What fundamental process does the raw stream of data from EHRs and claims need analytics to become clear, actionable insights?
Answer
Transformation into clear, actionable insights.
The vast quantities of data generated daily from sources like Electronic Health Records (EHRs), insurance claims, and administrative reports are described as massive streams of raw information. Without the application of the analytical layer, this information remains essentially noise—unstructured and unusable for strategic decision-making. Analytics provides the essential engine that processes this raw input, transforming it into clear, actionable insights. This transformation enables organizations to effectively spot underlying patterns, isolate high-risk patient cohorts, and accurately measure whether implemented clinical interventions are succeeding or failing.

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