Tuesday, June 2, 2026

Predicting the Scientific Future: From UCSF's Robert Wachter

Robert Wachter of UCSF is both a medical leader and a futurist. In his newest book, A GIANT LEAP, he discusses AI in medical care.  From his early AI experiences in 2022, he extracted the following.

The story of whether AI would finally transform healthcare would mostly be about whether the healthcare system could implement these tools in ways that would produce better outcomes for patients, lower costs, and some relief for beleaguered doctors and nurses. 

And that, in turn, would be determined -- as much by history, politics, economics, pride, regulations, leadership, lawsuits, guilds, culture, workflows, inertia, greed, hubris, vibes, and zeitgeist as by graphics processing units, diffusion models, and neural networks.


Wachter, A Giant Leap, 2/2026, Preface.



CMS Releases Rich Cloud Database for CY2024 Claims, Medicare Part B

 If you love CMS Part B data, Christmas comes every May or June, when CMS releases extensive cloud data for all labs and all  physician providers of every CPT code.   

CMS classes this as;

Data.cms.gov

>> Provider Summary by Type of Service

>> Medicare Physician and Other Practitioners [incl labs]

Find it here:

https://data.cms.gov/provider-summary-by-type-of-service/medicare-physician-other-practitioners/medicare-physician-other-practitioners-by-provider-and-service

The 2024 data set was released on May 21, 2026.  The same source has year-by-year back files to 2013.  the 2024 data has 9,781,673 rows.   You use it by filtering - for example, every lab that got paid $1 or more for code 81479 (filter on HCPCS = 81479).

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I filtered for codes ending in M or U, plus 811, 812, 813, 814, 815.   This misses the molecular microbiology codes, which are in different ranges up in the 87000-87999 range.  

The codes I did filter - without 877 microbiology - were paid $2,813,342,286, meaning, amost 3 billion dollars.

This produces lines as "lab x code" so, for example, 81479 is split over many lines, many labs.

The top code was 81528, Exact Sciences, $306M, or 11% of all molecular payments.  Next ccame Natera, CareDx, and Caris, all for code 81479, respectively for $104M, $102M, $100M.

The top 10 codes were paid $1.2B or 41% of all molecular payments. About 30% of the top 20 lines were 81479 payments. 81479 providers were paid $572M, 95% to the top 12 billers of 81479. 81479 used only in MolDx states. Below: Click to enlarge.

click to enlarge


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I've heard there was a recent boom in uncontrolled (no LCD) payments for 81419, epilepsy panel.  I used Ctl-Alt-L to turn the highlighted "CODES" column into a drop-down-box selection column and checked only 81419.   Let's remember, just because codes like 81419 epilepsy, 81443 expanded carrier panel (e.g. cystic fibrosis), or 81440 mitochondrial genes, rapidly rose greatly in utilization and primarily in TX and FL, where Novitas did not have controlling edits, does NOT mean that anything inappropriate was occurring.   

Top payments for 81419 epilepsy panel were $73M with with half of national payments going to the top 6 epilepsy panel labs.

Note the states; TX, FL, NJ, PA, TX, FL, FX, FL.  

Nearly all labs getting paid for Epilepsy Gene Panel 81419 in Medicare, were under the Novitas and FCSO MACs, which had in recent years paid around a billion dollars for 81408 (Tier 2 code) and adjacent codes.  That's a code not covered by any other MACs, and one whose payments were apparently finally stopped by OIG.

While payments stopped for 81408 around 2023, by 2024 labs provided market access for genetics to patients under a different uncontrolled code [no LCD], 81419, literally just ten digits away in the code book.   

click to enlarge

I took the top 4 labs for 81419 (as above - FL, FL, PA, TX) and pulled all of the billing for these four NPI's for 2024.   The four labs were paid $27M for 81419 and $118M for all genetic codes.  Other leading codes from these four labs were 81440 (mitochondrial genes), 81443 (inherited conditions aka expanded carrier panel, CF etc), 81162 (BRCA).


At a glance, these genes seem medically unrelated.  One lab billed the same number of patients for 81443 and 81448, and the same number for 81181, 81183, 81343.  

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AI CORNER
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I gave the data to both Claude Opus and Chat GPTClaude noted that many of the labs - about a dozen out of 48 nominally independent labs  - billed the exact same charge, to the penny for 81419.   That's a clever observation and one I never have looked for.   Of course, that could happen for many reasons and I do not view it as suspicious.  Claude also wrote, "A single elderly Medicare beneficiary rwho medically requires an epilepsy panel + a 100-gene mitochondrial-disease panel + a prenatal-style carrier screen is not a workup that exists in nature."   Claude also asserted that many of the single-gene codes were already inside 81443, something that CMS edits should have known.   (I have not manually checked that.)

Of the four labs we checked based on high 81419 billing, one billed only 3 CPT codes, one billed 18, and the other two (both in the same city) billed about 65 codes each.  

Chat GPT studied the Excel's and opined, "The data do not look like an organic epilepsy-testing market. They look like a rapid, concentrated exploitation pattern around a high-paying, apparently weakly edited genetic CPT code, with the strongest signals in Florida/Texas, and especially around a small number of labs whose broader code portfolios show high-volume use of many unrelated genetic codes, not a coherent epilepsy-testing service line."  It tallied 7 of 48 labs billing 81419, as all being in Deerfield Beach FL.  Labs billing the same charge were as little as 1000 feet apart.

A New Commercial Source for Rapid Complete Medicare Claims Research LUMA CLAIMS

CMS has some free databases for Part B claims - like this one for annual Excel spreadsheets and this one for a cloud database x CPT code x Provider Name.  And CMS sells anonymous data files of claims data, too.

Now there's a new vender in town.  

I'll copy below an email I got today about LUMA CLAIMS dot COM.   It includes nearly real-time CMS claims processing data (through February 28, about four months ago).  Wow.    Pricing info was not readily available.

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Continuing our partnership with medicareclaimreports.com (now https://lumaclaims.com/), Parrish Law Office is pleased to announce that initial claim approval/denial information for ALL Medicare Part B CPT codes is now available from January 2020 through February 28, 2026. Using a new interactive interface, custom reports examining approval differences by Medicare Administrative Contractor, provider, and State, and time based analyses can be created. Charts, graphs, and raw data of the reports can be downloaded. The data is particularly useful in identifying approval/denial trends and issues, and where Medicare has not issued a local or national coverage determination. 


We use these reports to show that Original Medicare has been covering something when a denial asserts that the item is experimental/investigational.


If this information would be useful in your business, please contact Parrish Law Office for more information or click on this link: www.lumaclaims.com


Debra M. Parrish, Bridget Noonan

Parrish Law Offices     www.dparrishlaw.com


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https://lumaclaims.com/









Sunday, May 31, 2026

Using AI: (1) Finding Half-Remembered Papers; (2) Finding Papers of Major Importance. For: Computational Pathology.

Summary of This Long Post :Creatively Using AI at Work
Case Study: Digital Pathology

This blog begins with an unexpectedly mundane task: finding two important digital pathology papers that I could only half remember. 

You know the feeling: I recalled the ideas, but not the authors or titles. Using ChatGPT as a research assistant, I tracked down the Dawood paper on confounding and shortcut learning in H&E-to-genomics prediction and the Trost/SPARK paper on interpretable, multi-layer computational pathology. 

The conversation with AI then expanded into something more interesting: How do we identify papers that genuinely reshape a field? Along the way, ChatGPT located related author networks, suggested additional field-defining papers, and helped formulate an operational definition of a high-impact publication: a paper that future authors must cite, answer, distinguish, or defend themselves against. 

The result is both a practical demonstration of AI-assisted literature retrieval and a discussion of how scientific fields change.


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This weekend, I used Chat GPT to look up two papers from the last six months that I half-remembered, and not the first author.   (Spoiler alert: "Dawood" and "Trost.")

Then, I asked Chat GPT to find recent papers that share several authors from the Trost author list.

Then, I asked Chat GPT to find five-or-so digital pathology papers Z1, Z2, etc, from the past year, of equally high originality and potential impact.   (Impact:  Operationally: If you write a paper on on topic X in the next 12 months, it's guaranteed the editor or reviewers will require you to address [high impact paper Z.])

I'm reproducing my dialog with Chat GPT more or less as it occured.

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Saturday, May 30, 2026

A Must-Read Article: Use of Comprehensive Genomic Profiling in Metastatic Cancer of Medicare Beneficiaries

JAMA Network Open publishes a must-read paper on comprehensive genomic profiling (CGP) by Chow et al.   The paper headlines "a difference in Medicare Advantage patients" - less profiling - but the difference is tiny (25% vs 26%!).   But there are LARGE differences by geography, and LARGE differences by cancer type.

Find it here: https://jamanetwork.com/journals/jamanetworkopen/fullarticle/2849451



How was CGP defined?

First, they use the term "BGP" - broad genomic profiling - to mean 10 genes or more (including by old-school stack coding of individual oncogenes, think EGFR+KRAS+etc.)   

They count codes like 81445, 81455, PLA codes for CGP, and also count 81479, especially critical in MolDx states.  See Supplement, Table 2.  TAT wasn't an issue.  The time span was 2 months before surgery and 6 months after.  

The method picks up CGP as 81479 under Moldx; but (I believe) misses CGP performed as part of an inpatient DRG payment and not coded separately.

How was metastatic defined?

I'm not sure.  They write, "We restricted the sample to patients with metastatic cancer based on the presence of a secondary malignant neoplasm ICD-10 code (C77, C78, or C79) in the 2 months before through 6 months after their initial cancer diagnosis. Patients with a solid tumor cancer diagnosis code in the year prior to their index date were excluded, as we aimed to focus on patients with incident disease."

It's ridiculous we have a zillion ICD-10 codes and codes for "bitten by a duck on the left hand" but not clear coding for "metastatic cancer.  Insane.

What was the Medicare Advantage difference?

Statistically valid, but very tiny.   254,720 patients.  About half Medicare Advantage, median age 74, "metastatic cancer."  25.3% had CGP/BGP, of which 25.8% FFS, 24.6% MA insurance.

What was the impact of geography?

Big, but very patchy.   Here is a heat map. Range of CGP/BGP about 15%-35%.

What was the impact of cancer type?

Large; about 40% in metastatic lung cancer, about 10% in prostate and kidney cancer, and in between those find 15% in breast cancer, 25-30% in colon cancer.


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AI Corner
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Here's a summary by Chat GPT:

 

A Must-Read Article on CGP in Medicare Metastatic Cancer

JAMA Network Open has published a must-read paper by Chow et al. on the use of broad genomic profiling — what many of us would call comprehensive genomic profiling, or CGP — in Medicare beneficiaries with metastatic cancer.

The article headline, in effect, is about Medicare Advantage versus traditional fee-for-service Medicare. That is a real finding. It is statistically significant. But it is also worth saying plainly: the absolute difference is tiny. In this cohort, 25.8% of fee-for-service beneficiaries received broad genomic profiling, compared with 24.6% of Medicare Advantage beneficiaries. That is a 1.2 percentage point difference. With more than 250,000 patients, even tiny differences become statistically real. But in policy terms, the much larger story is elsewhere.

The Biggest Finding: CGP Remains Underused

The big story is that most Medicare beneficiaries with metastatic cancer did not receive broad genomic profiling at all. Overall, only about one-quarter of patients received BGP during the study window. Even among cancer types where broad genomic profiling was explicitly recommended, fewer than half of patients received it. For the precision oncology field, that should be the flashing red light.

After years of guideline development, FDA approvals, NCD 90.2, MolDx policies, commercial test growth, and endless conference panels on precision oncology, only about one in four older Medicare patients with newly diagnosed metastatic cancer received broad genomic profiling in this study.

The Medicare Advantage Difference: Real, But Small

The Medicare Advantage finding should not be dismissed, but it should be kept in proportion. The authors found FFS patients were more likely to receive BGP, with an adjusted odds ratio of 1.08 overall. The gap widened over time, and it was larger in cancers with equivocal guideline recommendations than in cancers with explicit recommendations.

That pattern is interesting. It may suggest that Medicare Advantage plans are more restrictive at the margins, especially where clinical consensus is less forceful. But the MA-versus-FFS contrast is not the dominant effect in the paper. It is a modest signal sitting inside a much larger national underuse problem.

For policy readers, the take-home message is not “Medicare Advantage blocks CGP.” The better summary is: CGP remains underused in metastatic cancer; use varies enormously by geography and tumor type; and Medicare Advantage may add a small additional access headwind, especially in less clearly guideline-mandated settings.

Geography: The Much Larger Variation

The second big story is geography. Chow et al. found striking variation across hospital referral regions, with adjusted BGP use ranging from about 14% to 36%. That is not a subtle payer effect. That is a map of uneven adoption.

In one region, a patient with metastatic cancer may have roughly a one-in-seven chance of receiving broad profiling; in another, more than one-in-three. The authors even note striking differences between nearby regions, such as San Angelo and Odessa, Texas. That kind of variation suggests local practice culture, access to oncology networks, molecular tumor boards, ordering workflows, lab relationships, and regional reimbursement habits may matter as much as — or more than — the broad category of MA versus FFS.

Cancer Type: Lung Leads, Others Lag

The third major story is cancer type. Broad genomic profiling was used far more often in lung cancer than in some other metastatic cancers. Lung cancer was around the 40% range, while prostate and kidney cancers were much lower, roughly around 10%. Breast cancer was also surprisingly low, around the mid-teens, while colorectal cancer was closer to the 25% to 30% range.

These differences are not random. They reflect the historical depth of biomarker-driven therapy in lung cancer, varying guideline strength, oncologist expectations, and perhaps the availability of obvious targeted-treatment pathways.

How Chow et al. Defined Broad Genomic Profiling

The paper uses the term BGP, for broad genomic profiling, rather than CGP. Their working definition is sequencing of 10 or more genes on a single day. That is an important operational definition. It means the authors are not just counting 500-gene panels. They are also trying to capture broader molecular testing through older billing patterns, including “stacked” individual gene codes.

The supplement is especially useful here. The authors count familiar genomic sequencing codes such as 81455 and 81456, intermediate panel code 81445, many PLA codes for named commercial tests, and unlisted molecular pathology code 81479. The inclusion of 81479 is especially important in MolDx states, where major CGP tests may appear under an unlisted code rather than a neat, named, national CPT code.

Claims Data: Powerful, But Imperfect

Claims-based CGP studies always have blind spots. If a genomic test is performed during an inpatient stay and absorbed into the DRG rather than separately billed, it may not be visible in the same way. Conversely, an algorithm that counts 81479 or stacked codes has to make assumptions about what the code represented.

Chow et al. address this thoughtfully, but the limitation is inherent in claims research. Claims are not laboratory information systems. They are billing exhaust.

How “Metastatic Cancer” Was Defined

The metastatic cancer definition is also worth pausing over. The authors define metastatic disease using secondary malignant neoplasm ICD-10 codes — C77, C78, or C79 — during the period from 2 months before through 6 months after the initial cancer diagnosis. That is a reasonable claims-based approach, but it also highlights an absurdity of our coding system.

We have ICD-10 codes for astonishingly granular events, including famously silly external-cause examples, but in real-world oncology data, “metastatic cancer” still has to be reconstructed clumsily and indirectly. 

For a health system that wants to measure quality in precision oncology, that is a serious infrastructure problem.

Policy Takeaway: This Is an Implementation Gap

This article is valuable because it gives precision oncology stakeholders a national claims-based picture of where we are. The picture is not reassuring.

Better coverage policy is part of the answer, but probably not the whole answer. The geographic findings point to implementation gaps: ordering systems, oncologist awareness, tissue pathways, reflex testing, payer prior authorization, lab contracting, and institutional habits. The cancer-type differences point to guideline clarity and therapeutic actionability. 

The claims-code issues point to the continuing difficulty of measuring modern molecular diagnostics in a payment system still built around older coding concepts.

Bottom Line

Chow et al. provide much more than a Medicare Advantage paper. They provide a snapshot of precision oncology’s incomplete diffusion into real-world Medicare cancer care. The headline may be MA versus FFS. The real story is that access to broad genomic profiling remains inconsistent, underdeveloped, and highly dependent on where the patient lives and what cancer label appears on the claim.

 



Thursday, May 28, 2026

NGS MAC Updates LCD in a Few Weeks

 I hear many people complain that it takes years - literally, years - to get updates to LCDs, let alone, consider opening a NEW LCD on some topic.

As shown below, the NGS MAC proposed some edits to its molecular LCD in April, the comment period closed on May 16, and the revised LCD was posted on May 28.  Including responses to 2 submitted comments.

Yay team.

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While the CMS name on the document is "National Government Services MAC" the organization refers to itself as "Wellpoint Federal" and the CMD emails are the domain Elevance, which has some relationship to the historic Anthem BCBS.  (See my blog on the MAC and MAC Parent name merry-go-round.)



Wednesday, May 27, 2026

Can AI Write Deep Strategic Business Reports? We Compare Claude and ChatGPT on "Digital Pathology"

 Can AI Write Deep Strategic Business Reports?

More and more, I am seeing complex reports automatically generated by Claude Opus 4.7 and by Chat GPT, especially in its "deep research" mode.  (I have the $20 subscriptions to each).

I gave both AI's a prompt to do a business analysis of two competitors in the digital pathology space (I chose Philips and Roche).  Claude Opus took about 15 minutes to generate a 13-page report.   Chat GPT in "deep research" mode took about a half hour for a ten-page report.

Here's the take-home lesson, per Chat GPT:

  • Two LLMs were given the same business-research prompt: compare Philips and Roche/Ventana in the U.S. digital pathology market. 
  • The results were both useful, but revealingly different. 
    • Claude Opus produced the more vivid strategy memo, framing Philips as a “platform-of-platforms” and Roche as an integrated diagnostic “system of record.” 
    • ChatGPT Deep Research produced the more cautious diligence brief, emphasizing FDA status, RUO caveats, U.S. commercialization limits, and reimbursement realities. 
  • In short: Claude gave the sharper narrative; ChatGPT gave the safer client memo.
Find the full 27-page PDF, which opens with a two-page comparison, and then reproduces each report in full.







Tuesday, May 26, 2026

How MACs Price Major Services That Lack Fixed RVU's (Case Study: PET CT)

Header: AMA CPT has created some new Category III codes for whole-slide imaging proprietary tests.  However, as of May 26, CMS has NOT added these clinical laboratory codes to the summer CLFS pricing process.   What happens to Category III codes in terms of MAC pricing?

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CMS assigns RVU-based national prices to nearly all AMA CPT codes in Category I (aside from clinical laboratory tests).   However, one counter-example is PET-CT, which does have fixed, national prices for physician interpretation (around $100) but there is no national Part B price for the technical component, or for the global service (meaing, scan + interpretation) in the non facility setting.

In the facility setting, Medicare sets a hospital outpatient rate (about $1400 for 78815, varies with geography).  This is via the ambulatory payment classification (APC) of code 78815 under OPPS policy.

In the non-facility setting, where >800,000 PET CT scans are performed, MACs set prices for 78815 for the technical component (or the global claim).   

In a nutshell, high-end prices, probably for global claims, ran to the $2300 range in California.  There was a plateau of pricing from about $1300 to $1700.   There was a sharp drop-off with claims paid in the  $200-$900 range, and then many claims in the $120 range (interpretation only on the RVU fee schedule).

For comparison, CMS pays about $1400 for the technical component of 78815 PET CT in the hospital outpatient setting (with regional adjustments.)

What's it mean?

First, it's tricky, since the Part B database I'm pulling from lumps together all forms of Part B 78815 payment (whether PC only, TC only, or global).

California TC Can Be Rationalized. MAC behavior when freed from RVU pricing is confusing.   Generally, the maximum Part B RVU delta in low to high priced areas is +50% of the base RVU rate (e.g. for 88361, computer assisted IHC, TC or global). 

This +50% geographic hike for priced RVUs across geographies would lift the $1400 hospital outpatient APC to the $2000 range, exactly what we see in California.   So it's reasonable to guess that Noridian used the APC price of $1400 and the regional multiplier (in SF, LA, etc) of +50% to get around $2000.

Payments $200-900 Seem Damn Odd.  It's unclear how you get the prices between $200 and $1000.   

  • If these are TC alone, the prices seem "too low," at least, compared to the  APC benchmark of $1400.   
  • On the other hand, if these are professional component alone, it should be impossible to pay over the $100-150 range due to fee schedules for 78815-26.   

Take-Home Lesson for WSI Codes

Based on AMA CPT Summary of Panel Actions documents, at the February Palm Springs meeting they created two WSI codes (X568T, X569T), final code text to be released 7/1/2026.   At the May Boston meeting, they created additional WSI codes for breast and prostate cancer respectively (X623T, X624T), I believe also to be released 7/1/2026.   

If CMS continues to leave these "off" the summer lab meeting schedule, then they will be included in summer policymaking for the Hospital Outpatient (OPPS) environment, and assigned to pathology category prices or new tech category prices for OPPS.   

MACs may use these Category III OPPS prices as reference prices for Category III codes in Part B, just like MACs used the APC price $1400 for 78815 as a reference price for Part B.


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Sidebar:
Using Chat GPT for Data Analysis

I downloaded all Part B payments for 78815, PET CT, for CY2024.  

I asked Chat GPT to compare pricing >$1978 with pricing in the band $909-1197 (low, but believable for TC).

Over $1978

Click to enlarge

$909-1197
Click to enlarge

Chat GPT adds this text:

The contrast is striking. The high-payment band is not a general national distribution; it is dominated by California, with a bit of New York. The low-payment band is much more of a multi-state pattern, led by SC, OH, FL, MN, TN, and scattered others.

Both bands in the spreadsheet are Place of Service “O” lines, so this comparison appears to be within the office/nonfacility physician-supplier world, not hospital outpatient OPPS. That makes the spread more interesting: for 78815 technical/global office PET/CT, allowed amounts are not converging around a single national TC price. Instead, the data look like a patchwork of MAC/locality/carrier-priced technical-component behavior, with California standing out at the high end.

The policy takeaway is that although the physician interpretation of 78815-26 is nationally PFS-priced, the nonfacility technical economics of PET/CT remain quite variable. In this slice, the high band is roughly double the lower band: about $2,183 weighted average versus $1,073 weighted average. That is a large swing for what is nominally the same PET/CT skull-base-to-mid-thigh service.


United Healthcare Publishes Variations from "Date of Service" Rule

Medicare's date of service (DOS) rule for laboratory tests - often given the name, "14 day rule" - gets a new spin in a publication from United Healthcare affecting millions of beneficiaries.

Thanks to Ashley Zarling for highlighting the event at LinkedIn.

CMS Date of Service.  Since about 2001, CMS has set the "date of service" rule for lab tests - both clin lab & pathology - as teh date of specimen collection, and separate rules (not the DOS regulation itself) often lead to hospital inpatient and outpatient lab tests being bundled and not separately payable.  CMS bundles all inpatient lab tests, even those ordered 13 days after hospital discharge, to the hospital inpatient DRG, and CMs bundles most lab tests for outpatients to hospital outpatient events like office or ER visits, tagging them with a "status indicator" for bundling or, rarely, separate payment.  42 CFR 414.510   See also an explanatory webpage at CMS.

Medicare Advantage plans don't have to follow this rule, although I suspect they usually do, and other commercial insurance plans definitely don't have to follow this rule - but they may often elect to, by stating that as a first principle, Medicare billing rules will be followed.

New Rule at United Healthcare

The new rule at United Healthcare was published May 1, 2026, as new "Question 9" of document  2026R0111B, rules for submitting a 1500 claim form.  United states that, "This reimbursement policy applies to all health care services billed on CMS 1500 forms and, when specified, to those billed on UB04 forms."

The rules have a number of entries about United's use of MolDx and Z-codes.

Q: Which date should be submitted on the claim for reflex testing?

A: According to CMS, when reflex testing is performed, the date of service (DOS) submitted for each test must be the date the reflex test itself is performed, not the date the original specimen was collected.

I'm not sure exactly where United gets this rule from ("Accoding to CMS...").   United has a blanket reference for all its rule, referring to CMS, CMS Manuals, or Other CMS Publications.

Without knowing a written exception, I would have said the date of reflex testing would generally be the date of specimen collection - the master CMS rule for DOS, unless the test was ordered > 14 days after inpatient or outpatient discharge.   

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https://www.uhcprovider.com/content/dam/provider/docs/public/policies/comm-reimbursement/COMM-Molecular-Pathology-Policy-Professional-Facility.pdf

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See a "deep dive" AI written research article on DOS back to the 1990s, here.

Saturday, May 23, 2026

Upending the MAC System: Bold Idea Proposed for a Radically Different MAC

Unhappy with your local MAC?  Waiting til you-know-where freezes over before they can issue a new LCD?   Anderson/Jackson/Miller have a new proposal to up-end the current A-B MAC system through ongoing, operational competition.

https://papers.ssrn.com/sol3/papers.cfm?abstract_id=6624938


I've read it; you should read it; it's open access; Claude Opus 4.7 read it, and tells us about it below.


The paper is 16 pages long, with 79 footnotes and a number of interesting tables and illustrations. The first author Anderson is from Tufts, the last author Miller from Stanford/Hopkins, and the middle author Jackson appears to be at the WPS MAC itself.

Note that Miller is serving his second term as a board member of MEDPAC, the official advisory body on Medicare policy, which gives this publication additional interest to policy-watchers.

I'm not asserting the proposal is "likely" but it is interesting and "shakes the box" in terms of new ideas.

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AI Corner: Claude Opus 4.7

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Medicare's Hidden Backbone:
Why MAC Reform Is the Overlooked Lever Everyone in Healthcare Innovation Should Care About

Three-sentence summary: A new paper by Anderson, Jackson, and Miller argues that the most underused opportunity to modernize traditional fee-for-service Medicare isn't benefit redesign — it's overhauling the Medicare Administrative Contractor (MAC) system, which currently runs as twelve regional monopolies focused on grinding through claims rather than serving beneficiaries. 

The authors propose moving to a multi-MAC competitive model (roughly three per region) in which beneficiaries choose their administrator annually, MACs compete on Part B premium rebates, provider access, and speed of covering new technologies, and program integrity functions get folded back into claims operations. 

  • Done right, this is budget-neutral, shrinks systemic operational risk, and finally rewards MACs for doing things like saying "yes" to a new device in something less than geological time.


The article: Anderson et al.

If you work in biotech, devices, or diagnostics, you have almost certainly run into the MAC system — usually at the worst possible moment. Your CE-marked, FDA-cleared, peer-reviewed-evidence-supported technology lands on the desk of a regional MAC medical director, and then… nothing. For months. Sometimes years. The Local Coverage Determination (LCD) process is famously the place where reasonable timelines go to die. To borrow the Charles Barsotti New Yorker cartoon: "How about never? Does never work for you?" That, in essence, is the timetable many innovators experience. Anderson, Jackson, and Miller's new paper, "The Forgotten Opportunity: Improving Traditional Medicare Operations," argues that this isn't a quirk of the system — it is the system, and it's fixable.

The status quo, briefly. CMS contracts with twelve Part A/B MACs and four DME MACs, each holding a regional monopoly over claims processing, coverage policy, and provider-facing operations for traditional Medicare. Together they touch about 34 million beneficiaries, 1.2 million providers, and roughly $431.5 billion in annual FFS payments. Contracts run up to ten years on a cost-plus-award-fee basis, and — strikingly — no new entrant has won a MAC jurisdiction since the program began in 2003. CMS, terrified of "crashing" Medicare claims processing during a transition, has become structurally risk-averse, which entrenches incumbents and stifles innovation. Meanwhile, program integrity has been carved off into a separate, fragmented contractor ecosystem (UPICs, CERT, Strike Force teams), improper payment rates sit at 7.66% ($31.7 billion in FY2024), and LCDs vary so much across jurisdictions that the same device can be covered in Florida and denied in Oregon. Beneficiaries — the people the program ostensibly exists to serve — have essentially no voice in any of this. They don't pick a MAC. They don't even know who their MAC is.

The proposal. The authors want to flip the model. Instead of one monopoly administrator per region, CMS would contract with roughly three MACs per jurisdiction, and beneficiaries would choose among them during the annual Medicare open enrollment window (Oct 15–Dec 7). MACs would then compete on three dimensions: (1) price — returning fraud-and-waste savings to beneficiaries as Part B premium rebates; (2) access — using performance dollars to boost provider payments in underserved specialties like behavioral health (where only about a third of psychiatrists currently bill Medicare Part B) or rural geographies; and (3) innovation — covering new technologies and services faster than the competition. Program integrity work would be reintegrated into MAC operations, with CMS's Center for Program Integrity repositioned as a regulator-of-MACs rather than a direct operator — mirroring how CMS already oversees Medicare Advantage plans. The any-willing-provider standard stays. The benefit package stays. What changes is that FFS Medicare finally starts behaving like a real health plan, with regional administrators accountable to the people whose care they're paying for.

Why this matters specifically for the innovation economy. Today, a device or diagnostic company has to run an LCD gauntlet that is slow, opaque, and inconsistent. Under a multi-MAC model, a manufacturer with strong evidence could potentially get to "yes" with at least one MAC in a region quickly, and competitive pressure would push others to follow. The current system rewards saying "no" or "later" because there's no downside — no MAC loses customers when it stalls. Add genuine choice and suddenly there's a downside. The authors also note that variation in coverage, currently treated as a bug, becomes a feature: a beneficiary who wants access to, say, AI-interpreted imaging or an emerging remote diagnostic could pick the MAC that covers it. For diagnostics companies especially — which often live or die on LCD timing — this would be transformative.

Opportunities worth highlighting. Beyond faster coverage, the model unlocks several things the current system structurally cannot deliver. Embedding fraud analytics directly into claims workflows (rather than bolting them on through separate UPIC contractors) would enable real-time detection rather than the current pay-and-chase model. Competition would push MACs to invest in machine learning, modern provider portals, and the kind of consumer-facing tooling that MA plans have spent a decade building. A revamped Medicare Plan Finder could finally give beneficiaries an apples-to-apples comparison across MA plans, MAC + Medigap + Part D bundles, with provider networks and drug formularies side by side — something that does not meaningfully exist today. And critically, the reform is budget-neutral: the financial engine is recovered fraud and waste, not new appropriations. In a fiscal environment where Medicare trust fund pressure is intensifying and any proposal requiring new spending is politically dead on arrival, that matters.

The risks and drawbacks — and they're real. I'd be doing you a disservice not to flag them. First, beneficiary choice fatigue. Medicare beneficiaries already face a notoriously complex annual decision among MA plans, Part D plans, and Medigap policies; adding MAC selection to the pile could overwhelm seniors, especially those with cognitive decline or limited digital literacy. The paper acknowledges this and calls for investment in SHIP counselors and Plan Finder upgrades, but the implementation risk is non-trivial — and broker incentives in MA have shown how easily "choice" architecture can be manipulated. Second, fragmentation of coverage policy. The current LCD inconsistency the authors criticize could, under a multi-MAC model, get worse before it gets better: now a beneficiary in the same zip code could have different coverage than their neighbor based on which MAC they picked. For physicians treating patients across MACs in one region, this would be an administrative headache. Third, the cherry-picking problem. MACs bear no actuarial risk in this model, but they may still face soft incentives to attract healthier, lower-touch beneficiaries (fewer claims, fewer complaints, easier metrics). MA already struggles with risk selection despite risk adjustment; importing competition into FFS could replicate that pathology. Fourth, provider whiplash. Providers would now need to deal with three MACs per region instead of one, each potentially with different LCDs, different prior auth rules (if WISeR-style utilization review expands), different portals, and different appeals processes. The paper's vision of "non-price competition" on provider payment is appealing, but variable fee schedules within a single region would create real administrative burden and could distort referral patterns. Fifth — and this is mine, not the authors' — there's the question of what happens to small or rural providers if a MAC fails or exits. The paper argues multi-MAC reduces single-vendor risk, which is true at the regional level, but a failing MAC's beneficiaries still need to move somewhere, and the transition mechanics in a system with active beneficiary enrollment are more complex than the paper fully works through.

The bottom line. Whether you're building a Class III implant, a novel molecular diagnostic, a digital therapeutic, or you're just a Medicare beneficiary who'd like your claims questions answered by a human who knows your name, the MAC system is upstream of almost everything that frustrates you about traditional Medicare. Anderson, Jackson, and Miller have written the rare health policy paper that identifies a genuinely overlooked lever — one that doesn't require new mandatory spending, doesn't blow up the any-willing-provider promise that defines FFS Medicare, and aligns nicely with the agency's stated direction of being a regulator more than an operator. The implementation risks are real and the paper is more confident about the upside than I'd be. But the status quo — "How about never?" — is no longer defensible, and a serious conversation about what comes next is overdue.


Reference: Anderson LT, Jackson K, Miller BJ. "The Forgotten Opportunity: Improving Traditional Medicare Operations." SSRN, April 21, 2026.   

https://papers.ssrn.com/sol3/papers.cfm?abstract_id=6624938

See a humorous view auto-written by Chat GPT  "Whazzup."

Wednesday, May 20, 2026

Dunn Introduces H.R. 8890, Enhanced CLIA - Deja Vu Again

There have been a few attempts at "Enhanced CLIA" legislation, and there's a new kid in town: H.R. 8890.

It's introduced by Congr. Dunn of Florida, who recently introduced an "Improve LCDs" bill (here).

The legislative language of H.R. 8890 is NOT posted yet but will appear here.

(See page pdf 74 of Congressional Record here.)

See early coverage at Genomeweb here.   See an article by Alex Dickinson at LinkedIn here.

See Congr. Dunn press here.   And see a generally supportive comment by ACLA, here.

I'll reserve more detailed comment for when the actual legislative language is public.  In the meantime, here are the five bullets used in the Dunn press release.

____

The Enhancing CLIA Act would:

  1. Direct CMS to establish a transparent and publicly accessible database with key information regarding laboratory developed testing services (LDTs), including summaries of performance specifications and validation information
  2. Reaffirm that LDTs are professional services regulated by CMS under CLIA
  3. Clarify that LDTs include innovative analyses of digital laboratory information, such as genomic data derived from previously-sequenced patient samples
  4. Leverage existing review and oversight mechanisms to allow laboratories to voluntarily obtain confirmation from a recognized third party that an LDT is analytically and clinically valid
  5. Establish centralized error reporting and bolster CMS oversight authority if credible information indicates an LDT lacks analytical or clinical validity



Senate Resolution would put Part B Prior Auth (WISeR) on Chopping Block

HEADER: A  new Senate resolution seeks to overturn CMS’s WISeR pilot.  This is the CMMI Medicare model that applies AI-supported prior authorization to selected services considered vulnerable to waste or inappropriate use.

  • I wrote about some glitches in WISeR on May 11.

Senate Democrats, led by Ron Wyden, Maria Cantwell, Richard Blumenthal, and Kirsten Gillibrand, argue that the model risks importing the burdens of private-plan prior authorization into traditional Medicare, where such controls have historically been uncommon. 

CMS describes WISeR as a targeted fraud-and-waste initiative focused on services such as skin and tissue substitutes and epidural steroid injections (in its Version 01, no genomic tests.) Critics counter that prior authorization can delay care, increase administrative burden, and place algorithmic tools between physicians and beneficiaries. The political opening came after GAO concluded that WISeR is agency rulemaking subject to the Congressional Review Act, despite HHS’s earlier position that the notice was merely guidance. That decision gives Congress a procedural path to force a vote on repealing the model.

Falls under CRA Congressional Review Act


Monday, May 18, 2026

Augmented AI and AMA Thinking: Wishful Thinking?

There's a new paper going the rounds of commentary at Linked In:

Open access; find it here.

See comment at LinkedIn by Jan Beger here.  And a view from Robert Lauritzen here.  (And see another, related, from Lauritzen, here.)

Cuocolo & Huisman are from Italy and the Netherlands; the paper is in European Radiology; the thesis is that many clinicians and policymakers strike the position (or strike the pose) that AI will not replace physician work but "augment" it.  

This thinking, or rhetoric, isn't only across-the-pond.   The AMA has a position paper on AI ("Appendix S") that makes the biggest section of AI something called "augmentative" software services.  These by definition do not replace physician work but "augment" it.

To see this position taken apart, read the links above.

I have seen the same position taken a couple times, at least, in press releases or speeches from AMA in the U.S.    Below, I asked Chat GPT agentic/internet mode to find quotes where the AMA says this.   By the way, the Chat GPT replaced, rather than augmented, my work on that score.

  1. “Augmented intelligence … [is] designed to enhance—not replace—physicians.”
    —AMA CEO John Whyte, MD, MPH, 2026 press release.
    https://www.ama-assn.org/press-center/ama-press-releases/ama-ai-usage-among-doctors-doubles-confidence-technology-grows

  2. “Health care AI should be understood as a tool to augment professional clinical judgment, not a technology to replace or override it.”
    —AMA Journal of Ethics discussing AMA policy.
    https://journalofethics.ama-assn.org/article/making-policy-augmented-intelligence-health-care/2019-02

  3. AMA uses “augmented intelligence” rather than “artificial intelligence” because AI tools “support rather than explicitly replace human decision-making.”
    —AMA report: Future of Health: The Emerging Landscape of Augmented Intelligence in Health Care.
    https://www.ama-assn.org/system/files/future-health-augmented-intelligence-health-care.pdf

  4. AI is “intended to co-exist with human decision-making” and “should not be used to replace physician reasoning and knowledge.”
    —AMA House of Delegates augmented intelligence principles.
    https://www.ama-assn.org/system/files/a24-246.pdf

  5. “Augmented intelligence must not replace or diminish the patient-physician relationship.”
    —AMA House of Delegates principles.
    https://www.ama-assn.org/system/files/a24-246.pdf

  6. “The real promise of health care AI is to enhance the work of physicians … not to replace them.”
    —AMA article on AI workflow.
    https://www.ama-assn.org/practice-management/digital-health/3-ways-medical-ai-can-improve-workflow-physicians

  7. AMA says AI should “enhance physician intelligence, not replace it.”
    —AMA article on healthcare AI.
    https://www.ama-assn.org/practice-management/digital-health/4-ways-health-care-ai-could-help-physicians-work

  8. “AI is not going to replace doctors—but doctors who use AI will replace those who don’t.”
    —AMA President Jesse Ehrenfeld, MD, MPH.
    https://www.ama-assn.org/practice-management/digital-health/ai-already-reshaping-care-heres-what-it-means-doctors

  9. “AI’s role is to help health care professionals, not replace them.”
    —AMA implementation guidance.
    https://www.ama-assn.org/practice-management/digital-health/implement-health-ai-first-decide-who-s-accountable

[Chat GPT added] A subtle but important point in AMA rhetoric is that they deliberately prefer the term “augmented intelligence” over “artificial intelligence.” That terminology itself is almost a policy statement: AI is framed as an assistant to physician cognition and workflow rather than as an autonomous substitute for physicians. 

###

###

A 150-word AI version of this blog.

A new paper in European Radiology by Cuocolo and Huisman is stirring unusually sharp debate on LinkedIn and elsewhere. The paper questions a now-familiar refrain in medicine: that artificial intelligence will “augment” physician work, rather than replace it. Critics argue that this language may be less a prediction than a rhetorical strategy designed to make AI adoption more politically and professionally acceptable.

The issue is hardly confined to Europe. In the United States, the AMA has repeatedly framed AI as “augmented intelligence,” emphasizing that these systems are intended to support—not replace—physician judgment. In fact, the AMA’s evolving AI framework (“Appendix S”) places major emphasis on “augmentative” software services.

Yet the economic logic of AI in other industries has often centered on labor substitution, not coexistence. As noted in Quinn's blog, even gathering AMA quotations on “augmentation” was efficiently handled by ChatGPT itself—ironically replacing, rather than augmenting, his own research work.

Friday, May 15, 2026

Dr Bien-Willner Is Departing MolDx - An Update

 

Gabriel Bien-Willner to
Transition Out of
MolDX Medical Director Role

May 15, 2025  (Columbia, SC)
LinkedIn by GBW: here.

Gabriel A. Bien-Willner, MD, PhD, the medical director most closely associated with the modern expansion of Palmetto GBA’s MolDX program, has announced that he will transition out of the MolDX Medical Director role as Palmetto seeks a successor.

The move is significant because MolDX is no longer a niche Medicare contractor initiative. Under Bien-Willner’s tenure, it became one of the most influential operating systems for molecular diagnostics reimbursement in the United States — combining test registration, Z-Code identification, evidence review, coverage policy, pricing, and claims edits into a single payer-facing architecture.

Bien-Willner said he will remain at Palmetto during the transition and emphasized that MolDX operations will continue. He also noted that his recent role has been largely one of oversight, suggesting that day-to-day program functions are now embedded in a broader MolDX team rather than dependent on a single physician leader.

An "Unusually Relevant" Background 

Bien-Willner brought an unusually relevant background to the role. He is a physician-scientist trained in pathology and molecular genetics, with an MD/PhD from Baylor College of Medicine and clinical training at Washington University in St. Louis. Before joining Palmetto, he worked in molecular pathology, genomics, and diagnostic laboratory leadership, giving him fluency in both the science of advanced testing and the operational realities of laboratory medicine.

Thursday, May 14, 2026

Digital Pathology Dollars. Re-live the Film-Digital Switchover at the RVU Ranch.


What’s Past Is Prologue: 

Medicare, Radiology, and the Strange Migration from Film to Digital

##

The CMS-RVU migration from film to digital radiology was not simply a technology upgrade; it became a revealing Medicare payment episode. 

Around 2013–2017, CMS and the AMA/RUC translated the disappearance of film, processors, view boxes, and related supplies into the mechanics of practice expense RVUs. Film-era inputs were removed from hundreds of imaging codes, PACS workstations were added, and CMS estimated about $240 million in annual budget-neutral redistribution—small relative to the whole Physician Fee Schedule, but roughly 5% of radiology’s Medicare allowed charges.

The episode had a distinctive mood: inevitability, suspicion, and invoice-driven trench warfare. Radiology accepted that film was obsolete but argued that CMS was underpricing the digital replacement by treating PACS like a desktop computer. 

The history is not a perfect parallel to digital pathology or AI, but it is a useful prologue. It shows how Medicare recognizes technology transitions: slowly, mechanically, and only when costs can be named, priced, and mapped to codes.