Sharing of research data in public repositories has become best practice in academia. With the accumulation of massive data, network bandwidth and storage requirements are rapidly increasing. The ProteomeXchange (PX) consortium implements a mode of centralized metadata and distributed raw data management, which promotes effective data sharing. To facilitate open access of proteome data worldwide, we have developed the integrated proteome resource iProX (http://www.iprox.org) as a public platform for collecting and sharing raw data, analysis results and metadata obtained from proteomics experiments. The iProX repository employs a web-based proteome data submission process and open sharing of mass spectrometry-based proteomics datasets. Also, it deploys extensive controlled vocabularies and ontologies to annotate proteomics datasets. Users can use a GUI to provide and access data through a fast Aspera-based transfer tool. iProX is a full member of the PX consortium; all released datasets are freely accessible to the public. iProX is based on a high availability architecture and has been deployed as part of the proteomics infrastructure of China, ensuring long-term and stable resource support. iProX will facilitate worldwide data analysis and sharing of proteomics experiments.
There have been more than 2.2 million confirmed cases and over
120 000 deaths from the human coronavirus disease 2019
(COVID-19) pandemic, caused by the novel severe acute
respiratory syndrome coronavirus (SARS-CoV-2), in the United
States alone. However, there is currently a lack of proven
effective medications against COVID-19. Drug repurposing offers
a promising route for the development of prevention and
treatment strategies for COVID-19. This study reports an
integrative, network-based deep-learning methodology to identify
repurposable drugs for COVID-19 (termed CoV-KGE). Specifically,
we built a comprehensive knowledge graph that includes 15
million edges across 39 types of relationships connecting drugs,
diseases, proteins/genes, pathways, and expression from a large
scientific corpus of 24 million PubMed publications. Using
Amazon’s AWS computing resources and a network-based,
deep-learning framework, we identified 41 repurposable drugs
(including dexamethasone, indomethacin, niclosamide, and
toremifene) whose therapeutic associations with COVID-19 were
validated by transcriptomic and proteomics data in
SARS-CoV-2-infected human cells and data from ongoing clinical
trials. Whereas this study by no means recommends specific
drugs, it demonstrates a powerful deep-learning methodology to
prioritize existing drugs for further investigation, which holds
the potential to accelerate therapeutic development for
COVID-19.
scite is a Brooklyn-based organization that helps researchers better discover and understand research articles through Smart Citations–citations that display the context of the citation and describe whether the article provides supporting or contrasting evidence. scite is used by students and researchers from around the world and is funded in part by the National Science Foundation and the National Institute on Drug Abuse of the National Institutes of Health.