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Blogs

One approach to addressing population health

Addressing population health improves the care patients receive and leads to better health outcomes.

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Blogs

healthcare data Interoperability with ICD-11

Interoperability with ICD-11

The 11th revision of the ICD code system, ICD-11, is completely electronic and features a sophisticate code structure for classifying diseases, disorders, and causes of death.

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Blogs

Why is patient engagement important? 

Patients are becoming more involved in the decision-making process related to their healthcare. Learn more about the importance of patient engagement.

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Blogs

FHIR and Rhapsody Semantic 

FHIR is integrated into Rhapsody Semantic, which allows for easier patient record access and understandability.

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Blogs

Master data management with Rhapsody Semantic

Learn more about the importance of master data management in healthcare and how Rhapsody can help your organization take control of your data.

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Blogs

How consistent healthcare terminology can help reduce medical errors

How consistent healthcare terminology can help reduce medical errors

Proper terms, descriptions, versions, and even mapping from one code set to another can help providers quickly and accurately assess existing EHR data.

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Blogs

What is semantic interoperability? 

Semantic interoperability makes healthcare data analytics possible. Learn more about the importance of clinical terminology solutions.

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Blogs

healthcare data analytics

I’ve got ideas about terminology services and analytics…how about you?

There is consistent interest in analytics for healthcare organizations – everything from population health analysis to big data analytics.

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Blogs

puzzle pieces terminology categorization and normalization

Understanding terminology categorization and normalization

To integrate and share medical data within an organization and between organizations, data must be normalized to a degree where everyone agrees to what it is.

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