Chief Growth Officer, Patient Access & Engagement Services
Prior authorization failures rarely start with the insurance companies or payers, even though many people believe that. The fact is, the majority of prior authorization failures start at patient intake.
Yet, most organizations will put the blame for authorization delays on payer complexity or clinical documentation gaps. Yes, those factors matter, but intake decisions determine whether authorization workflows ever start on solid ground.
According to an online article of Medical Economics published in October 2025, 94% of physicians report that prior authorization delays access to necessary care, and 78% say these delays sometimes lead patients to abandon treatment altogether; consequences that often trace back to flawed front-end data.
Prior authorization depends on what intake captures
Authorization workflows rely on intake accuracy. Missing clinical indicators, incomplete ordering provider details, vague service descriptions, and incorrect assumptions about site of care all compound risk. These gaps begin before clinical review ever starts.
Once flawed data enters the system, even the most sophisticated automation quickly pushes it forward. Administration teams then begin chasing corrections after the fact, often after services are rendered. The resulting insurance denial follows a predictable path.
Industry data show that at least 1 in 10 medical claims is denied due to documentation issues, and reworking them can cost $25–$181 per item in administrative overhead, much of which originates with inaccurate or incomplete front-end intake information.
Automation alone does not solve authorization risk
Technology excels at rules execution, but struggles with ambiguity. Authorization logic varies by insurer, plan, diagnosis, frequency, and setting; nuances that rigid automation can’t reliably interpret.
That’s why patient intake conversations among staff reveal the context automation simply cannot detect, including:
Services covered only under specific diagnoses
Authorization triggers tied to frequency or prior utilization
Referrals required based on provider relationships
Site-of-care rules buried in plan language
Automation supports staff by surfacing rules and flags, but if you were to remove staff, then accuracy then drops. For example, physicians and their teams often spend an average of 13 hours each week processing prior authorization work, with 40% of practices dedicating staff exclusively to these tasks.
Where authorization workflows collapse
Breakdowns usually follow the same pattern:
Intake captures minimal data to confirm eligibility
Authorization logic relies on assumptions from prior encounters
Automation advances incomplete information
Clinical teams correct errors post-service
Revenue teams absorb the denial fallout
What’s hidden is that each misstep compounds cost and delay.
Consider this: among Medicare Advantage plans, millions of prior authorization requests are processed annually, yet millions are still partially or fully denied; a signal that errors early in the workflow can ripple all the way to payer adjudication.
High-performing organizations redesign intake
Strong healthcare organizations have learned to redesign intake around authorization readiness. They:
Train access teams on coverage interpretation
Standardize intake workflows across sites
Use automation to flag risk, not replace judgment
Measure authorization accuracy at the source
They keep humans in the loop where judgment matters most. This strategy aligns with evidence that simply digitizing broken processes does not reduce denials or improve outcomes.
Why this matters now
Labor pressures and rapid automation adoption push organizations to move faster. But speed without context increases denial risk. Smarter organizations deliberately slow down intake decisions to accelerate everything else downstream. In other words, they take their time in front-end RCM so the back-end of the revenue cycle gains value by reducing revenue leakage.
This matters not just operationally, but financially and clinically. As one industry analysis found, denied claims can put up to 12% of a hospital’s revenue at risk, largely due to downstream effects of authorization breakdowns.
Prior authorization does not fail because teams lack technology. It fails when organizations underestimate the value of human judgment at the first patient touchpoint.
Conclusion: Humans + Tech = Better Outcomes
Intake is the foundation of authorization success. Without accurate data and human context, even the most advanced automation amplifies flaws instead of fixing them.
The organizations that break the denial cycle aren’t the ones that eliminate human involvement. They are the ones that empower humans with better tools, better data, and better workflows to make smarter decisions at the front end.
About the Author
Michelle Souferian is Chief Growth Officer for the Patient Access & Engagement Services division at Access Healthcare, where she leads growth strategy and market expansion for front-end revenue cycle solutions. With 18 years of experience across healthcare technology and revenue cycle management, Michelle has built her career helping health systems strengthen patient access as a critical driver of revenue integrity. She partners closely with provider organizations to address upstream causes of denials, improve scheduling and intake accuracy, and apply RCM-grade rigor to the first patient touchpoint. Her expertise includes revenue readiness strategy, go-to-market execution, and building scalable service models that deliver measurable financial and operational outcomes.
About Access Healthcare
Access Healthcare is one of the leading providers of revenue cycle management services for healthcare providers across the country. Founded in 2011, the company employs more than 30,000 professionals operate across 20 delivery centers to support global delivery models, disciplined workflow execution, and AI-enabled platforms built for scale and reliability.
In May 2025, Access Healthcare became a part of Smarter Technologies, which brings a people-first delivery model together with advanced AI-driven capabilities to help healthcare organizations achieve more durable, measurable revenue cycle outcomes.
Let’s build something stronger together.
Contact us to explore how our holistic approach to revenue integrity—powered by automation, analytics, and human insight—can support your goals.

