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Healthcare AI

From point automation to a continuous patient concierge

How AI is rebuilding healthcare operations, one fragmented workflow at a time.

From fragmentation to continuity: healthcare touchpoints converging around patient care

The direct answer

Where is healthcare AI heading? It is moving from isolated task automation toward workflow orchestration around the patient. A dental recall tool, a referral platform and a voice agent may look like different markets today, but they are converging on the same job: ensuring the patient’s next step actually happens. Most vendors still enter through one narrow workflow. The destination is a continuous patient concierge that retains context, completes administrative actions in the PMS or EHR and brings in a human when clinical judgment is required. That is the direction. It is not where most products begin.

Healthcare AI is often discussed as though it were one market. It is not. A dental practice recovering unscheduled treatment, a gastroenterology clinic processing hundreds of referrals, a health system answering patient calls and a surgical practice monitoring recovery are solving fundamentally different operational problems. They use different systems, data models, billing rules, patient journeys and levels of clinical oversight.

Yet these markets are converging around one broader idea: healthcare organizations are moving from isolated automation tools toward a persistent coordination layer that helps patients progress through their entire care journey.

Where most vendors enter today

Most companies begin with one narrow workflow. Over time, those workflows are likely to connect.

The destination is a continuous patient concierge: a system that understands where each patient is in their journey, knows what should happen next, communicates through the appropriate channel, completes administrative actions and brings in a human whenever clinical judgment or personal intervention is required. The industry is not there yet, but nearly every important category in healthcare automation is moving in that direction.

Executive summary

The healthcare automation market can be understood through four layers: systems of record (PMS and EHR), integration infrastructure (normalized data access), workflow applications (individual operational problems) and journey orchestration (workflows coordinated around the patient rather than around the software).

  1. 1

    Systems of record

    PMS and EHR hold authoritative schedule, clinical and financial data

  2. 2

    Integration infrastructure

    APIs and synchronizers normalize fragmented healthcare data

  3. 3

    Workflow applications

    Voice agents, referrals, prior auth, recall and intake automation

  4. 4

    Journey orchestration

    Multiple workflows coordinated around one patient over time

The strongest companies rarely begin at layer 4. They begin with a narrow, measurable workflow and gradually expand.

The market remains fragmented because each specialty has different clinical data, appointment structures, referral processes, insurance requirements, treatment pathways, documentation standards and patient communication needs. That explains why dental, behavioural health, physical therapy, chiropractic, ophthalmology and general medical practices frequently use different software platforms.

The industry’s evolution is incremental. The concierge is the destination, not the typical starting point.

Healthcare’s digital foundation: PMS and EHR

Before understanding healthcare AI, it is necessary to understand the systems underneath it. New AI platforms usually do not replace the system of record. They sit above it and attempt to complete work inside or around it.

In many independent practices, PMS and EHR are bundled into one platform. In larger organizations they may remain separate.

According to the Office of the National Coordinator for Health IT, 95% of U.S. office-based physicians used some form of EHR in 2024 and 91% used a certified EHR.1 Adoption has increased substantially from 2008, when 42% reported using any electronic record system.2 Widespread adoption does not mean healthcare data has become easy to access. It means most information is now digital, but distributed across thousands of implementations, configurations, databases and workflows.

Why healthcare software remains fragmented

Healthcare specialties do not simply use different templates. They operate through different data models and care pathways. There is no legal rule requiring every specialty to use specialty-specific software. The decision is operational: a general platform can sometimes be configured for several specialties, but a specialty product frequently supports the relevant workflow more naturally.

Fragmentation is especially pronounced among smaller practices. ONC found large groups were more likely to use dominant EHR vendors, while smaller practices used a wider variety of systems.2 The ADA Health Policy Institute documents a large, dispersed dental workforce with substantial solo-practice prevalence.3

This has major implications for healthcare AI. A company cannot simply build one integration and assume it can serve the entire market.

The emerging healthcare automation stack

Layer 1: Systems of record

These are the PMS and EHR platforms where the practice’s authoritative information lives: Dentrix, Eaglesoft, Open Dental, athenahealth, eClinicalWorks, Epic, Oracle Health, NextGen, Jane, SimplePractice and many others. They hold the schedule, patient profile, treatment information, insurance data or clinical record. They are difficult to replace because years of operational and clinical history are stored inside them.

Layer 2: Integration and data infrastructure

Companies in this layer solve a different problem: how can a new healthcare application communicate with many different PMS and EHR platforms without building every connection independently?

NexHealth documents developer sandbox access, Synchronizer installation and practice-facing recall campaigns.1314 Sikka markets its ONE API as a normalized layer across hundreds of PMS integrations and positions its platform toward staged autonomous practice operations.15

Layer 3: Workflow applications

These companies automate one operational problem or a related group of problems.

Each category solves a measurable queue: unanswered calls, referral backlogs, authorization delays or unscheduled treatment.

Layer 4: Journey orchestration

This is the beginning of the continuous patient-concierge model.

Major workflow-automation markets

Patient access and voice agents

This category usually begins with inbound communication. The workflow is visible and easy to demonstrate: a practice can call the agent, test it and immediately understand the value of fewer missed calls, shorter hold times, after-hours coverage and more completed bookings.

Assort says its platform handles referrals, scheduling, intake and follow-up across more than 20 specialties and describes agentic patient access as finishing with the appointment booked, insurance verified and the EHR updated. In June 2026 the company announced a $120 million Series C.20

Referral automation

Referral management is a different operational category. A single broken step can prevent the patient from receiving care.

Tennr describes referral and order processing, payer criteria mapping and patient routing across care settings.17 Notable documents referral automation that moves incoming documents toward booked appointments rather than status tracking alone.22

Prior-authorization automation

Prior authorization remains one of healthcare’s most labour-intensive administrative workflows. The 2025 AMA Prior Authorization Physician Survey reported an average of 39 prior-authorization requests per physician per week and approximately 13 physician and staff hours spent on them; 40% of surveyed physicians reported staff who worked exclusively on prior authorization.8

Automation companies gather documentation, complete payer forms, monitor status, prepare appeals and route exceptions to staff.

Patient recall and reactivation

Patient recall is not one workflow. It contains several different markets, from routine preventive recall to conversational treatment coordination.

The first three categories are relatively mature. Conversational treatment coordination is more emerging. Codent says its platform can improve case acceptance by approximately 20%; the company has not publicly disclosed the methodology behind that figure.21
NexHealth documents campaign filters for continuing-care due dates and unscheduled procedures, plus audience-based SMS and email campaigns.14 Codent describes SMS-based treatment coordination synchronized with the PMS.21

Administrative workflow automation

Companies such as TriFetch begin with high-value queues rather than a general patient concierge. TriFetch emerged from stealth in April 2026 and announced a $1.9 million pre-seed round on its website.16 Its approach illustrates an important market pattern: start with a queue that already exists, is already expensive and already delays revenue.

Queues worth owning first

The operational outcome becomes easier to define and purchase than a broad promise to “improve patient engagement.”

Pre- and post-care coordination

Patient communication does not end when an appointment is booked. Commure’s acquisition of Memora Health brought a digital care-navigation platform into a broader healthcare AI portfolio.24 Hyro demonstrates proactive care-gap outreach, appointment offering and patient-record updates.23 These applications are closer to the long-term concierge model because they remain involved after the initial scheduling event.

These applications are closer to the long-term concierge model because they extend beyond the booking event.

Representative market landscape

The following table is illustrative rather than exhaustive. These companies may enter through different workflows, but they are gradually converging on the same position: the execution and orchestration layer above the EHR.

CompanyInitial market wedgeDirection of expansion
NexHealthScheduling, forms, messaging and PMS connectivityCampaigns, recall, developer infrastructure and broader patient experience
Sikka.aiNormalized dental and retail-healthcare dataGoverned autonomous practice operations
Codent AIDental treatment-plan follow-upCase acceptance and ongoing treatment coordination
TriFetchReferrals, prior authorization and specialty-clinic administrationEnd-to-end front-, middle- and back-office automation
TennrReferral and document processingPatient orchestration across payer and provider workflows
Assort HealthAI voice and patient accessReferrals, intake, scheduling and follow-up across the journey
NotableEnterprise healthcare workflow automationAI-agent workforce across access, revenue cycle and care operations
ArteraPatient communicationCross-channel AI orchestration with human escalation
Luma HealthPatient access and engagementOperational AI connecting access, intake, follow-up and payments
Commure/MemoraCare navigation and patient engagementBroader clinical, operational and financial automation
HyroConversational patient accessProactive outreach, care-gap closure and post-visit workflows

Company descriptions reflect each vendor’s published product positioning as of July 15, 2026. See company and product sources below.

Artera describes connecting phone, text, email and webchat into one patient conversation and coordinating AI agents with human teams when necessary.18 Luma Health frames its strategy as operational AI that moves from automation to orchestration across access, intake, engagement and payments.19 Notable documents AI agents across patient access, revenue cycle, care operations and contact centres.22

Why narrow workflows are winning today

The long-term concierge vision is broad, but current companies usually enter through a focused problem. There are four practical reasons.

  1. 1

    The value is measurable

    Calls answered, referrals processed, slots filled, treatment recovered

  2. 2

    The workflow can be constrained

    Allowed actions, escalation rules and success metrics are definable

  3. 3

    Clinical risk stays limited

    Administrative work first; FDA CDS guidance shapes clinical expansion

  4. 4

    Integrations can be scoped

    A referral product needs fewer objects than a universal concierge

It is harder to assign a budget to “better patient continuity” unless continuity connects to a measurable outcome. Scheduling and document processing are primarily administrative; FDA clinical-decision-support guidance clarifies that some patient-facing software functions may fall under medical-device oversight.612
The broader the workflow, the greater the integration burden.

Why the continuous concierge is still the likely destination

The fact that companies begin narrowly does not mean the broader vision is incorrect. It means the industry is building toward it incrementally. A patient does not experience healthcare as separate software modules. The patient experiences one relationship.

The software industry has historically divided this journey among marketing platforms, call systems, scheduling apps, PMS/EHR, intake tools, referral systems, billing, portals, messaging and recall products.

The patient is the same, but the context is repeatedly lost between systems. The next generation of platforms will try to preserve that context. A continuous patient concierge would know why the patient contacted the practice, what care they are seeking, which appointment is relevant, what instructions they received, whether forms are missing, why treatment did not proceed, which channel they prefer and when they should not be contacted.

Its purpose would not be to communicate constantly. Its purpose would be to ensure continuity.

What the future concierge will actually do

The future product is unlikely to be one chatbot with unrestricted access to every part of healthcare. It will be an orchestrated system with multiple specialized capabilities across the care journey.

After a missed visit, the practice receives structured context rather than a simple no-show status.

The human does not disappear

A recurring mistake in healthcare AI is assuming that escalation is an edge case. In reality, many high-value workflows depend on human judgment. Some patient questions are administrative. Some require a trained treatment coordinator. Some require a clinician.

Questions patients actually ask

The strongest systems detect urgency, route to humans with full context and resume the workflow afterward.25

AI handles volume and continuity. Humans handle judgment, empathy and exceptions.

After the human responds, the agent can continue coordinating the journey.

Compliance and safety become product architecture

Healthcare automation cannot treat compliance as a certification badge added after development. When an AI vendor creates, receives, maintains or transmits protected health information on behalf of a covered healthcare organization, it may operate as a HIPAA business associate.11 Cloud and subcontractor arrangements generally require appropriate business-associate agreements, safeguards and risk-management processes.5 Automated calls and texts also create separate communication-law obligations; FCC rules strengthen patients’ ability to revoke consent through reasonable methods.7 This section presents a governance framework, not legal advice.

  1. 1

    Administrative actions

    Scheduling, forms, directions, reminders and approved educational materials

  2. 2

    Protocol-controlled actions

    Structured check-ins, warning-sign detection and escalation routing

  3. 3

    Human or clinical judgment

    Diagnosis, treatment changes, emergencies and complex disputes

The most trustworthy agent will not be the one that answers every question. It will be the one that reliably knows when it should not answer.

The real challenge is not conversation, it is orchestration

Language models have made it much easier to produce natural conversations. That does not mean the healthcare workflow is solved. A reliable healthcare agent must coordinate patient identity, data permissions, appointment rules, provider availability, insurance requirements, communication history, human availability, escalation deadlines, PMS or EHR writeback and outcome tracking.

Government interoperability policy, including the ONC Cures Act Final Rule, has pushed certified health IT developers toward standards-based FHIR access.49 ONC research on digital-health companies using EHR APIs supports the argument that standards help but do not eliminate integration friction.10 NexHealth and Sikka reduce part of the technical fragmentation by exposing normalized APIs.1315

Why integrations still fail in practice

Healthcare AI needs both technical integration and operational understanding of how the practice actually works.

The market will remain niche-specific

The underlying models may become general, but the workflows will remain specialized. The likely winners will combine horizontal infrastructure with deep vertical knowledge.

Shared infrastructure may converge around voice, messaging, identity, integration, human handoff, auditability and workflow engines.

How founders should enter the market

Examples: unscheduled dental treatment, a GI referral that never reaches scheduling, a surgical patient missing pre-operative information, or a cancelled patient who could fill an open slot.

The best early products do not merely report that a problem exists. They take responsibility for progressing the workflow.

How healthcare practices should evaluate AI automation

Practices should look beyond a polished demo. A serious evaluation should examine integration depth, workflow completion, human involvement, clinical boundaries, compliance and economics.

Ask whether the system merely identifies work, or continues until the workflow is resolved.

What the industry is likely to look like next

  1. 1

    Voice becomes a feature

    Combined with text, email, forms, scheduling and human handoff

  2. 2

    Response → proactive action

    Monitor referrals, no-shows, care gaps and authorization status

  3. 3

    Patient-level memory

    Each patient treated as an evolving case, not a campaign segment

  4. 4

    Human-in-the-loop remains central

    Safe escalation, full context and workflow resumption

  5. 5

    Outcome pricing grows

    Appointments recovered, referrals completed, treatment finished

  6. 6

    Infrastructure and apps overlap

    NexHealth, Sikka and EHR vendors compete and enable simultaneously

  7. 7

    Concierge emerges from connection

    Independent workflows share context until the patient feels one relationship

Luma Health’s automation-to-orchestration framing is one of the clearest industry articulations of this shift.19 The continuous concierge will probably not appear as one product launch.

The central opportunity

The largest opportunity in healthcare automation is not simply reducing labour. It is preventing patients from disappearing between steps.

Where patients are lost

A continuous patient concierge preserves the connection between the patient and the practice.

Every patient should feel that someone from the practice is looking after their next step, even when they are not physically inside the practice.

Conclusion

Healthcare automation is moving through a predictable progression. The first generation digitized records. The second automated individual tasks. The third is automating complete workflows. The next generation will connect those workflows around the patient.

The broad concierge vision should not be dismissed because it is difficult to deliver today. Difficulty is not evidence that the direction is wrong.

The continuous patient concierge is not the best starting point for most healthcare AI companies, but it is increasingly becoming the destination.

The companies most likely to reach it will begin by solving one broken, measurable and specialty-specific workflow extremely well, then connect the next workflow until the practice no longer sees a collection of automations and the patient no longer experiences a collection of disconnected systems. Instead, the patient experiences one continuous relationship with the organization responsible for their care.

Frequently asked questions

What is healthcare workflow automation?

Healthcare workflow automation is the use of software or AI to complete operational processes such as scheduling, referrals, insurance verification, prior authorization, patient follow-up, intake and EHR updates with reduced manual staff effort.

How is workflow automation different from a voice agent?

A voice agent is a communication interface. Workflow automation is the underlying process that completes the work. A voice agent may answer a call. A workflow system identifies the patient, checks eligibility, finds availability, books the appointment, sends forms and updates the EHR.

What is the difference between a PMS and an automation platform?

The PMS is generally the operational system of record. The automation platform reads information from the PMS, acts on that information and writes the outcome back when supported.

Why are healthcare AI companies niche-specific?

Each specialty has different data, terminology, billing, scheduling and patient journeys. The underlying AI technology may be shared, but reliable workflow automation requires specialty-specific logic.

Are NexHealth and Sikka PMS platforms?

Not primarily. They generally act as integration, data and application layers above existing PMS systems. NexHealth is particularly strong in patient-facing scheduling and front-office workflows. Sikka focuses heavily on normalized healthcare data, analytics and increasingly autonomous practice operations.

Is patient reactivation already a mature market?

Basic recall campaigns and automated reminders are mature. Conversational treatment coordination, personalized objection handling, multichannel follow-up, human escalation and closed-loop tracking through completed treatment are less mature.

What is a continuous patient concierge?

A continuous patient concierge is a persistent coordination layer that helps the patient before, between and after appointments, retains relevant context, completes administrative actions and brings in practice staff or clinicians when human judgment is required.

Will the patient concierge replace front-desk and clinical teams?

No. It can take over repetitive coordination and communication. Humans remain responsible for clinical judgment, complex decisions, empathy-intensive situations and exceptions.

What is the best way to build such a product?

Begin with one specialty, one patient cohort, one broken workflow and one measurable next step. Build human escalation and reliable system-of-record integration before expanding across the care journey.

Written by Glace

Glace helps independent healthcare practices connect patient acquisition with responsive intake, AI agents, scheduling and measurement tied to booked appointments.

Meet the team

Research notes

This article uses government data, industry-association research, official vendor documentation and company-published product information accessed on July 15, 2026. Factual claims about EHR adoption, prior-authorization burden, interoperability policy, HIPAA obligations, FDA clinical-decision-support boundaries and FCC consent rules rely on independent foundational sources listed below.

Vendor pages are used only to describe what a company says its product can do. Performance figures, customer counts, financing announcements and operational metrics are introduced as company-reported unless an independent study is cited. The compliance section presents a governance framework, not legal or medical advice. FCC and HIPAA requirements continue to evolve; practices should evaluate vendors with qualified counsel.

References

Web sources accessed July 15, 2026.

Independent foundational sources

  1. Office of the National Coordinator for Health Information Technology. Office-based Physician Electronic Health Record Adoption. healthit.gov
  2. Office of the National Coordinator for Health Information Technology. Office-based Physician Electronic Health Record Adoption, 2008–2024. healthit.gov
  3. American Dental Association Health Policy Institute. U.S. Dentist Workforce — 2025 Update. ada.org
  4. Office of the National Coordinator for Health Information Technology. ONC’s Cures Act Final Rule. healthit.gov
  5. U.S. Department of Health and Human Services. Guidance on HIPAA & Cloud Computing. hhs.gov
  6. U.S. Food and Drug Administration. Clinical Decision Support Software — Guidance for Industry and Food and Drug Administration Staff. fda.gov
  7. Federal Communications Commission. Report and Order on Robocall and Robotext Consent Revocation. FCC 24-24. fcc.gov
  8. American Medical Association. 2025 AMA Prior Authorization Physician Survey. ama-assn.org
  9. Office of the National Coordinator for Health Information Technology. Hospital Use of APIs to Enable Data Sharing between EHRs and Third-Party Technology. healthit.gov
  10. Office of the National Coordinator for Health Information Technology. Digital Health Company Experiences Using EHR APIs. healthit.gov
  11. U.S. Department of Health and Human Services. Business Associates. hhs.gov
  12. U.S. Food and Drug Administration. Clinical Decision Support Software — Frequently Asked Questions. fda.gov

Company and product sources

  1. NexHealth. Getting Started with NexHealth. NexHealth API Documentation. docs.nexhealth.com
  2. NexHealth. Automated Recalls and Sending Email and Text Campaigns to Patients. NexHealth Help Center. help.nexhealth.com
  3. Sikka Software. Sikka ONE API. sikka.ai
  4. TriFetch. Office Automation for Specialty Clinics. trifetch.ai
  5. Tennr. Patient Orchestration Platform. tennr.com
  6. Artera. AI Agent Platform. artera.io
  7. Luma Health. From Automation to Orchestration: How Operational AI Is Reshaping Healthcare Operations. lumahealth.io
  8. Assort Health. Assort Health Raises $120 Million Series C to Scale Largest Deployment of AI Agents for the Patient Journey. assorthealth.com
  9. Codent AI. AI Treatment Coordinator. codentai.com
  10. Notable Health. AI-Powered Patient Access Automation. notablehealth.com
  11. Hyro. AI Agent for Care-Gap Closure. hyro.ai
  12. Commure. Commure Acquires Memora Health to Enhance Intelligent Care Navigation. commure.com
  13. Hyro. Responsible AI Agents: 5 Healthcare Tasks You Can Automate. hyro.ai
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