Publication | Open Access
Use and validation of text mining and cluster algorithms to derive insights from Corona Virus Disease-2019 (COVID-19) medical literature
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Citations
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2021
Year
Cluster FormatEngineeringCovid-19 EpidemiologyCorpus LinguisticsText MiningCovid-19Natural Language ProcessingData MiningPublic HealthBiomedical Text MiningNamed-entity RecognitionAbstract AnalysisMedical LiteratureDocument ClusteringBiomedical LiteratureNlp TaskCovid-19 PandemicKnowledge DiscoveryMedical Language ProcessingInformation ExtractionEpidemiologyRelationship ExtractionCluster AlgorithmsHealth Informatics
The emergence of the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) late last year has not only led to the world-wide coronavirus disease 2019 (COVID-19) pandemic but also a deluge of biomedical literature. Following the release of the COVID-19 open research dataset (CORD-19) comprising over 200,000 scholarly articles, we a multi-disciplinary team of data scientists, clinicians, medical researchers and software engineers developed an innovative natural language processing (NLP) platform that combines an advanced search engine with a biomedical named entity recognition extraction package. In particular, the platform was developed to extract information relating to clinical risk factors for COVID-19 by presenting the results in a cluster format to support knowledge discovery. Here we describe the principles behind the development, the model and the results we obtained.
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