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Related Experiment Videos

Sensitization to synthetic yarns

J Elms1, P Griffin, P Beckett

  • 1Health and Safety Laboratory, Broad Lane, Sheffield S3 7HQ, UK. joanne.elms@hsl.gov.uk

Allergy
|August 8, 2001
PubMed
Summary

No abstract available in PubMed .

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