Thursday, July 2, 2026

< + > Optimizing End-to-End Revenue Cycle Workflows with Health IT Solutions and AI

It is a well-understood fact that the world of healthcare has an incredibly high burnout and turnover rate. A 2023 study from the CDC found that the burnout rate increased to 46% and the turnover rate increased to 44%. As such, it is vital that we do everything we can to make working in healthcare a better experience. It’s impossible to talk about all of healthcare at once, so today we are going to narrow our focus down to optimizing revenue cycle workflows.

We reached out to our brilliant Healthcare IT Today Community to ask — how are health IT solutions and AI being used to optimize end-to-end revenue cycle workflows, from patient access through final payment? Below are their responses.

Troy Wasilefsky, Chief Customer Officer at Greenway Health
Health IT and AI are transforming revenue cycle management in waves—first through automation that reduced administrative burden, and now through agentic AI that not only assists staff but actively performs key tasks, accelerating workflows and improving financial outcomes. At the same time, the industry is shifting from fragmented point solutions to more unified, AI-powered platforms that can manage the full revenue cycle end to end.

The next transformation goes further, embedding revenue cycle capabilities directly into the patient and physician journey. Instead of operating after the fact, these functions increasingly run in real time—alongside scheduling, patient engagement, and even within the clinical encounter. The result is a faster, smarter RCM model that is more tightly integrated with care delivery.

Karly Rowe, President and Provider at Inovalon
Healthcare organizations are at an inflection point. Administrative burden is rising, margins are tightening, and revenue cycle teams are being asked to do more with less. AI is no longer a future capability. It is becoming foundational to how revenue cycle operations function.

Across the end-to-end revenue cycle, from patient access and eligibility verification through charge capture, claims submission, and payment, AI is helping reduce manual work, accelerate timelines, and prevent avoidable errors. More advanced, agentic AI can anticipate payer requirements, identify missing or inconsistent data before submission, flag denial risk, and generate appeal documentation, all while keeping clinicians and revenue cycle teams in control.

The reality is that no individual or team can keep pace with the growing complexity of payer rules, regulatory requirements, and documentation standards. When AI is informed by data that spans clinical workflows, billing systems, and payer interactions, organizations can move from reactive revenue cycle management to a more predictive and proactive model. That shift is where the greatest financial and operational gains are being realized.

The organizations seeing the strongest results are not simply automating tasks. They are embedding AI directly into workflows to support better decision-making. When deployed thoughtfully, AI enables revenue cycle and clinical teams to spend less time navigating administrative friction and more time focusing on accuracy, outcomes, and patient experience. The future of revenue cycle is not fully automated. It is intelligently assisted.

Merideth Wilson, Financial Health General Manager at TruBridge
Health IT solutions and AI are transforming revenue cycle management from reactive to predictive. By applying proprietary data and decades of payer insight, providers can identify and stop deniable claims before they are created. This upfront alignment of patient access, coding, and payer requirements helps prevent $50–$60 per claim in costly rework and accelerates final payment.

Chris Gervais, Chief Technology Officer at CodaMetrix
AI is optimizing the revenue cycle by moving high-quality decisions earlier in the workflow, closer to where clinical care is documented. When coding is both automated and reliable enough to support straight-to-bill submission, it reduces downstream friction, rework, and denials. That shift doesn’t just improve efficiency, it creates a more predictable and scalable financial performance model for our healthcare systems.

Cassandra Skinner, Value Realization Partner at Xsolis
Health IT and AI are increasingly translating the complexity of the patient lifecycle into a clear narrative that surfaces opportunity and process gaps. The real potential lies in removing siloes across the care continuum — creating end-to-end transparency supports patient advocacy post-discharge and enables more effective decision-making between payers and providers.

Patty Hayward, General Manager of Healthcare and Life Sciences at Talkdesk
Health systems are moving beyond optimizing individual revenue cycle steps and instead orchestrating the entire journey from patient access to final payment. AI is enabling real-time decisions across scheduling, authorization, documentation, and collections, reducing friction and preventing revenue leakage before it occurs. The organizations winning today are treating the revenue cycle as a coordinated experience, not a back-office function.

Ted Ferrin, SVP, Payments Innovation at Zelis
AI is helping organizations see where revenue is at risk early enough to act on it. The issue for many providers is not a lack of data, but that too much of it sits in disconnected workflows across patient access, claims, and payment. When Health IT and AI bring those signals together, revenue cycle teams can identify friction sooner, prioritize the areas that need attention most, and take action before problems result in denials, payment delays, avoidable rework, or lost cash flow.

That is the value of end-to-end optimization. It is not automation for its own sake. It is about giving revenue cycle teams the visibility they need to focus limited staff resources on what matters and to move from reactive problem-solving to proactive decision-making. From eligibility and authorization through reimbursement and final payment, better, unified insights help organizations reduce blind spots, accelerate payment, and improve financial performance.

Provider groups seeing the most value are the ones using AI to turn digital workflows into clearer priorities, faster decisions, and more targeted action, not just adding another layer of technology. Where teams still need to hunt across systems to understand why payment is delayed or where revenue is leaking, the revenue cycle is still disconnected. The more teams can unify their data and payments, the more intelligent and simplified their workflows can become. The goal is faster, clearer, more connected decision-making that helps protect margin and reduce administrative friction.

Brandi Meyers, Vice President, EHR and RCM at Healthcare IT Leaders
We’re seeing a meaningful shift where AI is no longer being layered on top of revenue cycle workflows but is embedded directly within EHR platforms like Epic and Oracle Health. That integration matters because it brings intelligence into the natural workflow, whether it’s improving coverage accuracy at scheduling, guiding documentation for coding, or predicting denials before claims are submitted. The real impact isn’t just automation, it’s reducing friction across the entire lifecycle by making smarter decisions at the point of work.

Sashi Padarthy, Head of Strategy and Growth – Health Systems Business at Cognizant
AI has stopped being a departmental tool and has become the connective tissue of the entire revenue cycle. At patient access, AI is automating eligibility verification, predicting prior authorization requirements, and flagging documentation gaps before a patient ever leaves the building. Mid-cycle, natural language processing tools are reading clinical documentation in real time and surfacing coding opportunities that human reviewers would catch days later. On the back end, predictive denial management is protecting revenue before claims go out the door rather than chasing it after the fact.

Across our client base, our data shows that denials are almost evenly distributed across the front-end, mid-cycle, and back-end of the revenue cycle, which proves exactly why AI needs to operate across the entire continuum and not just solve one piece of the problem.

The organizations pulling ahead are not just implementing AI tools. They are fundamentally redesigning workflows around them, and that is where the real return on investment lives. Think about how the financial services industry transformed fraud detection. They did not just add fraud alerts at the point of transaction. They rebuilt their entire data infrastructure around real-time intelligence. Healthcare revenue cycle is at that same inflection point right now.

Ryne Natzke, Chief Commercial Officer and General Manager at TrustCommerce, a RevSpring Company
Health IT solutions and AI are helping transform the revenue cycle by connecting workflows into a more unified, personalized experience from the first search online for a doctor through final payment. This includes setting clearer cost expectations before care, supporting digital payment options, and ensuring payments are accurately tracked and reconciled.

Healthcare doesn’t have a demographic, and everyone is a patient, so it’s critically important to make sure you are providing the right information, at the right time, and using the right communication method to create a seamless experience while also minimizing your costs. Without AI and digital solutions, this would be impossible to do at any sort of scale, and it’s exciting to see this new technology drive better financial outcomes and a better patient experience.

John Waters, Director, Revenue Cycle Product at CliniComp
Organizations need analytical solutions that allow for big-picture visibility on financial performance KPIs and maximizing revenue. The differentiation comes with an ability to pre-emptively identify problems before they arise via the data and have the drill-down capability to address them before they negatively impact an organization’s financial health.

Robbie Hughes, Chief Product Officer at Health Catalyst
There’s a lot of momentum around applying AI in the revenue cycle, but most of it is still happening at the task level rather than the system level. Organizations are using AI to automate parts of patient access, coding, and billing, but the real opportunity is designing and connecting those workflows end to end.

When AI is applied at the system level, it helps reduce administrative friction, improve data handoffs, and prevent downstream issues like denials before they occur. The organizations seeing meaningful results are the ones using AI to align workflows, data, and decisions across the full revenue cycle—treating AI as part of the operating system— rather than optimizing individual steps in isolation.

Matt Seefeld, CEO at MedEvolve
Health IT and AI are being applied across the entire revenue cycle, but most solutions today are still optimizing tasks rather than reducing the number of interactions it takes to get paid. That’s the core issue.

The revenue cycle is not a single workflow. It is a series of “touches” across patient access, coding, billing, and payer follow-up. Every touch introduces cost, delay, and risk. AI is improving specific steps—automating eligibility checks, prioritizing work queues, and identifying denial risk—but it often does not complete the loop. It accelerates a touch, but doesn’t eliminate the need for the next one. That’s why organizations are seeing a disconnect. Denials continue to rise, yet many are ultimately overturned. The outcome is payment, but only after multiple interactions, rework, and follow-up.

Operational benchmark data shows that as much as half of revenue cycle work may be tied to touches that do not change the financial outcome, and the majority of open claims often do not require action at all in a given moment. The next phase of AI is not about doing more work faster. It’s about reducing the number of touches required across the entire workflow and closing the loop from patient access through final payment.

Such great insights here! Huge thank you to everyone who took the time out of their day to submit a quote to us! And thank you to all of you for taking the time out of your day to read this article! We could not do this without all of your support.

How do you think health IT solutions and AI are being used to optimize end-to-end revenue cycle workflows, from patient access through final payment? Let us know over on social media, we’d love to hear from all of you!



< + > Navigating EMR Implementation in Saudi Arabia: Overcoming Challenges to Realize Vision 2030

The following is a guest article by Dr. Rohin Rameswarapu, Physician and Senior Application Specialist at InterSystems

Introduction

Electronic Medical Records (EMRs) are at the heart of Saudi Arabia’s healthcare transformation. Aligned with the Kingdom’s Vision 2030, EMRs aim to streamline workflows, improve clinical outcomes, and bolster public health systems. While the benefits are clear, implementing EMRs in tertiary hospitals across the Kingdom presents complex challenges from interoperability and change resistance to data security and infrastructure readiness.

Key Challenges in EMR Implementation

1. Resistance to Change

Clinicians accustomed to paper-based workflows may resist EMR adoption, especially where system usability is poor or perceived as cumbersome. Generational differences, lack of localized customization, and inadequate training exacerbate the issue.

2. Interoperability Complexities

Vision 2030 envisions integrated health data systems, yet achieving interoperability is hindered by inconsistent data formats, poor adherence to standards like SNOMED or ICD, and challenges in linking with platforms such as SHIE and NPHIES.

3. Data Privacy and Cybersecurity

With the Saudi Data and Artificial Intelligence Authority (SDAIA) and the new Personal Data Protection Law (PDPL) mandating strict controls, EMRs must be fortified against cyber threats while remaining agile to comply with evolving legal frameworks.

4. Infrastructure Limitations

Legacy hospital systems struggle with outdated hardware, insufficient connectivity, and limited scalability. These constraints delay data exchange and reduce system reliability, especially in high-volume tertiary settings.

Best Practices for Success

1. Change Management & Training

Strong executive sponsorship, transparent communication, and robust training programs are essential. These efforts reduce friction, improve adoption, and ensure clinicians can leverage EMRs for clinical accuracy and workflow optimization.

2. Designing for Interoperability

Standards like HL7 and FHIR should be integrated from day one. Seamless interoperability not only reduces redundant tests but also enables real-time collaboration across healthcare entities and mobile platforms.

3. Fortifying Data Security

EMRs must be cloud-enabled and ISO 27001-compliant, featuring encryption, penetration testing, and dynamic access controls. The National Health Information Center’s (NHIC) guidance should inform all implementation strategies.

4. Infrastructure Modernization

High-speed MPLS networks, disaster recovery capabilities, and remote access support are critical. Modern infrastructure empowers clinicians with real-time data access while ensuring resilience and compliance.

Strategic Recommendations

  • Select EMRs aligned with national digital health goals and capable of AI integration for predictive analytics
  • Involve stakeholders early and establish cross-functional implementation teams
  • Develop continuous feedback mechanisms for iterative system improvement
  • Build vendor partnerships that ensure long-term support and knowledge transfer

Conclusion

EMR implementation in Saudi Arabia is more than a technological upgrade—it’s a foundational step toward a patient-centric, digitally empowered health system. Through proactive strategies that address change management, interoperability, security, and infrastructure, the Kingdom can unlock the full potential of EMRs and deliver on the promise of Vision 2030.

About Dr. Rohin Rameswarapu

Dr. Rohin Rameswarapu, MD, is a Physician and Senior Application Specialist at InterSystems with over a decade of experience in EMR implementation across the Middle East. His work bridges clinical expertise with digital health transformation.



< + > InStride Announces $30M in Series C Funding | Frontier Health Raises £10M

Check out today’s featured companies who have recently raised a round of funding, and be sure to check out the full list of past healthcare IT fundings.


InStride Announces $30M in Series C Funding

InStride, the most trusted, insurance-covered specialty program for young people living with complex anxiety, OCD, and related disorders, raised a $30M Series C from new strategic investors Echo Health Ventures and FMZ Ventures, with continued participation from existing backers: .406 Ventures, Valtruis, General Catalyst, and Mass General Brigham Ventures. The capital will fuel InStride’s expansion into new markets while deepening access in existing ones, ensuring more families can get the high-quality specialty care they need. InStride continues to demonstrate strong financial performance while sustaining the clinical quality that defines its model.

“We set out to prove that the highest-quality specialty care could also be the most scalable — and the data shows that’s exactly what we’ve built. This capital lets us go deeper in existing markets and broader into new ones, and Echo Health Ventures and FMZ Ventures are ideal partners for this next chapter alongside our existing investors. Clinical quality has always been at the center of everything we do, and that remains our true north,” said John Voith, Co-Founder and CEO at InStride.

The Most Trusted Program

Built on evidence-based care and expertise from the nation’s leading psychiatric hospital, our program pairs every young person with a family-centered team—including a psychiatrist, therapist, and exposure coach. Working alongside caregivers, schools, and pediatricians, these clinicians are supported by domain-specific AI designed to reinforce best practices, reduce variation, and scale consistent, high-quality care—while keeping clinical decision-making and relationships firmly in human hands.

Today, InStride operates in 17 states and has served 5,000+ patients, with national expansion underway…

Full release here, originally announced June 15th, 2026.


Former Palantir Healthcare Head Raises £10M for NHS AI Agent Startup

Frontier Health is Leveraging AI to Carry Out Administrative Tasks Which Burden the NHS

A London-based startup founded by a former Palantir healthcare executive who worked in NHS hospitals during Covid has raised £9.7M in a funding round.

The funding round in Frontier Health was led by Atomico, the European VC firm, with participation from XYZ Venture Capital and Firstminute Capital.

Frontier Health, which has raised £11.9m in total, is leveraging AI to carry out administrative tasks which are burdening patient care in the NHS.

The startup, founded in 2024, points to projected figures showing healthcare systems facing a 10m worker shortfall by 2030, saying that fixing the administrative burden behind patient care can reduce this worker shortfall. It was founded by Rachel Finegold, who worked as Palantir’s healthcare lead at 40 NHS hospitals during the COVID-19 pandemic.

She said she spent years working alongside NHS teams and saw first-hand how administrative bottlenecks impact patient outcomes.

Finegold, its CEO, told The Times, “There physically weren’t enough administrators to support this integral machinery that needs to happen to keep patients moving through the system and to get patients their care.”

Frontier Health has developed an AI agent, called Juno…

Full release here, originally announced June 18th, 2026.



Wednesday, July 1, 2026

< + > Sherpas Healthcare Solutions Relieves the Burden of Release of Information Requests

Health care organizations still have to handle thousands of patient record requests manually. In addition to individual records requested by doctors, patients, lawyers, and others, there is a constant stream of requests for hundreds of records at a time for audits and quality reviews—and a lot of them still come in by fax, telephone, or postal mail.

Sherpas Healthcare Solutions is a medical record retrieval company that takes on the burden of fulfilling these requests. In a recent video interview, we had a chance to chat with Kaylan Blice-Mullins, Senior Director of Provider Relations at Sherpas Healthcare Solutions, and Brian Sitongia, Medical Records Manager at one of their clients, Wills Eye Hospital, to learn more about how Sherpas Healthcare Solutions is helping relieve the burden of all these requests.

Sitongia describes Wills as the oldest and most highly rated eye care facility in the United States, with seven or eight specialty clinics. Before hiring Sherpas, each record request would either require personal attention from Sitongia or a visit to the facility from a requester, who in turn would require a tutorial on how to get into their medical records.

Now, a single technician from Sherpas does the work, using his own login account. Blice-Mullins says any provider can benefit from this service. Plus, she hinted at a new tool they are rolling out which will speed up request handling tremendously, reducing response times from hours to minutes.

When it comes to how working with Sherpas has changed Sitongia’s workflow, he said that at most he has to upload the PDF to the Sherpas portal and he’s done. The requester is billed, and the provider pays nothing. That’s right, Sherpas offers this service at no cost to the provider organization.

Currently, Sherpas doesn’t handle individual patient requests from doctors at Wills Eye Hospital, but Sitongia hopes to transfer that job to Sherpas as well.

Check out our interview with Sherpas Healthcare Solutions and Wills Eye Hospital to learn more about how they’re improving the process of ROI requests.

Learn more about Sherpas Healthcare Solutions: https://scanningsherpas.com/

Learn more about Wills Eye Hospital: https://www.willseye.org/

Listen and subscribe to the Healthcare IT Today Interviews Podcast to hear all the latest insights from experts in healthcare IT.

And for an exclusive look at our top stories, subscribe to our newsletter and YouTube.

Tell us what you think. Contact us here or on Twitter at @hcitoday. And if you’re interested in advertising with us, check out our various advertising packages and request our Media Kit.

Sherpas Healthcare Solutions is a proud sponsor of Healthcare Scene.



< + > This Week’s Health IT Jobs – July 1, 2026

It can be very overwhelming scrolling through job board after job board in search of a position that fits your wants and needs. Let us take that stress away by finding a mix of great health IT jobs for you! We hope you enjoy this look at some of the health IT jobs we saw healthcare organizations trying to fill this week.

Here’s a quick look at some of the health IT jobs we found:

If none of these jobs fit your needs, be sure to check out our previous health IT job listings.

Do you have an open health IT position that you are looking to fill? Contact us here with a link to the open position and we’ll be happy to feature it in next week’s article at no charge!

*Note: These jobs are listed by Healthcare IT Today as a free service to the community. Healthcare IT Today does not endorse or vouch for the company or the job posting. We encourage anyone applying to these jobs to do their own due diligence.



Tuesday, June 30, 2026

< + > The Hidden Link Between Legacy Data and Patient Safety

When a health system transitions from a legacy system, like an EHR, the old records linger as disconnected data islands when not properly planned for. Managing that data does not have to be an IT headache and leveraged properly, that data can significantly improve patient safety risk.

Healthcare IT Today sat down with Justin Campbell from RLDatix to discuss legacy data management. The conversation explored how modernizing data archives is tightly tethered to reducing clinician burden and improving patient safety outcomes.

Key Takeaways from the Legacy Data Management and Patient Safety Conversation with Justin Campbell

  • Legacy systems contribute to burnout. Clinicians wasting time fishing through multiple decommissioned databases is a cause of frustration and fatigue.
  • Incident reporting needs historical context. Without immediate access to legacy records, providers cannot truly understand or prevent patient safety issues.
  • AI uncovers the missing reason. Mining incident reports and legacy data with artificial intelligence helps pinpoint systemic issues that may have been missed due to the low frequency of incidents.

Legacy Data Contributes to Burnout

Keeping a dozen decommissioned systems alive is a massive technical debt. More importantly, it is a daily friction point for clinicians. When doctors have to hunt for old records, care slows down.

“It’s contributed to clinician burnout, switching between multiple systems,” noted Campbell.

Providers need that history at their fingertips. If they are forced to fish around for records in different silos, it’s a barrier to providing safe patient care. Consolidating that legacy portfolio into a single accessible archive removes the friction.

Finding the Root Cause with AI

Storing incident reports is only the first step. The real value lies in connecting those reports to the broader historical patient record. This is where practical artificial intelligence can do the heavy lifting.

By bridging the gap between incident reporting and archived EHR data, organizations can let the data do the detective work.

“It’s about figuring out the why,” Campbell explained. “That’s the missing part, and that’s what AI is particularly adept at”.

Analyzing these combined datasets allows leaders to benchmark safety profiles before and after digital transformations. It turns static archives into active risk mitigation tools.

The Bottom Line

The connection between legacy data management and incident reporting is clear. Leaving historical data scattered across forgotten systems creates blind spots in patient care. Bringing that data together creates a foundation for actionable insights. Health IT leaders who treat their legacy estate as a safety asset will be better positioned to protect both their patients and their staff.

What Healthcare IT Leaders Are Asking

How does legacy data archiving and management impact patient safety?
When legacy data is scattered across multiple decommissioned systems, clinicians lack a complete historical view of the patient. This missing context can lead to clinical blind spots. Consolidating records into a single archive ensures providers have the information they need to make safe clinical decisions quickly.

Why apply AI to incident reporting and legacy data?
Traditional incident reporting captures that an event occurred, but it often misses the underlying cause. Applying AI to a combined dataset of incident reports and legacy records helps uncover hidden patterns. This allows organizations to identify specific workflow failures and address them proactively.

What is the hidden cost of maintaining multiple legacy EHRs?
Beyond the obvious licensing and server maintenance expenses, keeping multiple legacy systems running contributes significantly to clinician fatigue. Forcing providers to log into different interfaces to piece together patient histories drains their time and energy. Modern archiving solutions reduce this cognitive load while keeping the organization legally compliant.

Learn more about RLDatix at https://www.rldatix.com/

Listen and subscribe to the Healthcare IT Today Interviews Podcast to hear all the latest insights from experts in healthcare IT.

And for an exclusive look at our top stories, subscribe to our newsletter and YouTube.

Tell us what you think. Contact us here or on Twitter at @hcitoday. And if you’re interested in advertising with us, check out our various advertising packages and request our Media Kit.

RLDatix is a proud sponsor of Healthcare Scene.



< + > Reducing Hold Times and Staff Burnout with AI Call Automation

At many health centers, plain old telephone service (POTS) is still one of the primary forms of interaction with patients outside of office visits. In a recent interview with Tracy Causey, CEO of Capital Area Health Network, he shares how their three sites, servicing about 17,000 patients, used AI to streamline patient interactions.

When all calls were handled manually, results were so bad that they replaced their phone system several times, with no improvements. Many patients weren’t answering their phones, calls were missed or dropped, others would crave contact and keep staff on the phone for a long time. Average wait times were 30-40 minutes, and one long wait led to a negative online review which was problematic for the organization.

As an eClinicalWorks site, the health system decided to try healow Genie to handle calls. It was a simple integration, and worked “out of the box.” The approximate 400 calls they get each day are now spread out, as patients take advantage of 24/7 availability. And when a call does require staff, healow Genie gets a live agent person on the phone within a minute and 20 seconds.

More importantly healow Genie handles about 80% of all calls with no staff interaction, answering the phone within 14 seconds versus previous wait times which regularly reached 30-45 minutes.

Although some staff were worried that the AI system would replace them, they found instead that staff had more time for important tasks outside of answering the phones. When healow Genie does connect a patient to a live agent, the agent can handle a call faster because healow Genie shares basic information with the live agent about the issue before connecting the patient.

As for the patients, they took a little while to accept the system. Causey says it was actually less popular among young patients as well as the elderly. But he explained to patients that all institutions are moving in the direction of AI-handled calls.

healow Genie helps Capital Area Health Network with appointment scheduling, medication refills, and simply providing information about what services the system provides or what a patient’s own treatment plan is. Causey advises managers who install such systems that the staff need education in order to accept the system.

Check out our interview with Capital Area Health Network to learn more about their implementation of the healow Genie call center agent.

Learn more about Capital Area Health Network: https://cahealthnet.org/

Learn more about eCW: https://www.eclinicalworks.com/

Listen and subscribe to the Healthcare IT Today Interviews Podcast to hear all the latest insights from experts in healthcare IT.

And for an exclusive look at our top stories, subscribe to our newsletter and YouTube.

Tell us what you think. Contact us here or on Twitter at @hcitoday. And if you’re interested in advertising with us, check out our various advertising packages and request our Media Kit.

eClinicalWorks is a proud sponsor of Healthcare Scene.



< + > Optimizing End-to-End Revenue Cycle Workflows with Health IT Solutions and AI

It is a well-understood fact that the world of healthcare has an incredibly high burnout and turnover rate. A 2023 study from the CDC found ...