages={1--8},
year={2021},
publisher={Nature Publishing Group}
}
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