By NAHEEM NOAH
A Name from the Black Gap
Three months into constructing Carenector’s facility-to-facility platform, I acquired a name that crystallized every little thing incorrect with healthcare referrals. A hospital social employee, who was already utilizing our particular person affected person platform to assist households discover care, had been making an attempt to coordinate an institutional placement for an 82-year-old stroke affected person for six days. She’d made 23 telephone calls. Despatched 14 faxes. The affected person was medically cleared however caught in an acute mattress costing $2,000 per day as a result of nobody might affirm which expert nursing services had open beds, accepted her Medicaid plan, and had stroke rehabilitation capability.
“I really like what you constructed for sufferers,” she informed me, “however once I must do a facility-to-facility switch, I’m again to faxing. Can’t you repair this workflow, too?”
She wasn’t incorrect. We’re in 2025, and regardless of billions poured into well being IT and breathless AI guarantees, referring a affected person usually looks like stepping again into 1995. Earlier this year, THCB’s own editor Matthew Holt documented his attempt to navigate specialist referrals by way of Blue Defend of California. The echocardiogram referral his physician despatched by no means arrived on the imaging heart. When he wanted a dermatologist, his medical group referred him to a supplier who turned out to not be coated by his HMO plan in any respect. “There’s a enormous alternative right here,” Holt concluded after his odyssey by way of disconnected techniques, “although we’ve acquired now a variety of the info…to combine it and make it helpful for sufferers.”
Clinicians make over 100 million specialty referrals yearly within the U.S., but research shows that as many as half are never completed.
Right here’s what we’ve discovered after a 12 months of operation: we constructed a consumer-facing platform that helps people and households discover care suppliers matching their wants, insurance coverage, and site—it now serves over 100 every day customers, together with sufferers, social employees, and discharge planners. However fixing particular person care searches is just half the battle. The institutional referral workflow—hospital to expert nursing facility, SNF to rehab heart, clinic to specialist—stays trapped in fax machines and telephone tag as a result of nobody redesigned the precise coordination course of.
That’s what we’re constructing now. And the query haunting us isn’t why we don’t have higher instruments? It’s why billions in AI funding left the institutional referral workflow just about unchanged?
The Structure of Failure
The reply isn’t about smarter algorithms or shinier dashboards. It’s a couple of basic mismatch between how AI will get deployed and the way care coordination truly works.
Begin with the info layer. One survey found that 69% of primary care physicians say they “always or most of the time” send full referral notes to specialists, but only 34% of specialists report receiving them. Even inside a single hospital system, data routinely vanishes at handoff factors. Matthew Holt skilled this firsthand when his physician’s referral for an echocardiogram merely by no means arrived on the imaging heart, regardless of prior authorization from Blue Defend already being within the system.
However the fragmentation goes deeper than lacking referrals. When Holt’s medical group referred him to a dermatologist, they despatched him to a supplier not coated by his HMO plan, although the EMR had his insurance coverage data and member ID. As he documented, “there’s a enormous alternative right here…most of this knowledge about who I ought to go and see…is all out there. It’s simply not made very apparent in anyone place.” Medical teams, hospitals, and well being plans every preserve their very own techniques, with no real-time integration to reply the straightforward query: Is that this supplier in-network for this affected person’s plan?
Then there’s the inducement downside. A 2022 evaluation of CMS’s Comprehensive Primary Care Plus initiative discovered zero affect on care fragmentation. The researchers concluded that “excessive ranges of fragmented care persist” as a result of fee fashions don’t sufficiently reward suppliers for truly closing referral loops. No person will get paid to chase down a misplaced referral, so referrals slip by way of the cracks.
Lastly, there’s the cussed analog actuality: over half of referral handoffs still happen by fax (56%) or paper handed to patients (45%). We haven’t rewired the workflow; we’ve simply digitized the mess.
Why “AI-Powered” Options Maintain Failing
Given these issues, you’d anticipate AI distributors to swoop in with options. As an alternative, most have made issues worse by treating AI as an add-on slightly than infrastructure.
The everyday method: OCR to scan paper referrals, auto-fill widgets for EHR fields, predictive algorithms for danger scoring. Every software solves a micro-problem whereas ignoring the macro-disaster. As one Innovaccer analysis put it, healthcare AI dangers “repeating previous errors, with disconnected instruments creating inefficiencies as a substitute of options.”
McKinsey’s recent analysis makes the identical level: the widespread adoption of AI-enabled level options “is creating a brand new fragmentation downside.” The trail ahead isn’t extra remoted instruments however “assembling these capabilities right into a modular, linked AI structure.” And with out knowledge interoperability, none of this issues. As Innovaccer bluntly states, “With out clear knowledge, true interoperability is fantasy. With out interoperability, AI is simply costly noise.”
What We’re Constructing—Knowledgeable by 100+ Day by day Customers
Our shopper platform taught us one thing essential: while you give individuals (and the social employees serving to them) a software that truly matches their must out there suppliers in real-time, they use it. Day by day. Over 100 customers now depend on Carenector to navigate post-acute care, rehabilitation providers, and specialist referrals primarily based on their insurance coverage, location, and medical necessities.
However those self same social employees stored telling us, “This works nice once I’m serving to a member of the family search on their very own. However once I must coordinate a hospital discharge or facility switch on behalf of my group, I’m again within the Stone Age.”
That’s why we’re now constructing the facility-facing platform, and we’re doing it otherwise than our first try. We’re not guessing at what hospitals want. We’re testing actively with a choose group of companion services, incorporating steady suggestions from their case managers and discharge planners who’ve seen what works within the shopper product.
The Facility Workflow We’re Constructing
As an alternative of bolting AI onto current chaos, we’re rebuilding the institutional referral course of end-to-end. Care groups enter structured affected person wants—diagnoses, rehab necessities, tools, insurance coverage kind, location—with out sharing any personally identifiable data. No names, no medical report numbers, no birthdates within the preliminary matching section. Our AI engine performs real-time constraint-aware matching primarily based purely on scientific and logistical standards: if a affected person wants expert nursing with PT providers, accepts solely particular Medicare plans, requires Spanish-speaking employees, and have to be inside 10 miles, the system surfaces solely services assembly each criterion concurrently.
As soon as matches are discovered, referring services ship inquiries by way of safe channels with each side seeing the identical standing timeline. We’ve constructed ephemeral messaging threads the place nurses and consumption coordinators talk in real-time, no extra fax-into-void questioning. After a facility accepts, every little thing stays in a single thread: transport scheduling, remedy reconciliation, and insurance coverage verification.
Right here’s what makes this clever: we monitor whether or not placements succeed or fail. Did the affected person get readmitted inside 30 days? Did the power’s providers match what was promised? That end result knowledge feeds again into the matching algorithm, progressively studying which services ship on their commitments.
What We’re Studying in Actual-Time:
We’re constructing and testing the power platform with a choose group of companion hospitals and expert nursing services. This isn’t broadly out there but. We’re iterating quickly primarily based on steady suggestions from these early adopters, and the teachings are reshaping our method:
- Belief requires transparency. Our early facility matching AI was a black field—”belief us, these are good matches.” Adoption amongst our pilot companions was horrible. After we added transparency displaying why every facility matched primarily based on which particular standards, engagement jumped. Case managers need to see the system’s reasoning, not simply its suggestions.
- Privateness is about sensible defaults, not paranoia. We initially constructed maximalist privateness controls that made the workflow clunky. Steady suggestions from our testing companions taught us the fitting method: begin with zero PII within the matching section, services see solely scientific and logistical standards. Share affected person identifiers solely after a facility signifies curiosity and capability, utilizing expiring entry and audit logs. This center path eliminates the referral black gap (services can reply shortly with out regulatory considerations) whereas defending affected person privateness the place it issues most.
- The actual barrier isn’t expertise—it’s adoption technique. One social employee in our pilot stored faxing alongside our beta platform. Three weeks into testing, after seeing 4 profitable placements coordinated by way of our system, she stopped faxing. The tech didn’t change. Her confidence did. We’re studying to measure success not in options shipped however in workflows deserted.
Past Know-how: What the System Wants
Even the best-designed AI gained’t repair referrals alone. The ecosystem wants parallel adjustments:
- Regulatory reform: CMS might require digital referral monitoring as a situation of participation and pay suppliers for profitable referral completion, not only for encounters.
- Requirements adoption: FHIR APIs and HL7 interoperability requirements exist however stay non-obligatory. Obligatory adoption would let totally different distributors’ techniques truly discuss to one another.
- Shared accountability: The most important cultural shift wanted is transferring from “I despatched the referral” to “I confirmed the affected person acquired care.” ACOs and value-based contracts are nudging this route, however slowly.
From Band-Aids to Rebuilt Plumbing
That 82-year-old stroke affected person? She acquired positioned on day seven by way of the social employee’s fax machine. The delay price the hospital $14,000 in extra acute care days. Multiply that throughout hundreds of thousands of referrals yearly and also you glimpse the financial waste embedded in our infrastructure.
The expertise to repair this exists—real-time knowledge pipelines, constraint satisfaction algorithms, safe messaging, end result analytics. What we haven’t had is the need to reassemble these items into coherent workflows as a substitute of piling them onto damaged processes.
Our shopper platform proved that while you rebuild the search and matching layer from scratch, individuals undertake it. Now we’re testing whether or not the identical method works for institutional coordination with a choose group of pilot services. The early alerts from these companions are promising, case managers who use each our merchandise inform us the power platform looks like a pure extension of what they already belief.
The toughest conversations aren’t with engineers, they’re with hospital directors who’ve been burned by “AI options” that promised transformation and delivered costly shelfware. We don’t lead with AI anymore. We lead with a query: When your case supervisor sends a referral, do they know—with certainty—that it was obtained, reviewed, and acted on? For many hospitals, the reply isn’t any. That’s the issue we’re fixing with our pilot companions.
If we succeed, it gained’t be as a result of we constructed a wiser algorithm. It’ll be as a result of we rebuilt the plumbing primarily based on what actual customers informed us they wanted. And if we fail? It’ll in all probability be as a result of we forgot that expertise is rarely the toughest a part of healthcare—belief is.
Naheem Noah is a PhD researcher on the College of Denver and co-founder of Carenector, a healthcare referral platform.
