Thursday, June 11, 2026

< + > From Fragmented Data to Actionable Intelligence

Modern tools, including AI, offer healthcare institutions new windows onto their data with the potential for real business changes. In our recent interview, we sat down with Paul Brockington, Vice President of Integrations at the ONCare Alliance, a consortium of independent oncology providers sharing their data for research and to improve their operations, and Sergio Wagner, Salient Health’s Chief Strategy Officer, to learn more about their efforts to leverage data to improve the care provided. ONCare Alliance has partnered with Salient Health to curate and interrogate their data in order to make it more actionable.

Both Brockington and Wagner stress the importance of applying AI and analytics to specific business problems, what Brockington calls “MBA 101.” Wagner says that he wouldn’t be interested in AI unless it can “make money, save money, or reduce risk.”

Wagner thinks that the technology is available today to extract the value that health care providers need, and that the old problems of interoperability and data movement are solved. The key issue is the financial incentive to share data.

Salient Health’s key asset, Wagner says, is their proprietary in-memory database, which they have integrated with an analytic engine to analyze billions of data points in real time. Salient’s platform is also trained on the specific nomenclature and nuances of its partners.

One partner Wagner mentioned is the Department of Health of the state of New York, which has stored every claim in the state since 2005. Now 35 agencies can query data in its totality.

Brockington’s alliance accepts EHR, billing, and next-generation sequencing (NGS) data from alliance members, building up billions of rows of structured data along with unstructured data in the form of physician notes, patient observations, lab values, and NGS testing. Their members are concerned with quickly extracting key aspects of the patient journey, such as age range, stage of the cancer, and treatments, from both structured and unstructured data. They identify cohorts that they can track through their patient journeys.

Brockington says that it’s time to move beyond pre-canned data and dashboards and allow clinicians or administrators to run sophisticated interrogations of their data. Salient Health helps them run such queries instantaneously, not relying on IT staff to spend days coding queries.

Watch our interview to learn more about how ONCare Alliance and Salient Health have partnered together to turn data into action.

Learn more about Salient: https://salienthealth.com/

Learn more about ONCare Alliance: https://www.oncarealliance.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.

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Salient is a proud sponsor of Healthcare Scene.



< + > Shifting Upstream in Payment Integrity: Why Prepay Prevention is Becoming the New Standard

The following is a guest article by Steve Sutherland, SVP Information Systems at CERIS

Payment integrity often lives at the end of the claims line, with teams measuring success by how much they can win back after payment. While recoveries matter, most payer and program leaders know the hidden cost of that model.

That is why more organizations are now “shifting upstream” in payment integrity. This trend of shifting upstream or left means being proactive and moving detection, validation, and decisioning upstream, closer to claim intake and adjudication. The goal here is to catch issues earlier in the claim lifecycle, before funds go out the door, and when problems can be clarified, corrected, or resolved with less disruption.

This change touches the full healthcare ecosystem. Large health systems and hospitals feel the strain when recoupments disrupt revenue cycle planning. Group practices and solo practitioners experience the drag of repeated record requests and appeal cycles. Government agencies face heightened scrutiny and pressure to demonstrate program integrity. Health IT companies, consultants, and associations are under the impression that integrity initiatives must balance accuracy, access, and administrative burden.

Shifting upstream is gaining ground because it supports a better process, not just tougher policing.

Why Prepay Strategies are Speeding Up Now

Claims keep rising in both volume and complexity. At the same time, many plans and programs run short on staff, and post-pay recovery work can be costly and hard to scale. Even when recoveries are successful, they can come with downstream costs that are harder to quantify but easy to recognize, including strained provider relationships, more appeals, and more time spent resolving disputes than preventing them.

Prepay prevention reduces that churn. The most successful programs focus on clear rules and tight scope, and target common failure points. They also route those claims through steps that teams can explain and providers can resolve.

Prepay work also helps payer information technology and claims teams measure results faster. Intervention is happening in a shorter window, making it easier to track outcomes, compare changes, and refine edits.

What Prepay Prevention Looks Like in Practice

Shifting upstream shows up in a few core moves across the industry, and the following steps are quickly becoming standard as programs mature.

One step is clinical validation, which helps confirm that a billed service aligns with clinical documentation and applicable policy. This often involves reviewing whether the medical record supports the level of care, medical necessity, or clinical appropriateness. Another intervention is coding checks, where payers identify inconsistencies such as incompatible code combinations, unbundling risk, upcoding indicators, and mismatches between codes and documented services. A third is documentation review, which catches missing or unclear details before payment. That timing matters as providers can often respond faster before a claim turns into a formal dispute.

The operational upside is clear: providers still have context, and claims staff can resolve questions without triggering a long recovery cycle. From a technology view, payers can embed edits and workflows where they work best, which leads to clearer routing, stronger audit trails, and more consistent decisions.

Where AI is Making a Real Impact

Artificial intelligence can help payment integrity teams move faster and stay consistent. Additionally, the technology works best when teams pair it with tight governance and human review. AI can help sort incoming claims by risk and provide better triage. It can use signals like pattern fit, dollar risk, and confidence scores to cut through the noise. AI also keeps human review focused on the claims that matter most.

AI also provides faster record review. Modern tools can pull key facts from records and highlight the right sections. Some tools can also draft short summaries for reviewers, which reduces the time spent hunting for details across long notes. Reviewers are moving faster when using AI without lowering the bar.

Lastly, AI can also help with pattern detection at scale, surfacing emerging anomalies across procedures, sites of service, or provider groups. This is particularly useful for identifying where an edit may need to be tuned, where education could prevent repeated errors, or where a new billing pattern is creating avoidable leakage.

The key point is trust. Artificial intelligence helps most when it supports decisions and leaves a clear trail. If teams cannot explain why a claim was flagged, they should not rely on the output.

Where Human Expertise Stays Essential

Even as automation improves, payment integrity still depends on expert judgment. Complex clinical scenarios, nuanced coding situations, policy exceptions, and context-specific documentation issues do not always fit neatly into rules or model predictions.

Humans also protect quality, calibrate rules, and handle escalations. Without those steps, teams risk uneven decisions and weak rationales. Provider trust drops fast when outcomes feel unsystematic.

Clinical reviewers and coding experts add the interpretive layer that keeps decisions fair. They can tell the difference between a true billing issue and a chart that needs one more detail. They also feed what they learn back into edits and models. With mature programs treating this as a loop and automation handling volume, experts are able to handle nuance and oversight.

Earlier Intervention Improves Transparency and Reduces Provider Friction

When a payer flags an issue before payment, the message can be more direct and the policy cite can be clear. The provider can respond while the facts are still easy to confirm. Early intervention also improves internal transparency, because prepay workflows can be instrumented to show exactly why a claim was flagged, what information was reviewed, what was requested, and how the final decision was reached.

For payer information technology teams, that trace supports audit needs and strong controls. For providers, it reduces the feeling that rules change after the fact.

What Shifting Upstream Means for Payer Information Technology and Claims Teams

Shifting upstream is ultimately a modernization effort. It requires payer IT and claims operations teams to treat payment integrity as a lifecycle capability, supported by workflow design, data quality, and disciplined governance.

Teams can make the change with a few practical moves:

  • Precision Before Scale – Pick a small set of high-impact use cases and make sure they are defensible and workable in prepay; measure results, then expand
  • Tie Every Decision to Evidence – Each intervention should produce a clear rationale and a policy link; it should also point to a consistent path to resolve the issue, and explainability turns automation into trust
  • Use Artificial Intelligence where it is Strong – Use AI for routing, record search, summarization, and trend detection; keep expert review for clinical judgment, coding nuance, and quality checks
  • Measure Success Beyond Recoveries – Track avoided improper payments, cycle times, touch rates, appeal outcomes, provider escalations, and cost-to-manage, because those indicators reveal whether shifting upstream is improving integrity through transparency

Across healthcare, the goal is to improve billing accuracy by strengthening transparency and integrity. By preventing errors early, organizations reduce waste, minimize rework, and lower friction for everyone involved. The result is a clearer, more consistent, and fairer billing and claims experience.



< + > Novellia Secures $18M Series A to Scale Patient-Powered Data Platform, Solving Pharma’s $50B Problem

Funding Comes on the Heels of Novellia Powering Research for the World’s Largest Drugmakers, Signing Several Seven-Figure Contracts, and the Launch of Its Patient-Facing Mobile App

Novellia, the only real-world data company built entirely on information patients choose to contribute to medical research, today announced an $18 million Series A led by Spark Capital with participation from Khosla Ventures, Acrew Capital, Bling Capital, and TMV, bringing Novellia’s total funding to $28 million. Building on this momentum, Novellia is also launching its patient-facing mobile app, an extension of its award-winning online platform that allows individuals to securely access their complete health history.

Researchers have long depended on real-world data to understand how treatments perform outside clinical trials. But today’s data ecosystem is dominated by third-party brokers stitching together partial datasets from insurance claims and hospital records. The result is a system that costs over $50 billion annually and still leaves out the most important source of truth: the patient.

“Behind every patient is a fragmented, incomplete record of their life,” said Shashi Shankar, Co-Founder and CEO at Novellia. “I watched this up close: first through my grandfather’s cancer journey, and then professionally in pharma, where we were developing therapies without ever seeing the full picture. The system failed patients and researchers at the same time. Novellia changes the course for this whole industry by putting the patient at the center.”

The funding will be utilized to scale Novellia’s AI-powered technology, designed to give patients a free tool to access and organize their complete health history across providers, alongside the opportunity to share it with scientists to advance medical discoveries. Novellia puts this deidentified, anonymized data in the hands of the world’s largest pharmaceutical companies to fuel new cures and treatments, fundamentally changing the course of research and development. Its customers include several of the top 10 pharmaceutical companies and early-stage diagnostics companies.

“I’ve known major pharma companies had data that was too old, too slow, and too disconnected from patients,” said Alex Finkelstein, General Partner at Spark Capital. “For a long time, I looked for a company like Novellia. Shashi understood the problem firsthand and built the solution that benefits patients and research. Since Spark led the Series A, Novellia has signed some of the largest companies in the world to seven-figure, multi-year contracts. This is dramatically changing how medicines are developed.”

“Nearly 70% of patients are open to contributing data for medical breakthroughs, but they expect control, transparency, and privacy safeguards,” said Emma Silverman, Partner at TMV. “That gap between willingness and infrastructure is exactly what Novellia solves by creating a new category of patient-consented data that is both more complete and more actionable for research.”

Within 30 seconds, Novellia helps patients with serious and complex conditions find and unify up to 20 years of medical data from disparate hospital systems, doctors’ offices, and labs across the U.S. The sickest patients carry the greatest administrative burden, spending hours tracking down records and repeating their histories to new providers. Novellia eliminates that overhead with its proprietary, AI-powered platform that pulls the data together into a single, user-friendly source to give patients a free, comprehensive record of their health, something most have never had access to. Novellia then analyzes those records using proprietary NLP models that extract signals from unstructured clinical text, including physician notes, lab narratives, and diagnostic reports. This is often the richest and most overlooked layer of the medical record, where clinicians document their reasoning and researchers finally see why decisions were made, turning raw patient data into anonymized, harmonized datasets ready for research.

About Novellia

Novellia, Inc. is a patient data company that helps people find and unify over 20 years of health data in seconds so they can get better care, while accelerating medical breakthroughs. Named one of Digital Health New York’s 10 startups to watch, a 2026 Fierce Outsourcing Award recipient for Innovation in Drug Development, and a 2026 MedTech Breakthrough Award winner for Best Healthcare Data Repository Solution, Novellia is the only real-world data company built entirely on information patients choose to share with research. Novellia is backed by peer-reviewed research presented at medical congresses, including ASCO and SABCS-AACR. To learn more, visit novellia.com.

Originally announced June 2nd, 2026



Wednesday, June 10, 2026

< + > Your Healthcare Hosting Provider Says They’re Compliant, Can They Prove It?

In a recent Healthcare IT Today interview, Kelly Goolsby, Director of Solution Architecture at Nexcess, says that many clients come to them after trying another managed hosting provider who made impressive claims but failed to follow through on compliance, security, and other promises.

Claiming to be a “show me” kind of guy, Goolsby recommends that clients not rely on promises made by potential vendors, but ask for proof and transparency. Check the logs to make sure that the expected antivirus software and other security measures are present. Some hosting providers are now being punished for non-compliance with HIPAA and other regulations. Migration to a new hosting service can take six months, so clients should try to choose a reliable vendor at the start.

Goolsby also says that regular audits, while important, are not enough, especially when a client is rolling out a new service or source of data. An audit is a look at the past, and therefore comes too late to prevent security problems. Clients should do regular checks that anticipate security needs as well as assuring them they’ll pass the next audit: test their backups and restores, make sure everything is logged, and conduct incident response and disaster recovery exercises. Vendors should provide an incident management plan and a post mortem on any incident they have to handle.

Although the hosting provider handles security for the hosts, network, and operating systems, clients are responsible for security for users and applications. They should do “data mapping” so they know exactly where PHI is and what sensitive data is shared with SaaS services.

Clients should make sure to have proper encryption, including their backups, and that data is recoverable in a given timeframe. They have to make sure their antivirus software is up to date, even if the vendor claims to handle updates. When employees leaves, their accounts should be deleted “before they leave the building.”

Goolsby discussed the value of planning important security and compliance features from the start. If you don’t encrypt a data volume at the start or segment your network to allow for future traffic growth, these things are very hard to do later. He’s often seen clients defer such features because fixing something after they go live is too costly.

The question of “shadow IT” came up. New applications are needed constantly in a fast-changing treatment environment, and “you always want it yesterday,” but providers should be discouraged from going around the IT staff and installing their own applications or SaaS services.  IT leaders need to be proactive in providing the secure, HIPAA-compliant tools their users need so that unvetted shadow IT doesn’t become a problem in their organization.

Watch our interview with Kelly Goolsby from Nexcess to learn more about how you can ensure your hosting provider is compliant.

Learn more about Nexcess: https://www.nexcess.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.

Nexcess is a proud sponsor of Healthcare Scene.



< + > This Week’s Health IT Jobs – June 10, 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 9, 2026

< + > Integration Into the Workflow Is Key to Ambient Scribe Success

The first year that Central Oklahoma Family Medical Center deployed the Sunoh.ai ambient transcription software, it was getting very little use and therefore wasn’t achieving their goals for installing it. To address this lack of adoption, Liz Massey, Executive Vice President of Clinical Operations, was put in charge of integrating it into their practice. In a recent interview with Massey, she explains what her team did and how Sunoh.ai  has transformed the organization. One doctor even said it “gave her back her life.”

Central Oklahoma Family Medical Center has 22 locations serving 30,000 patients, mostly offering primary care but also having multiple specialties. The burden of writing clinical notes was leading to burn-out. One key step taken by the center, when choosing Sunoh.ai, was to define their goals: to capture the quality measures needed for regulatory and financial purposes, to increase the percentage of records closed within 24 hours of a visit, to reduce the time spent on documentation after-hours, and to increase the number of patient visits.

They preferred Sunoh.ai over other ambient solutions because it integrated well with their EHR. But as Massey and her team discovered, integrating the solution into the doctors’ everyday practice was crucial too.

In order to address this, they sat with doctors doing role-plays and offering suggestions on how to do things differently next time with a patient in order to make the most of the ambient scribe. They also set up a chat on Microsoft Teams that included the onboard consultant from Sunoh.ai to make sure clinicians got all their questions answered and knew how to best utilize the tool. Eventually, some doctors started answering other doctors’ questions, becoming physician champions “whether they realized it or not.”

In the third year of using Sunoh.ai over 14,000 records were created using Sunoh.ai, and they are on pace for even higher this year. Primary care physicians were the first to be introduced to it and caught on really quickly. But they have rolled the tool out as well to specialties, who have more complex visits.

Massey recommends that doctors record the interviews on a tablet instead of a desktop or laptop, so that the device is less intrusive. While patients can see the device, they seem to forget that it’s there.

Check out our interview with Central Oklahoma Family Medical Center about their experience adopting the Sunoh.ai medical scribe in their organization.

Learn more about Central Oklahoma Family Medical Center: https://www.cofmc.com/

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.

eCW is a proud sponsor of Healthcare Scene.



< + > The Emerging Role of AI Platforms in Healthcare Delivery: What Healthcare Leaders Need to Know

The following is a guest article by Ashutosh Kavathekar, Global Head – Healthcare at Apexon

The healthcare industry crossed a threshold this year. A recent Elsevier report shows that more than 40% of clinicians in India are now using AI technologies in their work, a significant increase from 12% the previous year. This adoption rate surpasses both the global average of 48% and rates in the US (36%) and the UK (34%).

With the launch of ChatGPT Health by OpenAI and Claude for Healthcare by Anthropic in January 2026, artificial intelligence moved from the background of healthcare operations to the front door of patient engagement. These are not incremental product releases. They introduce consumer-facing AI health assistants designed with enterprise-grade security, clinical oversight, and direct access to personal health data.

For healthcare organizations, the implications are immediate. AI is no longer limited to back-office automation or isolated innovation pilots. It is rapidly becoming the primary way patients interpret their health, prepare for clinical encounters, and navigate an increasingly complex healthcare system.

What This Upgrade Means for Healthcare Organizations

The Rise of the AI-Prepared Patient

Patients have already turned to general-purpose AI to ask health questions, interpret lab results, and explore treatment options. What changes now is scale and credibility. Purpose-built healthcare versions allow AI to synthesize insights directly from structured health records, claims data, and longitudinal histories.

Clinicians will increasingly see patients arrive with AI-generated summaries, interpretations of recent tests, and focused questions. This reshapes the exam room dynamic. Used well, it can streamline history-taking and elevate clinical conversations. Used poorly, it risks confusion, misinterpretation, and unrealistic expectations.

Health systems must prepare clinicians to engage confidently with AI-informed patients—leveraging AI-generated insights without surrendering clinical judgment or increasing liability. This is as much a training and change-management challenge as it is a technology one.

Administrative Tasks are Being Automated

Both ChatGPT Health and Claude for Healthcare take aim at one of healthcare’s largest cost drivers: administrative complexity. From benefits navigation and prior authorizations to claims and coding workflows, AI is increasingly capable of automating work that has long depended on manual effort and specialized expertise.

As a result, AI-assisted administrative workflows are quickly becoming table stakes rather than differentiators. Organizations that continue to rely on manual, exception-heavy revenue cycle processes will face growing and hard-to-reverse cost disadvantages. The question for payers and providers is no longer whether AI can reduce administrative burden, but how quickly it can be deployed at scale without compromising compliance or clinician trust.

Data Privacy and Trust are Critical

A defining feature of these platforms is their focus on data governance, including HIPAA-ready infrastructure, strict data separation, and clear policies that prevent health conversations from being used to train models. Users retain control and can revoke data access at any time.

This reshapes trust. Patients may come to view external AI platforms as more transparent and controllable than traditional provider portals—a warning signal for healthcare organizations. Compliance alone is no longer sufficient. Trust must be visible and patient-facing, or organizations risk losing credibility at their own digital front doors.

AI Disrupting Patient Portals and Systems 

The most significant strategic implication of these launches is platform displacement. As patients increasingly turn to AI assistants for health guidance, traditional patient portals, care navigation apps, and call centers risk being bypassed. In this shift, Electronic Health Records (EHRs) face the danger of being relegated to back-end systems of record, rather than evolving as platforms that enable meaningful patient engagement.

For technology leaders, this moment presents a defining choice: lead by orchestrating AI-driven experiences, or risk becoming a commoditized data layer within someone else’s platform. This decision will shape digital strategy for years to come.

Embedding AI Throughout the Operating Model – Role of Healthcare Providers

Responding effectively requires more than deploying tools or running pilots. AI must be treated as a shared enterprise layer, integrated across clinical, financial, and operational workflows. Governance models must satisfy compliance teams while earning the trust of clinicians who rely on the outputs in real time.

Incremental automation is not enough. Organizations must redesign workflows so AI prepares context before encounters, supports clinicians during interactions, and reduces cognitive load rather than adding alerts and noise. Tech leaders who engage experienced service providers accelerate time-to-value by 6-12 months, avoiding fragmented pilots and compliance pitfalls.This is not a technology decision. It is an operating model decision that requires executive ownership, clinical alignment, and sustained investment beyond innovation budgets. Architecture decisions, workflow integration, and governance models made in the first twelve months will determine whether AI reduces friction or simply adds another layer of complexity.

AI’s Role in Chronic and Long-Term Care

In long-term care and chronic disease management, AI assistants will evolve into persistent care companions. By continuously synthesizing EHR data, remote monitoring signals, medication adherence, and patient-reported outcomes, AI can surface early risk indicators and prompt timely interventions.

This enables earlier detection of deterioration, fewer avoidable hospitalizations, and better outcomes—without linear increases in staffing. For payers, this bends cost curves through prevention. For providers, it enables more personalized, proactive care at scale.

At the same time, EHR systems themselves will be modernized. Historically optimized for documentation and billing, they will evolve into AI-enabled platforms that surface next-best actions, flag reimbursement risks, and highlight operational bottlenecks in real time. The EHR transitions from a passive system of record into an active participant in care delivery.

The Choice Ahead

With the launch of ChatGPT Health and Claude for Healthcare, AI has moved from the margins of healthcare IT to its center. It will define how patients engage with care and how clinicians deliver it.

Participation is inevitable. Leadership is not. Organizations that act now will shape the future of care. Those that wait will inherit it.



< + > From Fragmented Data to Actionable Intelligence

Modern tools, including AI, offer healthcare institutions new windows onto their data with the potential for real business changes. In our r...