Tuesday, February 24, 2026

< + > Why AI-Enabled Throughput Tools Fail Early and What Signal Infrastructure Fixes

The following is a guest article by Steve Biko Onyambu, MD, Critical Care Physician at Abbott Northwestern Hospital

Hospital leaders invest heavily in throughput tools and AI-enabled analytics: Expected Discharge Date (EDD), discharge milestones, command-center dashboards, AMPAC scores, and ranked priority lists. These tools are essential for coordination at scale. Yet nearly every executive, nurse leader, and physician leader recognizes the same problem: these tools are not relied upon for prospective decision-making. They exist, but are often relegated to after-the-fact documentation, confirming what clinicians already knew rather than informing earlier action.

The result is a paradox. Hospitals have more dashboards and analytics than ever. Yet coordination happens late, staffing absorbs avoidable strain, and throughput gains erode before they materialize.

This is not a tooling problem. It is an infrastructure problem. Many hospitals are deploying AI-driven operational tools faster than they are validating the clinical signals those tools depend on.

The Hidden Failure of Throughput Systems

Most throughput tools are not wrong. They are simply late.

Expected Discharge Dates stabilize only after clinical uncertainty resolves. Milestones become reliable only once they are nearly complete. Command-center views become actionable only when variability has already collapsed. By the time the signal is trustworthy, the window for early coordination has already closed.

Frontline teams have learned this pattern. Early signals oscillate, reverse, or conflict with clinical reality. Over time, clinicians adapt rationally. They stop relying on these tools for decision-making. The tools become lagging indicators, trailing behind clinical judgment rather than informing it. Decisions are made at the bedside; dashboards document them afterward.

From an operational perspective, this creates a predictable failure mode with direct implications for length of stay, staffing utilization, and operating margin:

  • Early coordination is deferred
  • Transfers and discharges compress into narrow windows
  • Staffing mismatches grow
  • Weekend and handoff cascades intensify

The system becomes optimized for late certainty, not early coordination.

Why Better Dashboards Do Not Solve the Problem

Many organizations respond by adding more analytics, more fields, or more predictive models. This rarely works.

In an era where hospitals are turning to predictive and AI-driven operational tools, the integrity of the upstream signal layer determines whether those systems create coordination or amplify volatility.

The reason is structural. Throughput artifacts are coordination representations, not clinical truth. They are downstream of the patient’s evolving physiologic trajectory. No amount of visualization, and no amount of machine learning, can fix a signal that arrives too late or lacks grounding in a clinical state.

Most enterprise tools infer readiness from administrative events: orders placed, milestones completed, consults signed. But clinical readiness emerges earlier, along discernible trajectories, long before those events occur. By the time administrative markers appear, the clinical trajectory has already declared itself. The dashboard is simply catching up.

Without an upstream signal layer, dashboards are forced to infer readiness indirectly, and uncertainty leaks through as volatility. Adding AI on top of unreliable inputs produces sophisticated predictions built on unstable foundations.

A Different Approach: Clinical Signal Infrastructure

What hospitals are missing is not another artifact, but a pre-artifact layer.

Clinical Signal Infrastructure for Throughput introduces a simple but powerful shift: Patient trajectory → clinical proto-signals → enterprise artifacts → operational decisions

Instead of asking artifacts to guess readiness, this infrastructure computes early, bounded signals directly from the patient’s evolving clinical trajectory.

These signals do not assert final readiness. They answer a different question: Is this patient’s trajectory converging toward readiness, and with what confidence?

By design, they are deterministic, explainable, time-aware, and bounded. They are recomputed continuously as data evolves, and they explicitly surface confidence and stability.

This makes them suitable for early coordination rather than retrospective documentation. Critically, it provides AI and predictive tools with trustworthy upstream inputs instead of volatile administrative proxies.

Safe Failure Matters More than Early Accuracy

A common concern with early signals is safety. What happens when they are wrong?

Clinical Signal Infrastructure addresses this directly through safe failure modes.

Every signal carries metadata about data completeness and recency, trajectory stability versus volatility, and explicit indeterminate states. When uncertainty increases, the system degrades gracefully. It flags drift, suppresses acceleration recommendations, and surfaces missing or unstable inputs instead of forcing a binary answer.

Unsafe early signals do not just cause errors; they destroy trust. Once frontline teams learn that early signals cannot fail safely, they stop relying on them altogether. Bounded uncertainty, by contrast, preserves trust while still enabling earlier coordination.

Measuring What Actually Matters: Frozen-Time Validation

Traditional analytics ask, “Was the prediction correct?”

Throughput operations need a different question: Did the signal become available early enough to matter, without hindsight bias?

Clinical Signal Infrastructure uses frozen-time validation. Signals are evaluated only with information available at a given decision point, mirroring real-world conditions. This allows leaders to measure lead time, stability, and slippage detectability. The framework evaluates signal integrity, not predictive performance.

Shadow-Mode Deployment: Reducing Adoption Risk

This infrastructure does not require a disruptive workflow change.

It is designed for shadow-mode deployment: read-only ingestion from EHR, FHIR, and HL7v2 feeds; no automated execution of irreversible actions; and parallel review alongside existing dashboards. Shadow-mode allows organizations to build evidence, calibrate thresholds, and assess safety before operational reliance.

The Executive Takeaway

Hospitals do not lack dashboards. They lack early, trustworthy signals that allow those dashboards to inform decisions rather than document them after the fact.

Clinical Signal Infrastructure for Throughput reframes the problem. Instead of forcing coordination artifacts to work earlier than they safely can, it supplies an upstream signal layer grounded in clinical and disposition trajectory. This approach does not promise outcomes. It defines the infrastructure and measurement needed to earn them, and provides the foundation AI-driven tools require before they can deliver on their promise.

A full technical description and reproducible framework are available via Zenodo (DOI: 10.5281/zenodo.18029429).

About Steve Biko Onyambu

Steve Biko Onyambu, MD, is a critical care physician at Abbott Northwestern Hospital in Minneapolis. He works at the intersection of clinical informatics, hospital operations, and capacity management, with a focus on translating patient trajectory into earlier, safer coordination signals. His work examines how deterministic, explainable signal infrastructure can support throughput, staffing, and discharge planning in complex inpatient environments. He is a practicing intensivist.



< + > Harbor Health Acquires Rippl, Expanding Expert Dementia Support for Patients and Caregivers

Acquisition Accelerates the Growth of Harbor Health’s Condition-Focused Care Pathways and Its Model of Combined Care and Coverage

For families facing dementia, each day can bring unfamiliar territory, confusion, and worry. Harbor Health, a Texas-based primary and specialty care clinic group and health insurance company, today announced it has acquired Rippl, a dementia care platform built to help seniors living with dementia remain at home and out of the emergency department, hospital, and post-acute settings. These are places they end up far too often.

The acquisition advances Harbor Health’s strategy to expand its condition-focused care pathways and strengthen the company’s integrated model, which combines expertise in chronic condition management that can better predict care needs and access to coordinated, affordable health insurance. Offering care and coverage combined allows providers to take better care of people through every step of the health journey, better aligning insurance benefits with the right care.

Rippl’s platform helps identify medical and behavioral issues early, often preventing emergency room visits and easing the emotional burden on families. Harbor Health’s condition-focused care pathways are all designed with the same proactive approach. The structured, evidence-based care pathways guide members and clinicians through every stage of managing a specific health condition, such as diabetes, hypertension, and chronic pain (back, knee, hip). Dementia fits perfectly into this unique approach.

“Integrating Rippl’s dementia platform into our expanding library of condition-focused care pathways gives our health teams another powerful tool to manage complex health needs,” said Tony Miller, Harbor Health Co-Founder and Chief Executive Officer. “As our health plan membership grows rapidly, these pathways are essential for keeping coverage more affordable and taking better care of people. That’s our priority.”

“We created Rippl to keep seniors with dementia and their caregivers at home and out of the emergency department and hospital,” said Kris Engskov, Rippl Care Co-Founder and Chief Executive Officer. “We’ve always understood expert dementia care works best when it’s deeply integrated with primary care, and we’re excited to see Harbor Health scale this platform as part of its broader effort to deliver condition-focused care and better outcomes while dramatically reducing unnecessary costs.”

As part of the deal, Rippl investors are making a new commitment to the combined company. Key investors include Kin VenturesARCH Venture PartnersGeneral CatalystGV (Google Ventures)F-Prime CapitalJSL Health, and Mass General Brigham Ventures.

Expanding Care and Coverage Together with Personalized Care Pathways

This acquisition accelerates Harbor Health’s broader vision to become Texas’s leading integrated care and coverage provider, as well as expands Harbor Health’s services into the Florida market. Following its 2025 acquisition of 32 VillageMD clinics, Harbor Health continues to expand the evidence-based care pathways, helping people feel supported throughout every stage of their health journeys. The dementia care program will be available to people receiving care at Harbor Health and VillageMD locations in Austin, Dallas, San Antonio, and El Paso. In addition, Rippl services will continue to be provided to Medicare Advantage members as well as seniors covered by traditional Medicare through CMS’s innovative GUIDE program.

Harbor Health surrounds families facing dementia or other health conditions with a coordinated team that walks beside them, making sure they are not alone and have the care and coverage they need.

 About Harbor Health

Harbor Health was created by people who have spent decades trying to make health better, including those who provide health to those who figure out how to pay for it. Harbor Health’s mission is to make care work better for consumers so that everyone can achieve optimal health. For more information, visit harborhealth.com.

Originally announced February 10th, 2026



Monday, February 23, 2026

< + > AI in Ultrasound Imaging Advances and Their Influence on Healthcare Practices and Patient Safety

The following is a guest article by Rohan Patil, Principal Consultant at Towards Healthcare

AI in ultrasound imaging has been gradually transforming healthcare, offering a way to see inside the body with greater precision and fewer invasive procedures.

Through my experience working in healthcare technology, I’ve seen how AI-powered imaging tools can help doctors make better decisions, reduce mistakes, and improve patient care.

Modern AI ultrasound tools now do more than just capture images. They can guide clinicians during scans, highlight important areas, and help ensure results are reliable. From heart exams to pregnancy scans, these AI-enhanced improvements make the work easier for healthcare professionals and safer for patients.

Opportunities in AI Ultrasound Imaging

The future of ultrasound is full of possibilities. AI-assisted imaging systems allow more accurate measurements and better detection of conditions in areas like heart health, kidney stones, and pregnancy care. Clinicians can now rely on tools that help them see details they might otherwise miss.

With lifestyle-related and chronic illnesses becoming more common, the demand for precise, AI-powered imaging is increasing. 

According to Towards Healthcare, the global market for AI in ultrasound imaging is expected to reach USD 2.6 billion by 2035, growing from USD 1.14 billion in 2025 at an annual growth rate of 8.6%.

Modern ultrasound tools also help smaller clinics and hospitals. They can perform complex imaging studies without needing highly specialized staff, making quality diagnostics available in areas with fewer trained professionals. This is a significant step toward improving healthcare access for more people.

Challenges in AI Ultrasound Imaging Today

Despite these advances, there are challenges that need attention. Protecting patient privacy is critical. Sensitive health information analyzed by AI systems must be kept safe from unauthorized access or leaks, as trust is essential in healthcare.

Another issue is understanding AI technology. Some advanced AI imaging tools make decisions in ways that aren’t always clear to clinicians. Being able to see and understand how these systems work builds confidence and ensures safe use.

Explaining AI-driven tools to patients is also important. People need to know how their health data is being used, and clear communication is key to helping them feel comfortable and informed.

Let’s Understand the Trends in AI Ultrasound Imaging

Here are some trends that are shaping the field in 2025 and 2026:

  • More Regulatory Approvals: Authorities in the US and Europe are approving AI-powered ultrasound applications that guide clinicians and improve scan quality
  • Real-Time 3D Imaging: AI algorithms now enable scanners to capture moving organs, like a beating heart, in three dimensions; this allows doctors to interpret images more accurately in real time
  • Smarter Workflow Management: AI helps doctors manage workloads by prioritizing urgent cases and automating routine measurements, saving time and reducing errors
  • Focus on Chronic Conditions: AI-enhanced ultrasound is increasingly applied in heart health, kidney care, and pregnancy, helping clinicians detect issues early and plan treatment effectively
  • Improved Data Safety: AI systems come with advanced security measures to ensure patient information is protected during storage and sharing, building trust in these technologies
  • Transparent Systems: Developers are creating AI imaging tools that are easier for clinicians to understand, so they can confidently rely on the results

What’s Coming in AI Ultrasound Technology?

The next decade holds a lot of promise for AI in ultrasound imaging. AI-powered tools are likely to become even more precise, faster, and easier to use across all healthcare settings. Hospitals and clinics will be able to provide high-quality diagnostics even in areas where specialists are scarce.

We can also expect AI systems to integrate more seamlessly with patient records and health monitoring platforms, making care more coordinated and efficient. With improvements in accuracy, workflow, and accessibility, AI-enhanced ultrasound will continue to play a vital role in the early detection and treatment of diseases.

The future of AI in ultrasound imaging is about combining intelligent technology with patient-centered care. It’s about giving clinicians the tools they need while ensuring patients receive safer, more accurate, and timely diagnoses.

About Rohan Patil

Rohan Patil is a seasoned market research professional with over 5+ years of focused experience in the healthcare sector, bringing deep domain expertise, strategic foresight, and analytical precision to every project he undertakes.

About Towards Healthcare

Towards Healthcare is a global strategy consulting firm based in Canada and India. The firm supports business leaders with technology solutions, clinical research services, and advanced analytics in healthcare, enabling actionable insights and sustainable innovation.



< + > Lotus Just Raised $41M

Leading Investors Backed Lotus’s New Primary Care Model Because They Believe It Can Finally Fix Healthcare in America

For decades, Nancy lived with a lupus diagnosis that never fully explained her symptoms. Only after Lotus Health AI unified her fragmented medical records and flagged a likely case of MCAS (Mast Cell Activation Syndrome) did she receive guidance that led to meaningful improvement…within days.

Robert, a brain aneurysm survivor, faced six surgeries and a flood of more than 30 lab tests. Lotus AI provided him with round-the-clock support that helped him gather results, manage his care, and meet with his doctors with more confidence.

Trisha endured pulsatile tinnitus for years without answers. Lotus AI identified triggers and guided interventions with the support of clinicians, and she finally found relief.

Top-Tier Investors Back a New Model for Primary Care

These stories share a key theme: patients got the clarity and continuity they needed with Lotus Health AI. It’s because of these tangible improvements in the lives of everyday Americans that some of the longest-running venture capital firms in the world are backing Lotus. Kleiner Perkins and CRV co-led Lotus Health AI’s $35 million Series A, with a board seat for CRV’s general partner, Saar Gur, who led early investments in DoorDash, Mercury, Patreon, and Ring. Kleiner Perkins—famed for their early investments in Google, Amazon, Genentech, Twitter, and Airbnb—also led Lotus’ Seed Round, bringing total funding to $41 million.

Lotus investors also include Joe Montana’s Liquid 2, Adidas Family Office’s LEADVC, and a group of high-profile healthcare and technology founders and operators, including Jerry Murdock (Insight Venture Partners), Michael Ovitz (CAA), Aneesh Chopra (first CTO of the United States), Vivek Garipalli (Clover Health), Othman Laraki (Color Genomics), Travis May (Datavant), Julia Cheek (Everlywell), Adrian Aoun (Forward & Torch), Harpreet Rai (former CEO of Oura), Colin Evans (OpenAI), Jacob Reider (former CMO, U.S. HHS), Harjinder Sandhu (CTO at Microsoft), and Ian Shakil (Augmedix), alongside physicians from Harvard and Stanford.

A Physician-Led AI Medical Practice Built to Deliver Treatment

Lotus Health AI combines:

  • Medical AI
  • Unified Patient Health Data
  • Latest Peer-Reviewed Medical Evidence
  • Clinical Guidelines
  • Real Board-Certified Physicians Reviewing Guidance

…to collapse the cost of care and make doctors 10 times more productive while stripping out the administrative waste that drives costs up and slows care down. Lotus is designed to replace outdated primary care processes by eliminating administrative bottlenecks and giving doctors the tools to be dramatically more effective with a single 24/7 model of care. The system supports more than 50 languages and automatically syncs medical records, labs, medications, wearable data, and insurance benefits into one secure profile. Physicians review care, refine recommendations, and prescribe medications when needed, with lab ordering and in-person care routing coming soon.

The fresh capital will provide Lotus with the additional infrastructure required to serve millions while continuing to build out a world-class clinical team and the runway to keep care free as the company scales.

“Healthcare startups struggle to scale because they either build for whoever pays the most – hospitals, insurers, pharma – or they push costs onto patients. Either way, patient trust gets compromised. Lotus Health AI knows how to rewire the incentives, so they can grow without either. That’s the unlock,” said Saar Gur, General Partner at CRV.

Lotus is designed to break that cycle by earning revenue through premium sponsorships inside the app, rather than billing patients when they get sick.

“Every few decades, a product emerges that doesn’t just improve a system, but redefines it. Lotus Health AI has the potential to do that for primary care by delivering greater access, lower cost, and better outcomes at scale. We’re thrilled to back a team capable of bringing world-class care to millions,” said Annie Case, Partner at Kleiner Perkins.

Lotus Health AI was co-founded in San Francisco by KJ Dhaliwal, who grew up translating medical appointments for his immigrant parents and later built a consumer technology platform that reached millions before it was acquired. Lotus’s clinical team includes board-certified physicians from Stanford, Harvard, UCSF, and Johns Hopkins.

About Lotus Health AI

Lotus Health AI is a new model for primary care. We’ve removed the waste, made doctors 10 times more productive, and rewired the incentives so patients are finally empowered to seek care. No insurance needed. Real physicians review care and prescribe when needed. Available 24/7 in 50+ languages.

Originally announced February 3rd, 2026



Sunday, February 22, 2026

< + > Bonus Features – February 22, 2026 – 62% of healthcare professionals receive insufficient training in new tech, 40% of orgs have adopted cloud fax, plus 23 more stories

Welcome to the weekly edition of Healthcare IT Today Bonus Features. This article will be a weekly roundup of interesting stories, product announcements, new hires, partnerships, research studies, awards, sales, and more. Because there’s so much happening out there in healthcare IT we aren’t able to cover in our full articles, we still want to make sure you’re informed of all the latest news, announcements, and stories happening to help you better do your job.

Studies

Partnerships

Products

Implementations

People and Company News

If you have news that you’d like us to consider for a future edition of Healthcare IT Today Bonus Features, please submit them on this page. Please include any relevant links and let us know if news is under embargo. Note that submissions received after the close of business on Thursday may not be included in Bonus Features until the following week.



Saturday, February 21, 2026

< + > Weekly Roundup – February 21, 2026

Welcome to our Healthcare IT Today Weekly Roundup. Each week, we’ll be providing a look back at the articles we posted and why they’re important to the healthcare IT community. We hope this gives you a chance to catch up on anything you may have missed during the week.

Duke Health Is Building the Hospital of the Future. John Lynn chatted with LaDonna Worrell at Duke Health and Dr. Justin T. Collier at Lenovo about ensuring physical infrastructure doesn’t hold back technology implementation, as the hospital set to open in 2028 must support decades’ worth of technology. Read more…

Overcoming Challenges Aligning IT Infrastructure With Value-Based Care Goals. Understanding clinical workflows, achieving interoperability and aggregating data, and closing care gaps outside the hospital are key to making this happen, the experts in the Healthcare IT Today community said. Read more…

Helping Providers Track Quality Outcomes for Value-Based Care Reimbursement. To succeed in VBC, providers need insights into financial performance, risk management, clinical pathway standardization, care gaps, and more, according to the Healthcare IT Today community. Read more…

Healthcare Interoperability Works Through Open Standards. In a wide-ranging chat, Ryan Howells at Leavitt Partners noted new CMS interoperability requirements “could unleash more innovation in healthcare tech than ever before” and undo some of the damage from meaningful use, which didn’t require standard EHR interfaces. Read more…

CMS Reimbursement for Tech-Enabled Therapies. John talked to Sensus Healthcare CEO Joseph C. Sardano about why CMS has become more disciplined about policies, procedures, and reimbursements, particularly in technology used to treat skin cancer. Read more…

Does Your Radiology AI Actually Work Here? Colin Hung connected with HOPPR CEO Dr. Khan Siddiqui, who said hospital IT teams need to make sure AI models work for their configurations, protocols, and workflows, even if a vendor says the models work “everywhere.” Read more…

Are You Testing and Monitoring Your Cloud-Based Healthcare Data Centers? John summarized an Anritsu white paper that unpacks the benefits of purpose-built devices for optimizing cloud-based data center performance, scalability, and more. Read more…

Life Sciences Today Podcast: Building a Rare Disease Ecosystem. Sagi Sigali at Rafa’s Moonshot joined Danny Lieberman to discuss turning a rare genetic disorder into an investable, de‑risked therapeutic opportunity. Read more…

Healthcare IT Today Podcast: ViVE and HIMSS Preview. It’s that time of year again. John and Colin talk about what makes ViVE and HIMSS different, what topics they expect to hear discussed in the hallways, and how to thrive at a large conference. Read more…

The Most Overlooked Benefit of AI Isn’t Clinical; It’s Human. AI comes into its own as a quiet, workflow-level tool designed to absorb administrative and cognitive load, according to Roy Wills at Intellias. The key to making this happen is ensuring AI systems are built to support clinicians, not supplement them. Read more…

Lessons Healthcare Learned the Hard Way – and Why Agentic AI Must Be Different. Aditya Bansod at Luma Health described how frustration with complexity, friction, alerts, and point solutions hurt the first wave of digital health and noted that platforms offer a better path forward. Read more…

Anshar to Debut AI’s Game-Changing Agents at HIMSS. Emily Snyder at AnsharAI described how one hospital cut denials by 60% in just one month by integrating Anshar AI into its existing claim management system. This reflects the power of agentic AI to function autonomously and manage complex administrative tasks. Read more…

Interoperability Must Be the New Standard for NEMT. Non-emergency medical transport is a highly fragmented market of disconnected digital tools, said Jill Hericks at Kinetik. Interoperability can lead to transparency, which allows for real-time decision-making. Read more…

This Week’s Health IT Jobs for February 18, 2026: Workforce management company Avant Healthcare Professionals seeks a Vice President of Technology and Digital Solutions. Read more…

Bonus Features for February 15, 2026: 58% of providers say TikTok is harming long-term health literacy, healthcare accounted for 22% of all disclosed ransomware attacks in 2025. Read more…

Funding and M&A Activity:

Thanks for reading and be sure to check out our latest Healthcare IT Today Weekly Roundups.



Friday, February 20, 2026

< + > Cables and Scheduling Stress Test – Fun Friday

Happy Friday everyone!  We hope you all had an amazing week and ready for the weekend.  If you’re like me, you’ll be traveling this weekend to attend the ViVE Conference.  I can’t wait to see so many of you there.

Since it’s Friday, that means it’s time for another edition of Fun Friday where we try to make you smile as you head into your weekend and maybe even learn something from the humor.

As a dad who has piles of chords I probably will never need, I can really relate to this cartoon.  I’ll be there for my kids when they need it.  Even if they mostly do wireless now.

This one kind of hurts since we know how much fun scheduling an appointment can be in healthcare.  Definitely feels like a stress test in many situations.  The good news is the technology is there to make this process better.

Thanks everyone for ready.  We hope you have an amazing weekend.



< + > Why AI-Enabled Throughput Tools Fail Early and What Signal Infrastructure Fixes

The following is a guest article by Steve Biko Onyambu, MD, Critical Care Physician at Abbott Northwestern Hospital Hospital leaders invest...