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Kristina Hanspers

Explore the profile of Kristina Hanspers including associated specialties, affiliations and a list of published articles. Areas
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Articles 36
Citations 4487
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Recent Articles
1.
Agrawal A, Balci H, Hanspers K, Coort S, Martens M, Slenter D, et al.
Nucleic Acids Res . 2023 Nov; 52(D1):D679-D689. PMID: 37941138
WikiPathways (wikipathways.org) is an open-source biological pathway database. Collaboration and open science are pivotal to the success of WikiPathways. Here we highlight the continuing efforts supporting WikiPathways, content growth and...
2.
Fecho K, Bizon C, Issabekova T, Moxon S, Thessen A, Abdollahi S, et al.
J Clin Transl Sci . 2023 Oct; 7(1):e214. PMID: 37900350
Knowledge graphs have become a common approach for knowledge representation. Yet, the application of graph methodology is elusive due to the sheer number and complexity of knowledge sources. In addition,...
3.
Callaghan J, Xu C, Xin J, Cano M, Riutta A, Zhou E, et al.
Bioinformatics . 2023 Sep; 39(9). PMID: 37707514
Summary: Knowledge graphs are an increasingly common data structure for representing biomedical information. These knowledge graphs can easily represent heterogeneous types of information, and many algorithms and tools exist for...
4.
Mamedov M, Vedova S, Freimer J, Sahu A, Ramesh A, Arce M, et al.
Nature . 2023 Aug; 621(7977):188-195. PMID: 37648854
γδ T cells are potent anticancer effectors with the potential to target tumours broadly, independent of patient-specific neoantigens or human leukocyte antigen background. γδ T cells can sense conserved cell...
5.
Callaghan J, Xu C, Xin J, Cano M, Riutta A, Zhou E, et al.
ArXiv . 2023 May; PMID: 37131885
Knowledge graphs are an increasingly common data structure for representing biomedical information. These knowledge graphs can easily represent heterogeneous types of information, and many algorithms and tools exist for querying...
6.
Ostaszewski M, Niarakis A, Mazein A, Kuperstein I, Phair R, Orta-Resendiz A, et al.
Mol Syst Biol . 2021 Dec; 17(12):e10851. PMID: 34939300
No abstract available.
7.
Ostaszewski M, Niarakis A, Mazein A, Kuperstein I, Phair R, Orta-Resendiz A, et al.
Mol Syst Biol . 2021 Oct; 17(10):e10387. PMID: 34664389
We need to effectively combine the knowledge from surging literature with complex datasets to propose mechanistic models of SARS-CoV-2 infection, improving data interpretation and predicting key targets of intervention. Here,...
8.
Hanspers K, Kutmon M, Coort S, Digles D, Dupuis L, Ehrhart F, et al.
PLoS Comput Biol . 2021 Aug; 17(8):e1009226. PMID: 34411100
No abstract available.
9.
Martens M, Ammar A, Riutta A, Waagmeester A, Slenter D, Hanspers K, et al.
Nucleic Acids Res . 2020 Nov; 49(D1):D613-D621. PMID: 33211851
WikiPathways (https://www.wikipathways.org) is a biological pathway database known for its collaborative nature and open science approaches. With the core idea of the scientific community developing and curating biological knowledge in...
10.
Hanspers K, Riutta A, Summer-Kutmon M, Pico A
Genome Biol . 2020 Nov; 21(1):273. PMID: 33168034
Thousands of pathway diagrams are published each year as static figures inaccessible to computational queries and analyses. Using a combination of machine learning, optical character recognition, and manual curation, we...