MEDICOMP HIMSS22

USABLE DATA. CONNECTED CARE. BETTER OUTCOMES. @ HIMSS22

HIMSS22 • Orlando, FL March 14-18, 2022 Book an Appointment

Are you tired of searching for information in your EHR?

Do inefficient workflows diminish your clinicians' productivity and make it difficult to find diagnostically-relevant details within a patient chart?

Medicomp's Clinical AI solutions can help:

  • Deliver actionable information at the point of care
  • Streamline workflows and increase productivity
  • Improve real-time quality compliance
  • Integrate care plans for physicians & nurses
  • Power existing EHRs with a clinical relevancy engine

Schedule a Meeting!

    To reserve your space to try Quippe or to schedule a 15-minute demo with the Medicomp team, simply complete the form below. If you have any questions, please email marketing@medicomp.com








    Quippe Clinical Lens

    Today’s healthcare problem isn’t a lack of data; it’s a lack of usable data. Quippe® uses MEDCIN's intelligence links to identify and interpret disorganized, complex arrays of medical data and transforms that data into actionable information and clinical insights – all within the physician’s workflow.

    Request a demo

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