Technology | October 01, 2013

Elsevier Offers Search Engine of its Radiology References

RSNA 2013 CT systems digital radiography mri elsevier clinicalkey insight engine

October 1, 2013 — ClinicalKey, a clinical insight engine, is an online clinical information resource that provides radiologists with access to Elsevier's radiology references at point of care for guidance on every aspect of the field. Elsevier’s authors span every subspecialty in the field to bring the latest knowledge from the world’s most respected authorities, and the site is designed to help clinicians find the most relevant clinical answers quickly. Content includes more than 700 textbooks and 400 medical journals. It also provides current, clinically relevant, evidence-based answers, expert commentary, Medline abstracts and select third-party journals.

For more information: www.clinicalkey.com

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