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Access Friction Detection

Medium

Access Friction Detection to improve decision quality and speed.

Customer Experience (CX)Healthcare

The Pain

Patient service teams handle access friction detection across patient communications, complaints, and access where timing and care standards matter. Work often depends on long wait times, appointment changes, and service gaps, but the inputs sit in multiple systems and arrive late. Teams spend time reconciling data instead of making decisions, and gaps show up when conditions shift.

What's Possible

AI can support access friction detection by pulling data from CRM, call logs, and patient communications and highlighting patterns. Teams move from manual compilation to review, validation, and scenario testing. Outputs update as operational conditions change, so decisions stay aligned to current reality.

Signals This Is Worth Exploring

Access friction detection relies on manual tracking or spreadsheets

Critical inputs arrive late or require manual reconciliation

Exceptions create rework when policies change

Decision makers do not trust the data without extra checks

Impact

30 to 50 percent reduction in time spent on access friction detection

Faster decisions when operational conditions change

Fewer errors and rework in access friction detection

Clearer visibility into patient communications, complaints, and access priorities

Typical Approach

1

Assess

Map the current access friction detection workflow, data sources, and pain points.

2

Pilot

Test with a limited scope and measure accuracy, time saved, and exceptions.

3

Scale

Expand across teams with monitoring, feedback, and integration into existing tools.

What to Watch Out For

Data quality issues can limit accuracy

Process owners need time to trust new outputs

Integrations with existing systems take effort

Rules and thresholds must be maintained as conditions change

Questions to Think About

Before we talk, you might want to consider:

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What volume and cadence does access friction detection run on today?

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Which systems hold the source data and approvals?

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Who reviews and signs off on outcomes?

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What exceptions cause the most delays?

Build On This

Once the basics are working, you can expand:

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Exception analytics

Identify the most common drivers and reduce rework

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Scenario testing

Compare options before changing plans

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Workflow integration

Embed outputs into existing tools and approvals

Want to explore if this fits your organization?

Book a 30-minute call to discuss your situation and whether this use case makes sense for you.

Book a 30 min call