A random collection of 600 PubMed abstracts from 6 glycobiology-related journals:
Glycobiology, Glycoconjugate journal, The Journal of biological chemistry, Journal of proteome research,
Journal of proteomics, and Carbohydrate research.
The whole PMIDs were collected on June 11, 2019.
From each journal, 100 PMIDs were randomly sampled.
This collection includes the result from the Covid-19 Virtual Hackathon.
LitCovid is a comprehensive literature resource on the subject of Covid-19 collected by NCBI:
Since the literature dataset was released, several groups are producing annotations to the dataset.
To facilitate a venue for aggregating the valuable resources which are highly relevant to each other, and should be much more useful when they can be accessed together, this PubAnnotation collection is set up.
It is a part of the Covid19-PubAnnotation project.
In this collection,
the LitCovid-docs project contains all the documents contained in the LitCovid literature collection, and the other projects are annotation datasets contributed by various groups.
It is an open collection, which means anyone who wants to contribute can do so, in the following way:
take the documents in the,
produce annotation to the texts based on your resource, and
contribute the annotation back to this collection:
create your own project at PubAnnotaiton,
upload your annotation to the project (HowTo), and
add the project to this collection.
All the contributed annotations will become publicly available.
Please note that, during uploading your annotation data, you do not need to be worried about slight changes in the text: PubAnnotation will automatically catch them and adjust the positions appropriately.
Should you have any question, please feel free to mail to email@example.com.
UniProt protein annotation to the benchmark data set of BioNLP-ST 2016 GE task: reference data set (bionlp-st-ge-2016-reference) and test data set (bionlp-st-ge-2016-test).
The annotations are produced based on a dictionary which is semi-automatically compiled for the 34 full paper articles included in the benchmark data set (20 in the reference data set + 14 in the test data set).
For detailed information about BioNLP-ST GE 2016 task data sets, please refer to the benchmark reference data set (bionlp-st-ge-2016-reference) and benchmark test data set (bionlp-st-ge-2016-test).
It is the benchmark reference data set of the BioNLP-ST 2016 GE task.
It includes Genia-style event annotations to 20 full paper articles which are about NFκB proteins.
The task is to develop an automatic annotation system which can produce annotation similar to the annotation in this data set as much as possible.
For evaluation of the performance of a participating system, the system needs to produce annotations to the documents in the benchmark test data set (bionlp-st-ge-2016-test).
GE 2016 benchmark data set is provided as multi-layer annotations which include:
bionlp-st-ge-2016-reference: benchmark reference data set (this project)
bionlp-st-ge-2016-test: benchmark test data set (annotations are blined)
bionlp-st-ge-2016-test-proteins: protein annotation to the benchmark test data set
Following is supporting resources:
bionlp-st-ge-2016-coref: coreference annotation
bionlp-st-ge-2016-uniprot: Protein annotation with UniProt IDs.
pmc-enju-pas: dependency parsing result produced by Enju
UBERON-AE: annotation for anatomical entities as defined in UBERON
ICD10: annotation for disease names as defined in ICD10
GO-BP: annotation for biological process names as defined in GO
GO-CC: annotation for cellular component names as defined in GO
A SPARQL-driven search interface is provided at http://bionlp.dbcls.jp/sparql.