Master Data Management

Create a single source of truth for provider data

Integrate provider information across your organization with H1’s comprehensive data.

Transform Provider Data into Actionable Insights

Unlock the power of your HCP data and make strategic decisions based on a complete and accurate understanding of the HCP landscape for smarter planning, targeted outreach, and maximum commercial impact.

Automated provider data ingestion and cleaning

Seamlessly process thousands of provider rosters with advanced NPI matching, deduplication, data hierarchy reconciliation, geocoding, and error correction. Ensure your data is accurate and reliable from the start.

Enriched and scored data with AI

Leverage ML models and enriched data assets to confidently score provider details for accuracy and relevance.

Customizable data views and relationships

Integrate your data schema and contract relationships for a tailored experience. Align providers, clinics, and organizations to create meaningful connections and drive impactful insights.

Personalized data recommendations

Empower your teams with bespoke data views and actionable recommendations. Enhance provider directories and claims with precise, business-focused insights for better outcomes.

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Accuracy at Every Step

H1’s phone methodology approach optimizes for data validity and scale

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1. Consolidate and assess

H1 accuracy-scores thousands of provider data sources, combining open web data, client beta inputs, manual validations, and licensed datasets.

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2. Call center outreach

A subset of facilities’ data are contacted by an H1 call center and are optimized for speed of routing to the right care.

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3. Two-part authentication

H1 verifies whether the phone number connects to the correct provider and address, with accuracy scores reflecting the results.

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4. Ongoing back-testing of model

Accuracy scoring is further updated by using validated “truth set” to backtest and train models.