惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

Threat Intelligence Blog | Flashpoint
Threat Intelligence Blog | Flashpoint
MyScale Blog
MyScale Blog
Jina AI
Jina AI
爱范儿
爱范儿
cs.CL updates on arXiv.org
cs.CL updates on arXiv.org
I
Intezer
The Cloudflare Blog
T
Threat Research - Cisco Blogs
G
Google Developers Blog
Stack Overflow Blog
Stack Overflow Blog
freeCodeCamp Programming Tutorials: Python, JavaScript, Git & More
D
Docker
AI
AI
Scott Helme
Scott Helme
Attack and Defense Labs
Attack and Defense Labs
让小产品的独立变现更简单 - ezindie.com
让小产品的独立变现更简单 - ezindie.com
L
LangChain Blog
Recent Announcements
Recent Announcements
Security Latest
Security Latest
Hugging Face - Blog
Hugging Face - Blog
W
WeLiveSecurity
Last Week in AI
Last Week in AI
Security Archives - TechRepublic
Security Archives - TechRepublic
OSCHINA 社区最新新闻
OSCHINA 社区最新新闻
P
Proofpoint News Feed
S
Securelist
S
Security Affairs
Project Zero
Project Zero
博客园 - 叶小钗
Google DeepMind News
Google DeepMind News
T
Tor Project blog
A
About on SuperTechFans
V2EX - 技术
V2EX - 技术
宝玉的分享
宝玉的分享
T
Tenable Blog
博客园 - 聂微东
人人都是产品经理
人人都是产品经理
Simon Willison's Weblog
Simon Willison's Weblog
Forbes - Security
Forbes - Security
K
KPMG report finds enterprise disconnect between AI and its ROI | CIO
V
V2EX
AWS News Blog
AWS News Blog
The GitHub Blog
The GitHub Blog
酷 壳 – CoolShell
酷 壳 – CoolShell
P
Privacy & Cybersecurity Law Blog
阮一峰的网络日志
阮一峰的网络日志
I
InfoQ
C
CXSECURITY Database RSS Feed - CXSecurity.com
H
Hacker News: Front Page
美团技术团队

Forbes - Healthcare

How to Prevent Domestic Violence Deaths UK Smoking Ban Highlights Debate Over The Proper Function Of Government What To Do When Someone You Love Has Cancer Psychedelic Medicine Goes Mainstream: Breakthrough or Bubble? Humana Profits Eclipse $1 Billion As Medicare Costs Ease Slightly What Are Peptides And Why Is Everyone Talking About Them? Tonsillectomy Doesn’t Lead To Illness, But Tonsillitis Just Might Does Retail Pharmacy Have A Tower Records Problem? Precision Radiation Therapy Could Offer New Hope For Hard-To-Treat Cancers Centene’s Obamacare Enrollment Drops By 2 Million After Congress Strips Subsidies RFK Jr.’s Messaging Could Be Impacting Food And Pharmaceutical Choices Over A Million Road Crash Deaths Annually Prompt $350 Million Investment Breast Cancer Screening Tool Avoids Radiation, Compression, Contrast Large Study Finds Benefits Of Doula Care On Postpartum Outcomes TrumpRx Has Signed Deals With Nearly Every Major Drugmaker. Are Prices Actually Falling? America Can’t Lower Healthcare Costs Without A Moonshot Trump’s Orders Elevate The Medical Status Of Psychedelics And Cannabis Mark Cuban’s Cost Plus Drugs, Humana Partner To Take On Employer Drug Costs Cell, Gene And Specialty Drug Costs Intensify For Health Plans U.S. Tennis Participation Continues Growth. Up 54 Percent Since 2019 New AMA Study Finds Burnout Is Decreasing Among Medical Residents And Fellows Daytime Naps May Be A Sign Of Serious Health Problems, Study Reveals New Antibody Drugs Target Disease From Within Concierge Medicine Was Built For The Few. Here’s How To Open It To The Many Burnout in Medicine Is Still Prevalent, With Emergency Medicine Leading Who Is Actually Qualified To Give Advice On Peptides And Who Isn’t What the 49ers Can Teach Leaders About Handling False And Misleading Narratives Do Older Adults Need Routine Colonoscopies Or Low Thyroid Drugs? Your Period, Your Proteins, Your Health Doctors Say Hegseth’s Flu Vaccine Decision Will Weaken Military Readiness Where Bullets Fly, Malaria Kills Using AI To Personalize Healthcare–Without Losing Patient Trust Progress For Preeclampsia Allowing Our Military To Refuse Flu Vaccination Is A Bad Idea. Here’s Why Can Vaccine Development Weather Political Storms? A Virus From Farmed Seafood Is Causing A New Eye Disease In People Elevance Health Profits Eclipse $1.7 Billion Despite Elevated Costs The UK Passes A Lifetime Smoking Ban. Could America Be Next? There's No Such Thing As Brain Honey UnitedHealth Group Profits Eclipse $6 Billion As Medical Costs Ease AI Is Already Here. The Real Risk In Public Health Is Sitting It Out UnitedHealthcare Reduces Need For Prior Approvals For Patients In Rural America Why No Child Should Have To Sacrifice School To Care For Their Family Oscar Health Launches Consumer Marketplace For Insurance Beyond Its Own Calling The Iconic 867-5309 Now Goes To A Cancer Helpline FDA Lists Xanax Recall. Here’s What You Need To Know What Trump’s Ibogaine Executive Order Means For Veterans With PTSD 20 Years Of Priority Review Vouchers, A Tool For Spurring Needed Drugs Rotavirus Is Surging Across The US — Here’s What Parents Need To Know Leadership Dysfunctional In Healthcare: “Split The Baby” Thinking ‘Bedtime Stacking’ Trends On TikTok. Here Are The Risks Why Do Weight Loss Drugs Work For Some And Not Others? It’s In The Genes Hospital Safety: How to Avoid Medical Errors and Protect Yourself Medicare Can Save $4 Billion On Four Cancer Drugs — Can You Guess Which Ones? After 25 Years Of Consumer-Directed Healthcare, What’s Missing? This Sam Altman-Backed $1.8 Billion Startup Bets AI Can Get Drugs Through Clinical Trials Faster RFK Jr. Pushes To Expand Access To Peptides. A Doctor Explains The Risks How The Trump Administration Is Blocking Access To Home Care Genome Sequencing Solves Rare Disease Mysteries Breakthrough HIV Drug Is Out Of Reach For Many Who Need It Most New Drug Protects Against Life-Threatening Pancreatitis This Pill May Help Pancreatic Cancer Patients Live Longer What Should We Do When The Patient Is Racist? Attention Turns To UnitedHealth Earnings For Signs Of Insurer Rebound New Pancreatic Cancer Drug Nearly Doubles Survival. Here’s What Patients Should Know Why Sex Exists A Novel Approach To The Treatment Of Antibiotic Resistant Infections Democrat-Leaning Plan Takes Aim At Health Plans With New Regulations Trump Administration Weighs Default Medicare Advantage Plans For Seniors An AI System Passed Peer Review. The Scientific Community Isn’t Ready Prior Authorization Reform Is Here — And It Could Change How Millions Get Care The More We Add To U.S. Healthcare, The Worse It Gets How Two Sisters Built A $1 Billion HealthTech Unicorn CDC Delays Reporting Of COVID-19 Vaccine Benefits—Here’s What To Know This Startup Wants To Use AI To Help Digitize History Are Nicotine Pouches Like Zyn And VELO Safe To Use? A Doctor Answers America’s Healthcare Innovation Problem GLP-1 Weight Loss Drugs Are Easy To Get—But Are They Safe? Why Cleveland Clinic Chose This AI Startup To Rewire Key Healthcare Operations Upset About The High Price Of Your Hospital Stay? Medicaid Cuts Might Be To Blame Trump’s New Pharmaceutical Tariffs Will Hit Small Drugmakers Hardest A New Way To Target Metastatic Cancer What A Florida Birth Case Reveals About Post-Dobbs Maternal Healthcare 5 Reasons Why the Medicare Program Can’t Go Broke Lowering Healthcare Costs Without A Disastrous Government-Run Model Promising Study Links Coffee Consumption To Reduced Dementia Risk Gene Regulation May Control How Long We Live Health Insurers Get 2.5% Medicare Rate Hike They Feared Would Be Flat Engineered Antibodies Pry Apart The Most Difficult Viruses Centene Latest Health Insurer To Shakeup Management Ranks 1.6 Million Teens Are Vaping. Health Risks Are Worse Than You Think Increasing Burdens Medical Debt And Bankruptcy Are Uniquely American Medicaid Work Requirements Go Live Soon. Here’s How Many Could Lose Coverage What SpaceX’s IPO Means For The Space Economy Thus Far, Most Favored Nation Drug Prices Have Had Little Impact FDA Approves New Oral Weight Loss Pill Foundayo — Here’s What To Know ‘Medicare By Choice’ Plans Could Work, But More Details Needed Criticism of NFL's Rooney Rule Misses How Hiring Actually Works Navigating Health In The Age Of Misinformation NASA Artemis II astronaut health risks explained
Acting CDC Director Jay Bhattacharya Called A Vaccine Study Design 'Crap.' What The Test-Negative Design Is And How We Know Whether Vaccines Measured With It Are Effective
John Drake, · 2026-05-12 · via Forbes - Healthcare
NIH Director Nominee Jayanta Bhattacharya Testifies In Senate Hearing

WASHINGTON, DC - MARCH 5: Jayanta Bhattacharya, U.S. President Donald Trump's nominee to be Director of the National Institutes of Health, speaks at his confirmation hearing before the Senate Committee on Health, Education, Labor, and Pensions on Capitol Hill on March 5, 2025 in Washington, DC. A Stanford University professor, Bhattacharya spoke out about shutdowns and vaccine policies during the COVID-19 pandemic. (Photo by Andrew Harnik/Getty Images)

Getty Images

As The Washington Post first reported, Jay Bhattacharya, the acting CDC director, recently blocked a routine study on COVID-19 vaccine effectiveness from publication in the agency’s Morbidity and Mortality Weekly Report. The study found that this season’s vaccines reduced hospitalizations among healthy adults by roughly half. His objection was methodological. Now, Science reports that at an April workshop convened by the National Academies of Sciences, Engineering, and Medicine, Bhattacharya called the study’s methodology “crap” and “logistically ridiculous,” adding: “Any econometrician that you show this method to will go, are you freaking kidding me?”

The method is called the test-negative design, and it has been used to estimate vaccine effectiveness against influenza and other respiratory viruses for two decades.

The statistical questions Bhattacharya raises are not frivolous. But the scientific literature on this method is far more developed than his remarks suggest.

How the Test-Negative Design Works

The test-negative design is a variant of the case-control study. In the case of the COVID-19 study, for instance, patients presenting at clinics with acute respiratory illness are all tested for the pathogen of interest, typically by PCR. Those who test positive are classified as cases. Those who test negative become controls. Vaccine effectiveness is estimated by comparing vaccination rates between the two groups.

The key statistic is the odds ratio. Consider a simple example. Among 100 patients who test positive for influenza, suppose 20 are vaccinated and 80 are not. Among 100 who test negative, suppose 50 are vaccinated and 50 are not. The odds of vaccination among the positives are 20/80 = 0.25. The odds among the negatives are 50/50 = 1.0. The odds ratio is 0.25/1.0 = 0.25, and vaccine effectiveness is estimated as 1 minus the odds ratio, or 75%. As epidemiologists Natalie Dean and Avnika Amin explained in JAMA, in practice this is done with logistic regression, adjusting for confounders like age, calendar time, comorbidities and geographic location.

The design exists to solve a well-known problem. People who choose to get vaccinated tend to be healthier and more engaged with the healthcare system. In a standard study comparing vaccinated and unvaccinated populations, this “healthy vaccinee” effect can make vaccines look better than they are. The test-negative design addresses this by restricting the comparison to people who all presented with illness and got tested. Both cases and controls are sick; they differ only in whether their illness is caused by the target pathogen. Healthcare-seeking behavior, the major confounder in observational vaccine research, is controlled at enrollment.

MORE FOR YOU

The design emerged for influenza surveillance in the mid-2000s and was adopted worldwide during the COVID-19 pandemic.

The Statistical Objections

The biostatistics literature has been candid about the design’s limitations for more than a decade.

The most discussed concern is selection bias. Sheena Sullivan and colleagues formalized the problem in a 2016 American Journal of Epidemiology paper using directed acyclic graphs, the standard tool of modern causal inference (and a favorite among economists such as Bhattacharya). Their analysis showed that conditioning on healthcare-seeking, the very feature that is supposed to make the design work, can introduce what is called “collider stratification bias.” The idea is this: both vaccination and infection can independently cause a person to show up at a clinic. When you restrict your study to people who showed up, you are conditioning on a variable that is a shared consequence of both the exposure (vaccination) and the outcome (infection). In statistical terms, clinic attendance is a “collider,” and conditioning on it can create a spurious association between vaccination and test result even if none exists in the broader population. A companion invited commentary by Westreich and Hudgens titled “Beware the Test-Negative Design” sharpened the point: there is no formal guarantee that conditioning on testing eliminates the bias it is supposed to remove.

A second concern is more fundamental. Joseph Lewnard, Christine Tedijanto, Ben Cowling and Marc Lipsitch derived the mathematical relationship between the test-negative odds ratio and true vaccine effectiveness. They showed that the odds ratio recovers the vaccine direct effect only when two conditions hold: vaccination decisions are uncorrelated with exposure or susceptibility to infection, and the vaccine confers “all-or-nothing” protection, either blocking infection entirely or doing nothing. Most real vaccines provide partial, “leaky” protection. When they do, the odds ratio can be biased, and that bias can create misleading patterns in the data, including apparent waning of effectiveness that may not reflect true biological waning.

A third problem is severity attenuation. If a vaccine makes breakthrough infections milder, vaccinated individuals may never feel sick enough to visit a clinic. Their absence from the sample biases the estimate.

These concerns bear directly on how vaccine effectiveness is estimated for the pathogens that matter most. Because of this, Dean and colleagues have published methodological explainers in both The New England Journal of Medicine and JAMA, acknowledging the limitations while describing why the design remains the best available tool for real-time vaccine monitoring.

Validation Against Randomized Trials

Given these objections, how do we know the design actually works? The strongest evidence comes from direct comparison with randomized, placebo-controlled trials.

In 2013, Gaston De Serres and colleagues reanalyzed data from four RCTs of live attenuated influenza vaccine, re-estimating vaccine effectiveness using the test-negative design applied to the same trial data. Their estimates were “virtually identical” to the per-protocol analyses. The core assumption, that the vaccine does not affect the risk of non-target respiratory illnesses, held in every dataset.

Leah Andrews and colleagues recently extended this to COVID-19 by constructing test-negative datasets from five phase 3 vaccine trials across 16 countries. The concordance correlation was 0.86. They also tested a key assumption: that the controls, people who tested negative, look statistically the same whether they received the vaccine or the placebo. If the vaccine were somehow changing who shows up as a control, the design would be compromised. It was not. The median vaccine effectiveness against non-COVID illness was just 7.7%, with most confidence intervals crossing zero, meaning the vaccine had no meaningful effect on non-target diseases, exactly as the design requires.

None of this means the theoretical biases are absent. It means that in practice, at least for influenza and the COVID-19 vaccines tested so far, those biases are small enough that the design recovers estimates close to those of randomized trials.

What Is Actually at Stake

The test-negative design was built to solve a specific problem: monitoring vaccine effectiveness in real time, across seasons of antigenic drift and viral evolution, using existing healthcare infrastructure. The validation studies suggest it works for both influenza and COVID-19, though the assumptions require ongoing scrutiny as pathogens and populations change.

The researchers who have been most critical of the test-negative design – scientists like Westreich, Lewnard, Sullivan, Cowling, and Lipsitch – are also the ones doing the hardest work to improve it. Their critiques appear in the same journals as their proposed solutions. The test-negative design has known biases, known assumptions and a track record of producing estimates that hold up against randomized trials. That is a strong foundation for monitoring whether vaccines work. The question going forward is whether the people making decisions about public health are willing to build on it.