
Healthcare claims denials are on the rise, regardless of greater than a decade of industry-wide technological advances geared toward enhancing claims management processes. Nonetheless, in recent times, the introduction of synthetic intelligence (AI) into the healthcare ecosystem has begun reworking how healthcare organizations manage patient access — and your complete income cycle.
This text summarizes a latest webinar with Experian Well being’s Vice President of Innovation, David ‘Fig’ Figueredo, and Kate Ankumah, Product Supervisor for Patient Access Curator™, as they break down how healthcare organizations can use AI to construct scalable, data-driven revenue cycle solutions and ship measurable worth throughout the affected person entry ecosystem.
Evolution of AI in healthcare
For greater than a decade, a development of know-how – principally rooted in automation – has tried to resolve the difficulty of rising denials. Immediately, with the assistance of AI options, the method is shifting away from transactional actions to a extra intelligence-driven method.
AI instruments could be applied at each stage of the income cycle to resolve persistent challenges – like profit coordination, eligibility verification, and claims management. And whereas most suppliers have the potential so as to add AI options, claims denials proceed to climb.
“With all the funding by organizations like Experian Well being and HIS system distributors, there nonetheless is a excessive prevalence of a problem with coordination of advantages and eligibility denials.”
David Figueredo, Experian Well being’s VP of Innovation
Figueredo additional factors out that whereas income cycle leaders are conscious of AI and its potential, they typically stay skeptical of the know-how or are not sure how you can greatest leverage AI instruments for denial prevention.
Overcoming perceptions about AI
Healthcare leaders generally battle with destructive perceptions round adopting AI options. Figueredo notes that is widespread, and desires organizations to know that with AI, “There’s plenty of energy, hope and expectation round the usage of utilized applied sciences and automation within the income cycle course of.”
Considerations about implementing AI for income cycle administration fluctuate broadly. Nonetheless, in response to the outcomes of an Experian Well being information research introduced throughout the webinar, “accuracy and reliability” are sometimes a high fear amongst healthcare organizations contemplating adopting AI know-how.
Different widespread issues about leveraging AI options embrace information privateness and safety, price of implementation, workers resistance and labor danger, and lack of transparency. Healthcare organizations additionally need to base the choice to make the most of AI on measurable outcomes. The place within the income cycle has AI been applied? How did it enhance denial charges?
Discovering a path ahead with AI
AI provides healthcare organizations the potential to extend operational efficiencies, scale back administrative burdens, and scale back prices. Whereas many income cycle leaders are most keen to put bets on utilizing AI for affected person eligibility verification and claims management, limitations to adopting AI nonetheless exist. Figueredo notes:
“We’re seeing plenty of organizations which are [in AI], but in addition guarded about its use. Healthcare leaders usually have a selected purpose in thoughts for utilizing AI and need to see real-world outcomes.” He reminds healthcare leaders that with AI, we “can do issues we couldn’t do earlier than – nevertheless it’s the way it’s utilized in fixing issues within the [revenue cycle] course of” that actually issues.
For a lot of healthcare suppliers, the query turns into: Does including AI options to the income cycle present acceleration? Enhance affected person entry? Cut back the variety of guide touches? Can AI do extra of the work persistently so workers labor could be reapplied to different focus areas? Does AI assist mitigate ongoing workers shortages? Will it minimize prices for healthcare organizations already working on skinny margins?
Adopting AI: RCM greatest practices
When modernizing the income cycle, Figueredo reminds healthcare suppliers to have a transparent set of tips and recommends making certain AI options are designed to fulfill particular income cycle objectives. High priorities for healthcare organizations typically embrace:
- Decreasing guide interactions: Whereas there are nonetheless some conditions that require human intelligence to make selections, numerous easy duties could be automated to reduce guide workload.
- Fixing points on the entrance finish: Early interventions to proactively appropriate potential points with claims earlier than they grow to be an even bigger downside, like incorrect affected person demographics or eligibility info, could be important to stopping denials.
- Supporting real-time integration: To keep away from counting on batch auditing or poorly knowledgeable automated decision-making within the income cycle, HIS programs and affected person entry platforms, like scheduling and billing, should be designed to deal with real-time corrections.
Adopting AI for COB with Experian Well being’s Affected person Entry Curator
Turnkey AI instruments, like Experian’s Well being’s Patient Access Curator (PAC), permit healthcare organizations to implement a comprehensive patient access COB solution that touches each step of the income cycle course of – beginning with affected person registration.
PAC consolidates essential capabilities like eligibility checks, MBI, demographics and discovery into one seamless resolution to maximise clear claims and reduce denials, appeals and resubmissions. Kate Ankumah, Product Supervisor for Experian Well being’s Patient Access Curator, explains:
“We all know that unhealthy information is sort of a virus. If it begins unhealthy, it finally ends up on the declare – even if you happen to attempt to clear up it mid-stream, it’s already saved someplace. On the level of scheduling, on the level of registration, [with the Patient Access Curator], we’re supplying you with essentially the most correct information in order that it could actually stay and get correct to the declare.”
Advantages of leveraging AI for COB and claims administration
Adopting COB options powered by AI and machine-learning, like Experian Health’s Patient Access Curator, healthcare suppliers can enhance general accuracy throughout claims processing on the entrance finish –and at each step of the income cycle. And when errors are diminished from the beginning, healthcare organizations usually profit from much less wasted workers time, decreased denial volumes, accelerated denial administration, and fewer contingency vendor charges – plus a greater affected person expertise general.
Patient Access Curator is out there now – learn the way your healthcare group can get began and forestall declare denials in seconds.
